WO2005041633A2 - Systems and methods for providing optimal light-co2 combinations for plant production - Google Patents

Systems and methods for providing optimal light-co2 combinations for plant production Download PDF

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Publication number
WO2005041633A2
WO2005041633A2 PCT/US2004/036093 US2004036093W WO2005041633A2 WO 2005041633 A2 WO2005041633 A2 WO 2005041633A2 US 2004036093 W US2004036093 W US 2004036093W WO 2005041633 A2 WO2005041633 A2 WO 2005041633A2
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Prior art keywords
resource
cost
ofthe
time period
expend
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PCT/US2004/036093
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French (fr)
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WO2005041633A3 (en
Inventor
Louis D. Albright
Konstantinos Ferentinos
Ido Seginer
David S. De Villiers
Jeffrey W. Ho
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Cornell Research Foundation, Inc.
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Priority to CA002543874A priority Critical patent/CA2543874A1/en
Publication of WO2005041633A2 publication Critical patent/WO2005041633A2/en
Publication of WO2005041633A3 publication Critical patent/WO2005041633A3/en

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    • AHUMAN NECESSITIES
    • A01AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
    • A01GHORTICULTURE; CULTIVATION OF VEGETABLES, FLOWERS, RICE, FRUIT, VINES, HOPS OR SEAWEED; FORESTRY; WATERING
    • A01G9/00Cultivation in receptacles, forcing-frames or greenhouses; Edging for beds, lawn or the like
    • A01G9/18Greenhouses for treating plants with carbon dioxide or the like
    • AHUMAN NECESSITIES
    • A01AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
    • A01GHORTICULTURE; CULTIVATION OF VEGETABLES, FLOWERS, RICE, FRUIT, VINES, HOPS OR SEAWEED; FORESTRY; WATERING
    • A01G7/00Botany in general
    • A01G7/02Treatment of plants with carbon dioxide
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B13/00Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion
    • G05B13/02Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric
    • G05B13/04Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators
    • G05B13/042Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators in which a parameter or coefficient is automatically adjusted to optimise the performance
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B15/00Systems controlled by a computer
    • G05B15/02Systems controlled by a computer electric

Definitions

  • Coordinated management ofthe two can substantially increase yields and lower production costs beyond levels achievable with practices based on adding supplemental light only, supplementing CO 2 only, supplementing each independently, or simply accepting what the Sun provides.
  • the present invention provides optimum control of multiple resources involved in plant production.
  • the present invention provides computerized control systems including a processor and resource controllers that control plant growth by adjusting the amounts of plant growth resources provided to a plant.
  • the cost of each resource is taken into account during calculations performed by the processor to achieve a desired plant production rate.
  • the cost of each resource may vary based upon the time period during which the resource is to be added.
  • the presence ofthe resources e.g., lighting or carbon dioxide
  • the resource controllers may then cause the calculated amounts of resource to be physically implemented.
  • the present invention provides methods of controlling resources for growing a plant that are preferably, but not exclusively, implemented in a computerized environment.
  • the method involves receiving a desired plant production rate related to a number of plant growth resources and costs associated with the resources that may vary with a resource cost time period during which the resources are to be expended, and determining based on the resource cost time period respective amounts ofthe resources that should be expended during the time period to achieve the desired plant production rate.
  • the determinations may be made periodically for a plurality of time intervals within each resource cost time period and/or upon a change to a differing resource cost time period.
  • the resources comprise electricity for a lighting system and carbon dioxide (CO 2 ).
  • the resource cost time period may be defined as peak periods and non-peak periods having different costs for a resource.
  • One or more ofthe resources may be applied to supplement a naturally occurring component ofthe resource (e.g., sunlight) that may also be varying, according to a natural resource time period (e.g., daytime and nighttime) or due to some loss of resource, such as CO decay from ventilation or infiltration of a greenhouse.
  • the systems and methods of the present invention take into account in the determination ofthe amounts ofthe resources to be expended in subsequent time intervals the proportional plant growth that has been achieved up to the point ofthe determination. Predictions of environmental conditions over subsequent time intervals that affect the plant production rate may also be calculated, including outdoor air temperatures, solar intensity, and ventilation rates from a greenhouse encompassing the plant. Simulations are presented below of a computer algorithm that considers a range of light and CO 2 control combinations for the next decision period (time interval), estimates the ventilation rate expected, and finds the optimum (lowest cost) combination of resources for achieving the desired plant production rate.
  • FIG. 1 is a block diagram of a hardware and operating environment in which different embodiments ofthe invention can be practiced;
  • FIG. 2 is a diagram providing further details of a host computer environment according to an embodiment ofthe invention;
  • FIGs. 3A - 3D are flowcharts illustrating methods for controlling plant production resources according to an embodiment ofthe invention;
  • FIG. 4 is a diagram illustrating exemplary time periods used in various embodiments of the invention;
  • FIG. 5 is a schematic presentation of an L-X plane according to an embodiment of the invention;
  • FIG. 6 is an illustration of optimal CO 2 concentration as a function of available natural light for several ventilation rates;
  • FIG. 1 is a block diagram of a hardware and operating environment in which different embodiments ofthe invention can be practiced;
  • FIG. 2 is a diagram providing further details of a host computer environment according to an embodiment ofthe invention;
  • FIGs. 3A - 3D are flowcharts illustrating methods for controlling plant production resources according to an embodiment ofthe invention;
  • FIG. 4 is
  • FIG. 7 is an illustration ofthe cost ofthe solutions shown in FIG. 6;
  • FIG. 8 is an graph of daily PAR integral and CO 2 combinations leading to shoot fresh mass of 190 g lettuce, cv. Vivaldi, 35 days after seeding;
  • FIG. 9 is a graph of errors in predicting outdoor hourly air temperatures using a second order polynomial based on the current and two previous hourly air temperature readings in accordance with a method ofthe invention;
  • FIG. 10 is an illustration ofthe elements of a greenhouse thermal model in accordance with the present invention; and
  • FIG. 11 is a graph of outdoor air temperature prediction accuracy according to a method ofthe invention as a function of time of day.
  • processing or “computing” or “calculating” or “determining” or “displaying” or the like, refer to the action and processes of a computer system, or similar computing device, that manipulates and transforms data represented as physical (e.g., electronic) quantities within the computer system's registers and memories into other data similarly represented as physical quantities within the computer system memories or registers or other such information storage, transmission or display devices.
  • the detailed description that follows comprises multiple sections. A first section describes a hardware and software environment according to embodiments ofthe invention. A second section describes a method according to an embodiment ofthe invention.
  • a third section provides a description of various parameters and formulas used in embodiments ofthe invention in which light and carbon dioxide resources are managed in a manner to minimize overall operating cost, and a general analysis ofthe models presented follows in a fourth section along with a discussion ofthe equivalence of instantaneous photosynthesis and the photosynthesis curves as found in the Both, et al. (2000) reference mentioned above. Exemplary simulated results are provided in a fifth section for practicing methods according to the invention, and conclusions are presented in the final section.
  • FIG. 1 is a block diagram of a hardware and operating environment in which different embodiments ofthe invention can be practiced.
  • environment 100 resides in a greenhouse and includes a computer 102, a database 120, resource controllers 110 and 112 operable to control resources 106 and 108 respectively.
  • Resources 108 are directed to the production of plants 104.
  • Computer 102 may be any general purpose computer, including personal computers, programmable logic controllers, server computers, mainframe computers, laptop computers, personal digital assistants or combinations ofthe above distributed in a network environment. Further details regarding computer 102 are provided below with reference to FIG. 2.
  • Database 120 provides storage for programs and data used by computer 102.
  • Database 120 may be a disk resident database, or database 120 may be a memory resident database. The invention is not limited to a particular database type. In some embodiments, database 120 maintains information regarding first resource 106 and second resource 108. This information may include cost data and time period data that may be associated with the cost data.
  • First resource 106 and second resource 108 are resources directed to the production of plants 104. In some embodiments ofthe invention, first resource 106 comprises electricity that controls supplemental lighting used to produce plants 104. In some embodiments, second resource 108 comprises supplemental carbon dioxide (CO 2 ) that may be administered to produce plants 104. However, the invention is not limited to a particular resource and alternative resources may be used in addition to or instead of supplemental light and CO 2 .
  • First resource controller 110 is communicably coupled to computer 102 and is used to control the administration of first resource 106.
  • first resource controller 110 is operable to control whether supplemental lighting is turned on or off.
  • the supplemental lighting is either all on or all off.
  • various combinations of lights may be turned on and off to achieve a desired lighting amount.
  • dimming ballasts may be used in conjunction with the supplemental lighting to achieve a desired lighting amount.
  • Second resource controller 108 controls the output ofthe second resource 108.
  • second resource controller 112 controls the output of CO 2 into the plant's environment.
  • Some embodiments ofthe invention include a monitor 114 that monitors the ventilation rate in environment 100.
  • FIG. 2 is a diagram providing further details of a host computer 102 in conjunction with which embodiments ofthe invention may be practiced.
  • the description of FIG. 2 is intended to provide a brief, general description of suitable computer hardware and a suitable computing environment in conjunction with which the invention may be implemented.
  • the invention is described in the general context of computer-executable instructions, such as program modules, being executed by a computer, such as a personal computer or a server computer.
  • program modules include routines, programs, objects, components, data structures, etc., that perform particular tasks or implement particular abstract data types.
  • the invention may be practiced with other computer system configurations, including hand-held devices, multiprocessor systems, microprocessor-based or programmable consumer electronics, network PCs, minicomputers, mainframe computers, and the like.
  • the invention may also be practiced in distributed computing environments where tasks are performed by remote processing devices that are linked through a communications network.
  • program modules may be located in both local and remote memory storage devices.
  • the computing system 200 includes a processor.
  • the invention can be implemented on computers based upon microprocessors such as the PENTIUM® family of microprocessors manufactured by the Intel Corporation, the MIPS® family of microprocessors from the Silicon Graphics Corporation, the
  • Computing system 200 represents any personal computer, laptop, server, or even a battery-powered, pocket-sized, mobile computer known as a hand-held PC.
  • the computing system 200 includes system memory 213 (including read-only memory (ROM) 214 and random access memory (RAM) 215), which is connected to the processor 212 by a system data/address bus 216.
  • system memory 213 including read-only memory (ROM) 214 and random access memory (RAM) 215), which is connected to the processor 212 by a system data/address bus 216.
  • ROM 214 represents any device that is primarily read-only including electrically erasable programmable read-only memory (EEPROM), flash memory, etc.
  • RAM 215 represents any random access memory such as Synchronous Dynamic Random Access Memory.
  • input/output bus 218 is connected to the data/address bus 216 via bus controller 219.
  • input/output bus 218 is implemented as a standard Peripheral Component Interconnect (PCI) bus.
  • PCI Peripheral Component Interconnect
  • the bus controller 219 examines all signals from the processor 212 to route the signals to the appropriate bus. Signals between the processor 212 and the system memory 213 are merely passed through the bus controller 219.
  • signals from the processor 212 intended for devices other than system memory 213 are routed onto the input/output bus 218.
  • Various devices are connected to the input/output bus 218 including hard disk drive 220, floppy drive 221 that is used to read floppy disk 251, and optical drive 222, such as a CD-ROM drive that is used to read an optical disk 252.
  • the video display 224 or other kind of display device is connected to the input/output bus 218 via a video adapter 225.
  • a user enters commands and information into the computing system 200 by using a keyboard 40 and/or pointing device, such as a mouse 42, which are connected to bus 218 via input/output ports 228. Other types of pointing devices (not shown in FIG.
  • the computing system 200 also includes a modem 229. Although illustrated in FIG. 2 as external to the computing system 200, those of ordinary skill in the art will quickly recognize that the modem 229 may also be internal to the computing system 200.
  • the modem 229 is typically used to communicate over wide area networks (not shown), such as the global Internet.
  • the computing system may also contain a network interface card 53, as is known in the art, for communication over a network.
  • Software applications 236 and data are typically stored via one ofthe memory storage devices, which may include the hard disk 220, floppy disk 251, CD-ROM 252 and are copied to RAM 215 for execution.
  • software applications 236 are stored in ROM 214 and are copied to RAM 215 for execution or are executed directly from ROM 214.
  • the operating system 235 executes software applications 236 and carries out instructions issued by the user. For example, when the user wants to load a software application 236, the operating system 235 interprets the instruction and causes the processor 212 to load software application 236 into RAM 215 from either the hard disk 220 or the optical disk 252. Once software application 236 is loaded into the RAM 215, it can be used by the processor 212. In case of large software applications 236, processor 212 loads various portions of program modules into RAM 215 as needed.
  • BIOS 217 The Basic Input/Output System (BIOS) 217 for the computing system 200 is stored in ROM 214 and is loaded into RAM 215 upon booting. Those skilled in the art will recognize that the BIOS 217 is a set of basic executable routines that have conventionally helped to transfer information between the computing resources within the computing system 200. These low-level service routines are used by operating system 235 or other software applications 236.
  • computing system 200 includes a registry (not shown) that is a system database that holds configuration information for computing system 200.
  • Windows® 95 , Windows 98®, Windows® NT, Windows 2000® and Windows XP® by Microsoft maintain the registry in two hidden files, called USER.DAT and SYSTEM.DAT, located on a permanent storage device such as an internal disk.
  • USER.DAT and SYSTEM.DAT located on a permanent storage device such as an internal disk.
  • FIGs. 3A - 3D are flowcharts illustrating methods for controlling plant production resources according to an embodiment ofthe invention.
  • the methods to be performed by the operating environment constitute computer programs made up of computer-executable instructions.
  • the methods illustrated in FIGs.3A - 3D are inclusive of acts that may be taken by an operating environment such as described above.
  • FIG. 3A illustrates a method for controlling plant production wherein at least two resources are controlled.
  • the method begins by receiving a desired plant production rate (block 305).
  • the desired plant production rate may vary depending on the plant being grown.
  • the desired plant production rate is related lettuce production.
  • a first resource comprises lighting and a second resource comprises CO .
  • the first and second resource may include two components, a naturally occurring component and a supplemented component.
  • naturally occurring lighting from the sun may be supplemented with artificial lighting, and ambient levels of CO 2 may be supplemented with purchased CO .
  • the system receives a first cost associated with supplementing the first resource (block 310).
  • supplementing a resource will have a cost associated with it.
  • the cost of supplementing at least the first resource varies depending on a time period.
  • the time period comprises a peak time period and a non-peak time period.
  • the system receives a cost associated with supplementing the second resource (block 315).
  • the second resource also typically has a cost associated with it. This cost may or may not vary depending on the time period. Note that while two resources have been described, the present invention is not limited to any particular number of resources, and in alternative embodiments, three or more resources may have costs associated with them that are analyzed by various embodiments ofthe invention.
  • the system determines the amount ofthe first resource and the second resource that will be expended during the time period.
  • the system will favor using supplemental CO 2 over supplemental lighting.
  • the cost of applying CO 2 is more expensive, the system will favor using supplemental lighting instead of supplemental CO 2 .
  • the concept can be applied to other resources used in plant production. Note that the effectiveness of expending a resource may be limited by external factors such as the naturally occurring amount of the resource.
  • the system generally predicts a sufficient light integral for the daylight hours using the equations defined below such that it would be unlikely to turn the supplemental lights on.
  • supplemental lighting is needed on particular days to reach the desired light integral, the lighting is typically done during the night to the extent possible, using the off- peak electric rates.
  • the system receives an indication that the time has moved into a different time period (block 325). The system returns to block 310 in order to redetermine which resource is more cost-effective to achieve the desired production rate.
  • FIGs. 3B - 3D illustrates a method executed by an operating environment according to embodiments ofthe invention, and provides further details on the method illustrated above in FIG.3 A where the first resource is light and the second resource is CO 2 .
  • a day or other time period is divided into intervals, and the tasks illustrated in FIGs.3B - 3D may be performed once during each interval.
  • the chosen interval is one hour.
  • the method begins by predicting lighting operation for the interval assuming ambient levels of CO 2 (block 332).
  • the prediction includes the control ofthe state of supplemental light and/or movable shades that determine the light within a greenhouse.
  • the system estimates the maximum air temperature over the interval (block 334).
  • the current temperature is obtained, for example from sensors communicably coupled to the system. Alternatively, the current temperature may be obtained from other sources, such as sites on the Internet that provide local weather data.
  • the system estimates the maximum air temperature for the interval by taking the current interval reading, and the previous two interval readings, and fits a second order equation to them (examples include but are not limited to linear, polynomial, trigonometric, and spline functions) and extrapolates to the next time interval. In alternative embodiments, a linearized version ofthe second order equations may be used to estimate the maximum temperature over the interval.
  • the present invention is not limited to any particular method for estimating the maximum temperature over the interval. Additionally, the system estimates the maximum solar insolation that will occur over the next interval (block 336). In some embodiments, this prediction may utilize the equations defined below along with solar insolation data accumulated since sunrise. The system also estimates the solar integral at sunset (block 338). Using the estimates determined above, the system then checks to see whether the predicted photosynthetic active radiation (PAR) due to sunlight will be greater than the daily target required to meet desired plant production (block 340). If so, then no lighting supplementation is require (block 342). Shading control may be required to prevent oversaturation.
  • PAR photosynthetic active radiation
  • the system then proceeds to determine how to apply supplemental lighting and/or supplemental CO 2 .
  • the system uses the predicted lighting operation from block 332 and estimates the maximum ventilation for the next interval (block 344).
  • the predicted PAR and predicted maximum outdoor air temperature are used in an energy balance to predict the maximum ventilation rate during the next interval (to maintain the indoor temperature at the desired level). A further discussion of this technique is described below in Section 5. It is noted that in winter in cold climates, the desired rate will be zero and heating is needed. But there is typically always infiltration at some level. A check is then made to determine ifthe estimated ventilation rate exceeds a ventilation maximum (block 346).
  • the system proceeds to use lighting control to provide supplemental lighting (block 348).
  • the system calculates the proportion of desired growth already achieved for the day (block 350).
  • Each interval ofthe day since sunrise has its value of light integral for the past interval, and the average CO 2 concentration that existed for that interval.
  • the equation that relates light integral and CO 2 level to achieve the same growth is provided below. The CO 2 level that existed can be used with that equation to determine the accompanying light integral target.
  • the actual light integral for the interval, divided by the accompanying light integral target, will be a fraction less than unity and represents the proportional growth that interval contributed to the day. These proportional growth values for each interval since sunrise up to the current interval may be added to get the proportional growth accumulated for the day so far.
  • the target for the end the day is 1.0, representing 100%.
  • the system is then set to assume ambient levels of CO 2 (block 352).
  • the system calculates the cost of providing supplemental CO 2 at the estimated ventilation rate (block 356).
  • the system calculates the proportional growth that would be achieved ifthe rest ofthe day is at ambient CO 2 , and the accompanying light integral that would be needed at ambient CO 2 using the current state of lighting control expected for the interval (block 360).
  • the system determines the proportional growth remaining for the rest of the day (block 362). From the proportional growth remaining, the system determines the PAR value needed for the rest ofthe day to achieve the remaining proportional growth (block 364). The system then determines whether supplemental light will be needed for any part ofthe rest ofthe day in order to achieve the desired PAR value (block 366). From this value, the system determines when the supplemental light would have to start to reach the integral target (block 368). A check is made to determine ifthe supplemental lighting must be applied before off-peak rates start (block 370). If not, the system assumes off-peak rates for supplemental lighting costs estimated in the next blocks (block 372). Otherwise, the system assumes on-peak rates for supplemental lighting (block 374).
  • the system uses the on-peak or off-peak rates to determine the cost of lighting for the next interval and also determines the cost of supplemental CO 2 for the next interval (block 380).
  • the CO concentration is also incremented to account for any supplemental CO 2 that may be added during the interval (block 382).
  • a check is made to determine ifthe CO 2 to be added would exceed a maximum level of CO 2 that can be utilized by the plants (block 384). If not, the system proceeds back to block 356 to recalculate values based on the incremented CO 2 level. Otherwise, the system next determines ifthe lighting state changed (block 386). If the lighting state changes, the system then checks to see ifthe lighting state was changed in a previous iteration in this interval (block 392).
  • the system proceeds to block 344 to go through the loop again because the system started with the assumption the CO 2 was at the ambient level, and it will now not be at the ambient level due to the predicted supplementation of CO . If the state did change in a previous iteration and the state changes again, the loop is indefinite. In some embodiments, supplemental lighting is forced on and no CO 2 is added (block 394). However, if the lighting state does not change, the system proceeds to make a determination ofthe most cost effective light integral/CO 2 concentration combination based on the lighting cost (if any) plus the CO 2 cost based on the predicted ventilation rate (block 388). The system chooses the combination with the lowest total cost of supplemental lighting and/or supplemental CO 2 .
  • Lighting and CO 2 resources are then controlled in accordance with the chosen combination (block 390.)
  • the system then waits until the beginning ofthe next interval (block 396), when the method illustrated in FIGs. 3B-3D may be repeated.
  • the method illustrated above is modified to account for CO 2 decay. For example, if the previous interval led to control with CO 2 above ambient levels, and the next interval suggests only ambient, the system takes into consideration the decay of CO 2 concentration, particularly if ventilation is not high. This is desirable because the decay of CO can affect the calculation of potential growth.
  • a simple mixing model can be used to predict the CO 2 decay for the next hour, and beyond if ventilation is low enough.
  • the rate of adding CO 2 can be used to estimate the "current" ventilation rate, which can then be compared to the predicted to know whether it (the predicted) has been greatly exceeded.
  • the system detects if conditions are far from the predicted conditions (e.g., due to a sudden weather change), and forces the system to a default state. In some embodiments, the default state assumes ambient CO 2 .
  • FIG. 4 illustrates a set of exemplary time periods. In the example, there are four time periods P 1 -P , two defined by peak and non-peak electrical costs and two defined by daytime versus nighttime hours. In general, the daily cycle (with origin at sunset) may be divided into four periods as follows:
  • FIG. 5 is a schematic presentation ofthe L-X plane.
  • the square point is the candidate solution.
  • the horizontal dashed line is the natural level of CO 2 concentration. The curve connects all the points that produce the desired rate of growth.
  • the length ofthe supplementary light period may be uniquely determined by the proposed solution and it is proportional to L s
  • the cost ofthe added light depends, however, on its timing. In general, the daily cycle (with origin at sunset) may be divided into four periods as discussed above with reference to FIG.4. The cost of supplementary light for the day depends on how it is divided between the on-peak and o ⁇ -peak periods
  • the cost of supplementary CO 2 for the day depends on the union tx — t s Dt n .
  • Equation [19] is a quadratic equation in L t , with L n and Q as parameters for a given day- length t n .
  • the solutions, if they exist, are calculated as In the normal range of values, the solution with the + sign is a minimum, while the other solution is a maximum. When the discriminant is negative, there is no minimum, just an inflexion point, and the optimum is obtained on the border ofthe feasible region.
  • the second derivative of [36] may be used to distinguish between maximum, minimum and inflexion.
  • Equation [37] Equation [37]
  • Equation [40] is, again, a quadratic equation in L t , with L n and Q as parameters for a given day-length t n .
  • the solutions, if they exist, are calculated as t 2A
  • FIGs. 6 and 7 show results ofthe optimal CO 2 concentration and the associated cost function for the parameter values of Table 1 and for the lighting sequence P 2 , P 4 , Pi. A complete solution should also consider the sequence P 4 , P 2 , Pi.
  • FIG. 6 shows the optimal CO 2 concentration as a function of available natural light integral (divided equally over 12 hours). Table 1 Functional relationships
  • FIG. 6 illustrates optimal CO 2 concentration as a function of available natural light, for several ventilation rates, Q.
  • the curve on the right (No. 1; Ferentinos approx) connects all combinations of light flux and CO 2 concentration which produce the desired daily target.
  • the region between the parallel curves 1 and 2 provides supplementary light during the off-peak (P 2 ) period.
  • the region between curves 2 and 3 is for additional light provided during period P4 (day-time and on-peak electricity price).
  • the region between curves 3 and 4 is for additional light during period Pi (night-time and on-peak electricity price).
  • X t e.g. 360 ppm and 1600 ppm
  • No embodiment ofthe invention is limited to a particular lower or upper boundary for X t .
  • the solution behaves as follows: As the natural light integral diminishes, the solution point first climbs along the Ferentinos approximation by increasing the CO 2 concentration, while refraining from adding supplementary light. As the maximum permissible CO 2 concentration (1600 ppm) is reached, any further loss of natural light must be replaced by supplementary light during the off-peak (low electricity price) period.
  • FIG. 7 shows the cost ofthe solutions of FIG. 6 and, in addition, the cost of adding light only (e.g., when high ventilation rates are required).
  • the change in slope is due to switching from off-peak (9 hours) to on-peak (rest of day) electricity price.
  • Light alone typically cannot efficiently produce the target at very low natural light integral levels, but it is always possible to reach the target by combining light and CO 2 enrichment. Wherever the light-only solution exists, it is the upper bound on the other solutions.
  • the absolute saving from CO 2 enrichment is constant for P 4 , but diminishes towards higher levels of natural light. As illustrated in FIG. 7, gaps between segments are where the solutions climb along the curves of FIG. 6. A few ofthe solutions are not represented in this figure.
  • G 1 ⁇ R m [47] + x ⁇ and normalizing with respect to the desired daily growth, G*.
  • the predicted PAR and outdoor air temperature during the near future may be used in a greenhouse energy balance to solve for the expected ventilation rate.
  • Predicting outdoor air temperature one hour ahead ofthe current hour (the selected time interval) was by extrapolation. If one measures the current and two previous hourly air temperatures, a second order polynomial can be fitted exactly to the three data points and used to extrapolate one time step ahead. A polynomial was used, assuming the temperature trend would continue (the trend and its curvature). This is not always true because sudden temperature changes can occur.
  • FIG. 9 are shown prediction errors for one year of hourly air temperature data for Ithaca, New York, U.S.A.
  • the model was used to predict the ventilation required for the next hour (with a minimum infiltration rate as a threshold below which ventilation could not go).
  • the model and sub-models described above were tested by computer simulation (using hourly weather data for one year) and is estimated to save approximately one-half the lighting energy and nearly forty percent ofthe operating cost of supplementing the two resources, with no loss of plant production potential when lettuce is the crop of interest.
  • a generic greenhouse was assumed for simulation purposes; representative parameters are listed in Table 3.
  • the model was programmed as an application in Java and one year (1988) of hourly weather data from Ithaca, NY, USA, was used for calculations.
  • Table 3 Summary of base case simulation parameters Parameter Assumed Value Units Air infiltration 0.5 Air changes per hour Transmissivity to sunlight 0.7 Dimensionless Greenhouse latitude 42 North Degrees Electric rate schedule peak hours 7 am to 10 pm Hours On-peak electric rate 0.088 US$/kWh Off-peak electric rate 0.056 US$/kWh CO 2 cost 0.25 US$/kg Greenhouse floor area 743 m 2 Average greenhouse height 3.7 m Number of luminaires 146 Luminaire wattage, HPS 680 (includes ballast) Watts Supplemental PAR level 180 ⁇ mol m "2 si Daily PAR integral target 17 mol/m 2 Greenhouse temp., 6 am to 6 pm 24 C Greenhouse temp., 6 pm to 6 am 18 C Greenhouse heat loss factor 8.5 Wm "2 K " l (of floor area) Conversion, suppl. light energy 0.6 Dimensionless to sensible energy Conversion, sunlight outdoors 0.34 Dimensionless to sensible energy indoors Ambient CO 2 concentration 400 ppm, or ⁇ mol/mol/mol
  • Table 5 contains comparable data but with supplemental CO 2 enabled. Additional simulations to show the influence of greenhouse light transmissivity and greenhouse air-tightness (averaged air infiltration) were completed and results are in Table 6.
  • the simulation program accumulated daily sums of virtual PAR values and controlled the lights and CO 2 to reach the standard target integral using the virtual values (e.g., 17 mol/m 2 for the base case). This approach was simpler than readjusting the daily PAR integral target every hour.
  • the majority of hourly CO 2 control decisions were to provide full CO 2 (1600 ppm in the simulation) or ambient. However, there were numerous hours between the two extremes. For example, the base case showed 237 out of 1451 hours of supplemental lighting were with an optimum CO 2 concentration calculated between the extremes, caused by the calculated required ventilation being somewhat above the air infiltration rate but not large. Including CO 2 concentration decay when supplementation stopped was important in calculating the virtual PAR integrals ofthe following hours, particularly during daylight hours when natural light always continued.
  • the program was written to keep greenhouse air temperature at the desired set point by using ventilation.
  • the prediction errors where actual outdoor air temperature was one or two degrees above the predicted value would lead to increased ventilation and CO 2 venting.
  • Most greenhouse air temperature control includes a dead band between heating and cooling, with temperature steps of one or two degrees between ventilation/cooling stages. Permitting such temperature drifting would improve the efficacy ofthe control algorithm.
  • a simple enrichment strategy usable in some embodiments ofthe invention may be as follows: Ifthe ventilation rate is higher than 0.005 m 3 /(m 2 s), do not enrich. If it is lower, enrich to the maximum permissible concentration (1600 ppm in some embodiments, however no embodiment is limited to any particular maximum permissible concentration).

Abstract

Method and system for optimizing plant production in a cost effective manner. System (100) includes a processor (102) in communication with resource controllers (110, 112) for controlling resources (106, 108) such as, for example, lighting and carbon dioxide. Each resource has a cost that varies temporally or with other factors. The processor implements an algorithm that receives a desired plant production rate and other input, such as operating conditions of the system and environment, and determines amounts of each resource to expend consistent with plant production goals and resource costs.

Description

SYSTEMS AND METHODS FOR PROVIDING OPTIMAL LIGHT-CO2 COMBINATIONS FOR PLANT PRODUCTION
Field of the Invention The present invention relates generally to plant production systems and more particularly to controlling resources related to plant production
Background of the Invention In order for plants to grow, they need various resources. For example, plants require light as part of their photosynthesis process. Plant production may be enhanced by addition of supplemental lighting, but this comes at a cost. Similarly, plant production may be enhanced by the addition of supplemental CO2, but this too comes at a cost. Research has demonstrated that light and CO2 resources can be combined in combinations that optimize plant growth. Examples of such published research are: Both AJ, Albright LD, Langhans RW. 1997. Coordinated management of daily PAR integral and carbon dioxide for hydroponic lettuce production. Ada Horticulturae 456:45-51; and Ferentinos KP, Albright LD, Ramani DN. 2000. Optimal light integral and carbon dioxide concentration combinations for lettuce in ventilated greenhouses. JAgric Engng Res, 77(3):309-315. The contents of each reference are incorporated herein by reference in their entirety as a basis for understanding the present invention. Practical application to actual cost efficient greenhouse operation, however, has been lacking, and many greenhouse environmental controllers do not take into account how the plants respond to the environmental conditions over time. The endless quest of greenhouse operators is to produce the best crops possible at the lowest practical costs. This is an optimization problem in which benefits of a mix of inputs must be balanced against their combined costs. Extant approaches to greenhouse operation have not provided temporally sensitive control strategies to provide optimal combinations of resources in view of varying cost structures associated with at least one of the plant growth resources. As a result, there is a need in the art for control methods and systems that perform such optimizations. It is known that increasing aerial CO2 concentration (within limits) improves photosynthetic efficiencies of C3 plants. Greenhouse plant production in regions ofthe world with cloudy climates can benefit from supplemental lighting, particularly during the winter season. Supplemental lighting is typically expensive to operate, whereas CO2 resources are generally inexpensive. However, air infiltration and ventilation are CO loss paths potentially making supplemental CO2 more costly than electricity for supplemental lighting in order to achieve comparable growth. Moreover, it is not clear whether the CO2 concentration must remain fixed through time for optimum control and minimum cost. Whether it is cost effective to add CO2, or operate supplemental lighting, and deciding the optimum combination of CO2 concentration and the light integral for the next decision period are important questions that must be answered to implement optimized computer control. Numerous models have been proposed (e.g., Ferentinos, et al., 2000) that explore optimized combinations ofthe daily light integral and CO , but generally are not configured for real-time control purposes. Careful control ofthe daily growth rate becomes possible when light and CO2 are controlled within tight limits (see Albright, et al. 2000. Controlling greenhouse light to a consistent daily integral. Trans, ofthe ASAE 43(2):421-431; and see also Both, et α .2000. Coordinated management of daily PAR integral and carbon dioxide for hydroponic lettuce production. Acta Horticulturae No. 456:45-52; the contents of each reference are incorporated herein by reference.) Coordinated management ofthe two can substantially increase yields and lower production costs beyond levels achievable with practices based on adding supplemental light only, supplementing CO2 only, supplementing each independently, or simply accepting what the Sun provides. Thus, a need exists to make cost optimized plant production realizable, particularly through approaches that involve calculating at regular intervals recommended combinations of plant growth resources, such as CO2 concentrations and supplemental lighting, and that translate cost and growth optimized resource combinations into greenhouse resources controller actions.
Summary ofthe Invention The present invention provides optimum control of multiple resources involved in plant production. In a first aspect, the present invention provides computerized control systems including a processor and resource controllers that control plant growth by adjusting the amounts of plant growth resources provided to a plant. The cost of each resource is taken into account during calculations performed by the processor to achieve a desired plant production rate. The cost of each resource may vary based upon the time period during which the resource is to be added. The presence ofthe resources (e.g., lighting or carbon dioxide) may be monitored and provided to the processor for the purpose of periodically performing determinations ofthe appropriate amounts ofthe resources to be expended to achieve the desired plant production rate in an optimally cost-effective manner. The resource controllers may then cause the calculated amounts of resource to be physically implemented. In another aspect, the present invention provides methods of controlling resources for growing a plant that are preferably, but not exclusively, implemented in a computerized environment. The method involves receiving a desired plant production rate related to a number of plant growth resources and costs associated with the resources that may vary with a resource cost time period during which the resources are to be expended, and determining based on the resource cost time period respective amounts ofthe resources that should be expended during the time period to achieve the desired plant production rate. The determinations may be made periodically for a plurality of time intervals within each resource cost time period and/or upon a change to a differing resource cost time period. In particular embodiments, the resources comprise electricity for a lighting system and carbon dioxide (CO2). The resource cost time period may be defined as peak periods and non-peak periods having different costs for a resource. One or more ofthe resources may be applied to supplement a naturally occurring component ofthe resource (e.g., sunlight) that may also be varying, according to a natural resource time period (e.g., daytime and nighttime) or due to some loss of resource, such as CO decay from ventilation or infiltration of a greenhouse. The systems and methods of the present invention take into account in the determination ofthe amounts ofthe resources to be expended in subsequent time intervals the proportional plant growth that has been achieved up to the point ofthe determination. Predictions of environmental conditions over subsequent time intervals that affect the plant production rate may also be calculated, including outdoor air temperatures, solar intensity, and ventilation rates from a greenhouse encompassing the plant. Simulations are presented below of a computer algorithm that considers a range of light and CO2 control combinations for the next decision period (time interval), estimates the ventilation rate expected, and finds the optimum (lowest cost) combination of resources for achieving the desired plant production rate.
Brief Description ofthe Figures For a better understanding ofthe present invention, together with other and further objects thereof, reference is made to the accompanying drawing and detailed description, wherein: FIG. 1 is a block diagram of a hardware and operating environment in which different embodiments ofthe invention can be practiced; FIG. 2 is a diagram providing further details of a host computer environment according to an embodiment ofthe invention; FIGs. 3A - 3D are flowcharts illustrating methods for controlling plant production resources according to an embodiment ofthe invention; FIG. 4 is a diagram illustrating exemplary time periods used in various embodiments of the invention; FIG. 5 is a schematic presentation of an L-X plane according to an embodiment of the invention; FIG. 6 is an illustration of optimal CO2 concentration as a function of available natural light for several ventilation rates; FIG. 7 is an illustration ofthe cost ofthe solutions shown in FIG. 6; FIG. 8 is an graph of daily PAR integral and CO2 combinations leading to shoot fresh mass of 190 g lettuce, cv. Vivaldi, 35 days after seeding; FIG. 9 is a graph of errors in predicting outdoor hourly air temperatures using a second order polynomial based on the current and two previous hourly air temperature readings in accordance with a method ofthe invention; FIG. 10 is an illustration ofthe elements of a greenhouse thermal model in accordance with the present invention; and FIG. 11 is a graph of outdoor air temperature prediction accuracy according to a method ofthe invention as a function of time of day.
Detailed Description of the Invention In the following description, reference is made to the accompanying figures in which appear reference numbers corresponding to identical components as described below. The invention is shown by way of illustration specific exemplary embodiments. These embodiments are described in sufficient detail to enable those skilled in the art to practice the invention, and it is to be understood that other embodiments may be utilized and that logical, mechanical, electrical and other changes may be made without departing from the scope ofthe present invention. Some portions ofthe detailed descriptions that follow are presented in terms of algorithms and symbolic representations of operations on data bits within a computer memory. These algorithmic descriptions and representations are the ways used by those skilled in the data processing arts to most effectively convey the substance of their work to others skilled in the art. An algorithm is here, and generally, conceived to be a self- consistent, finite, sequence of steps leading to a desired result. The steps are those requiring physical manipulations of physical quantities. Usually, though not necessarily, these quantities take the form of electrical or magnetic signals capable of being stored, transferred, combined, compared, and otherwise manipulated. It has proven convenient at times, principally for reasons of common usage, to refer to these signals as bits, values, elements, symbols, characters, terms, numbers, or the like. It should be borne in mind, however, that all of these and similar terms are to be associated with the appropriate physical quantities and are merely convenient labels applied to these quantities. Unless specifically stated otherwise as apparent from the following discussions, terms such as "processing" or "computing" or "calculating" or "determining" or "displaying" or the like, refer to the action and processes of a computer system, or similar computing device, that manipulates and transforms data represented as physical (e.g., electronic) quantities within the computer system's registers and memories into other data similarly represented as physical quantities within the computer system memories or registers or other such information storage, transmission or display devices. The detailed description that follows comprises multiple sections. A first section describes a hardware and software environment according to embodiments ofthe invention. A second section describes a method according to an embodiment ofthe invention. A third section provides a description of various parameters and formulas used in embodiments ofthe invention in which light and carbon dioxide resources are managed in a manner to minimize overall operating cost, and a general analysis ofthe models presented follows in a fourth section along with a discussion ofthe equivalence of instantaneous photosynthesis and the photosynthesis curves as found in the Both, et al. (2000) reference mentioned above. Exemplary simulated results are provided in a fifth section for practicing methods according to the invention, and conclusions are presented in the final section.
1. OPERATING ENVIRONMENT FIG. 1 is a block diagram of a hardware and operating environment in which different embodiments ofthe invention can be practiced. In some embodiments, environment 100 resides in a greenhouse and includes a computer 102, a database 120, resource controllers 110 and 112 operable to control resources 106 and 108 respectively. Resources 108 are directed to the production of plants 104. Computer 102 may be any general purpose computer, including personal computers, programmable logic controllers, server computers, mainframe computers, laptop computers, personal digital assistants or combinations ofthe above distributed in a network environment. Further details regarding computer 102 are provided below with reference to FIG. 2. Database 120 provides storage for programs and data used by computer 102.
Database 120 may be a disk resident database, or database 120 may be a memory resident database. The invention is not limited to a particular database type. In some embodiments, database 120 maintains information regarding first resource 106 and second resource 108. This information may include cost data and time period data that may be associated with the cost data. First resource 106 and second resource 108 are resources directed to the production of plants 104. In some embodiments ofthe invention, first resource 106 comprises electricity that controls supplemental lighting used to produce plants 104. In some embodiments, second resource 108 comprises supplemental carbon dioxide (CO2) that may be administered to produce plants 104. However, the invention is not limited to a particular resource and alternative resources may be used in addition to or instead of supplemental light and CO2. First resource controller 110 is communicably coupled to computer 102 and is used to control the administration of first resource 106. In some embodiments, first resource controller 110 is operable to control whether supplemental lighting is turned on or off. In some embodiments, the supplemental lighting is either all on or all off. In alternative embodiments ofthe invention, various combinations of lights may be turned on and off to achieve a desired lighting amount. In further alternative embodiments, dimming ballasts may be used in conjunction with the supplemental lighting to achieve a desired lighting amount. Second resource controller 108 controls the output ofthe second resource 108. In embodiments where second resource 108 is CO2, second resource controller 112 controls the output of CO2 into the plant's environment. Some embodiments ofthe invention include a monitor 114 that monitors the ventilation rate in environment 100. In some embodiments, CO2 is used as a tracer gas to monitor the ventilation rate in enviromnent 100. The use of CO as a tracer gas is known in the art. FIG. 2 is a diagram providing further details of a host computer 102 in conjunction with which embodiments ofthe invention may be practiced. The description of FIG. 2 is intended to provide a brief, general description of suitable computer hardware and a suitable computing environment in conjunction with which the invention may be implemented. Although not required, the invention is described in the general context of computer-executable instructions, such as program modules, being executed by a computer, such as a personal computer or a server computer. Generally, program modules include routines, programs, objects, components, data structures, etc., that perform particular tasks or implement particular abstract data types. Moreover, those skilled in the art will appreciate that the invention may be practiced with other computer system configurations, including hand-held devices, multiprocessor systems, microprocessor-based or programmable consumer electronics, network PCs, minicomputers, mainframe computers, and the like. The invention may also be practiced in distributed computing environments where tasks are performed by remote processing devices that are linked through a communications network. In a distributed computing environment, program modules may be located in both local and remote memory storage devices. As shown in FIG. 2, the computing system 200 includes a processor. The invention can be implemented on computers based upon microprocessors such as the PENTIUM® family of microprocessors manufactured by the Intel Corporation, the MIPS® family of microprocessors from the Silicon Graphics Corporation, the
POWERPC® family of microprocessors from both the Motorola Corporation and the IBM Corporation, the PRECISION ARCHITECTURE® family of microprocessors from the Hewlett-Packard Company, the SPARC® family of microprocessors from the Sun Microsystems Corporation, or the ALPHA® family of microprocessors from the Compaq Computer Corporation. Computing system 200 represents any personal computer, laptop, server, or even a battery-powered, pocket-sized, mobile computer known as a hand-held PC. The computing system 200 includes system memory 213 (including read-only memory (ROM) 214 and random access memory (RAM) 215), which is connected to the processor 212 by a system data/address bus 216. ROM 214 represents any device that is primarily read-only including electrically erasable programmable read-only memory (EEPROM), flash memory, etc. RAM 215 represents any random access memory such as Synchronous Dynamic Random Access Memory. Within the computing system 200, input/output bus 218 is connected to the data/address bus 216 via bus controller 219. In one embodiment, input/output bus 218 is implemented as a standard Peripheral Component Interconnect (PCI) bus. The bus controller 219 examines all signals from the processor 212 to route the signals to the appropriate bus. Signals between the processor 212 and the system memory 213 are merely passed through the bus controller 219. However, signals from the processor 212 intended for devices other than system memory 213 are routed onto the input/output bus 218. Various devices are connected to the input/output bus 218 including hard disk drive 220, floppy drive 221 that is used to read floppy disk 251, and optical drive 222, such as a CD-ROM drive that is used to read an optical disk 252. The video display 224 or other kind of display device is connected to the input/output bus 218 via a video adapter 225. A user enters commands and information into the computing system 200 by using a keyboard 40 and/or pointing device, such as a mouse 42, which are connected to bus 218 via input/output ports 228. Other types of pointing devices (not shown in FIG. 2) include track pads, track balls, joy sticks, data gloves, head trackers, and other devices suitable for positioning a cursor on the video display 224. As shown in FIG. 2, the computing system 200 also includes a modem 229. Although illustrated in FIG. 2 as external to the computing system 200, those of ordinary skill in the art will quickly recognize that the modem 229 may also be internal to the computing system 200. The modem 229 is typically used to communicate over wide area networks (not shown), such as the global Internet. The computing system may also contain a network interface card 53, as is known in the art, for communication over a network. Software applications 236 and data are typically stored via one ofthe memory storage devices, which may include the hard disk 220, floppy disk 251, CD-ROM 252 and are copied to RAM 215 for execution. In one embodiment, however, software applications 236 are stored in ROM 214 and are copied to RAM 215 for execution or are executed directly from ROM 214. In general, the operating system 235 executes software applications 236 and carries out instructions issued by the user. For example, when the user wants to load a software application 236, the operating system 235 interprets the instruction and causes the processor 212 to load software application 236 into RAM 215 from either the hard disk 220 or the optical disk 252. Once software application 236 is loaded into the RAM 215, it can be used by the processor 212. In case of large software applications 236, processor 212 loads various portions of program modules into RAM 215 as needed. The Basic Input/Output System (BIOS) 217 for the computing system 200 is stored in ROM 214 and is loaded into RAM 215 upon booting. Those skilled in the art will recognize that the BIOS 217 is a set of basic executable routines that have conventionally helped to transfer information between the computing resources within the computing system 200. These low-level service routines are used by operating system 235 or other software applications 236. In one embodiment computing system 200 includes a registry (not shown) that is a system database that holds configuration information for computing system 200. For example, Windows® 95 , Windows 98®, Windows® NT, Windows 2000® and Windows XP® by Microsoft maintain the registry in two hidden files, called USER.DAT and SYSTEM.DAT, located on a permanent storage device such as an internal disk. This section has described various hardware and software components according to various embodiments ofthe invention. The next section will describe methods used in the operation ofthe system in various embodiments.
2. METHODS OF THE INVENTION 2.1 GENERAL PLANT PRODUCTION METHOD FIGs. 3A - 3D are flowcharts illustrating methods for controlling plant production resources according to an embodiment ofthe invention. The methods to be performed by the operating environment constitute computer programs made up of computer-executable instructions. The methods illustrated in FIGs.3A - 3D are inclusive of acts that may be taken by an operating environment such as described above. FIG. 3A illustrates a method for controlling plant production wherein at least two resources are controlled. In some embodiments, the method begins by receiving a desired plant production rate (block 305). The desired plant production rate may vary depending on the plant being grown. In some embodiments, the desired plant production rate is related lettuce production. Typically the desired plant production rate will depend on at least two resources. In some embodiments, a first resource comprises lighting and a second resource comprises CO . The first and second resource may include two components, a naturally occurring component and a supplemented component. For example, in some embodiments, naturally occurring lighting from the sun may be supplemented with artificial lighting, and ambient levels of CO2 may be supplemented with purchased CO . Next the system receives a first cost associated with supplementing the first resource (block 310). Typically supplementing a resource will have a cost associated with it. In some embodiments, the cost of supplementing at least the first resource varies depending on a time period. In some embodiments, the time period comprises a peak time period and a non-peak time period. Additionally, there may be other time periods involved, such as a daytime period and a nighttime period. Next, the system receives a cost associated with supplementing the second resource (block 315). The second resource also typically has a cost associated with it. This cost may or may not vary depending on the time period. Note that while two resources have been described, the present invention is not limited to any particular number of resources, and in alternative embodiments, three or more resources may have costs associated with them that are analyzed by various embodiments ofthe invention. Next, the system determines the amount ofthe first resource and the second resource that will be expended during the time period. Thus in some embodiments, ifthe cost data indicates that the amount of electricity that would need to be applied for supplemental lighting to achieve the desired growth rate is more expensive than the amount of CO2 that would need to be applied to achieve the desired growth rate, the system will favor using supplemental CO2 over supplemental lighting. Alternatively, if the cost of applying CO2 is more expensive, the system will favor using supplemental lighting instead of supplemental CO2. Those of skill in the art will appreciate that the concept can be applied to other resources used in plant production. Note that the effectiveness of expending a resource may be limited by external factors such as the naturally occurring amount of the resource. For example, it may not be cost-effective to provide supplemental lighting during daylight hours since the additional benefit provided by the supplemental lighting may be negligible in comparison with benefit obtained by the naturally occurring (and therefore cost-free) lighting. Similarly, if the amount of CO2 naturally occurring in the environment is sufficiently high, it may not be cost-effective to introduce more CO2 ifthe plants cannot absorb the additional amount, and/or if ventilation passes some upper limit, supplementing CO2 becomes more expensive because of rapid losses out the greenhouse vents. However, it should be noted that it may be necessary to provide supplemental lighting during daylight hours ifthe day is comparatively dark, which may occur for example on days during the winter. In some embodiments, ifthe natural light level is high and adding supplemental light would put the plants into a light saturation situation, the system generally predicts a sufficient light integral for the daylight hours using the equations defined below such that it would be unlikely to turn the supplemental lights on. When supplemental lighting is needed on particular days to reach the desired light integral, the lighting is typically done during the night to the extent possible, using the off- peak electric rates. Next the system receives an indication that the time has moved into a different time period (block 325). The system returns to block 310 in order to redetermine which resource is more cost-effective to achieve the desired production rate.
2.2 DETAILED EXAMPLE OF PLANT PRODUCTION METHOD FIGs. 3B - 3D illustrates a method executed by an operating environment according to embodiments ofthe invention, and provides further details on the method illustrated above in FIG.3 A where the first resource is light and the second resource is CO2. In some embodiments, a day or other time period is divided into intervals, and the tasks illustrated in FIGs.3B - 3D may be performed once during each interval. In particular embodiments ofthe invention, the chosen interval is one hour. The method begins by predicting lighting operation for the interval assuming ambient levels of CO2 (block 332). In some embodiments, the prediction includes the control ofthe state of supplemental light and/or movable shades that determine the light within a greenhouse. Next, in some embodiments, the system estimates the maximum air temperature over the interval (block 334). In some embodiments, the current temperature is obtained, for example from sensors communicably coupled to the system. Alternatively, the current temperature may be obtained from other sources, such as sites on the Internet that provide local weather data. In some embodiments, the system estimates the maximum air temperature for the interval by taking the current interval reading, and the previous two interval readings, and fits a second order equation to them (examples include but are not limited to linear, polynomial, trigonometric, and spline functions) and extrapolates to the next time interval. In alternative embodiments, a linearized version ofthe second order equations may be used to estimate the maximum temperature over the interval. The present invention is not limited to any particular method for estimating the maximum temperature over the interval. Additionally, the system estimates the maximum solar insolation that will occur over the next interval (block 336). In some embodiments, this prediction may utilize the equations defined below along with solar insolation data accumulated since sunrise. The system also estimates the solar integral at sunset (block 338). Using the estimates determined above, the system then checks to see whether the predicted photosynthetic active radiation (PAR) due to sunlight will be greater than the daily target required to meet desired plant production (block 340). If so, then no lighting supplementation is require (block 342). Shading control may be required to prevent oversaturation. Alternatively, ifthe estimated PAR at sunset is less than the daily target value, the system then proceeds to determine how to apply supplemental lighting and/or supplemental CO2. In some embodiments, the system uses the predicted lighting operation from block 332 and estimates the maximum ventilation for the next interval (block 344). In some embodiments, the predicted PAR and predicted maximum outdoor air temperature are used in an energy balance to predict the maximum ventilation rate during the next interval (to maintain the indoor temperature at the desired level). A further discussion of this technique is described below in Section 5. It is noted that in winter in cold climates, the desired rate will be zero and heating is needed. But there is typically always infiltration at some level. A check is then made to determine ifthe estimated ventilation rate exceeds a ventilation maximum (block 346). Ifthe predicted ventilation is above some threshold value where CO could be profitable (e.g., more than 4 or 5 air changes per hour, or a comparable value), then the system proceeds to use lighting control to provide supplemental lighting (block 348). Alternatively, ifthe predicted ventilation is below the threshold value where CO2 could be profitable then the system calculates the proportion of desired growth already achieved for the day (block 350). Each interval ofthe day since sunrise has its value of light integral for the past interval, and the average CO2 concentration that existed for that interval. The equation that relates light integral and CO2 level to achieve the same growth is provided below. The CO2 level that existed can be used with that equation to determine the accompanying light integral target. The actual light integral for the interval, divided by the accompanying light integral target, will be a fraction less than unity and represents the proportional growth that interval contributed to the day. These proportional growth values for each interval since sunrise up to the current interval may be added to get the proportional growth accumulated for the day so far. The target for the end the day is 1.0, representing 100%. The system is then set to assume ambient levels of CO2 (block 352). The system then calculates the cost of providing supplemental CO2 at the estimated ventilation rate (block 356). Next the system calculates the proportional growth that would be achieved ifthe rest ofthe day is at ambient CO2, and the accompanying light integral that would be needed at ambient CO2 using the current state of lighting control expected for the interval (block 360). The system then determines the proportional growth remaining for the rest of the day (block 362). From the proportional growth remaining, the system determines the PAR value needed for the rest ofthe day to achieve the remaining proportional growth (block 364). The system then determines whether supplemental light will be needed for any part ofthe rest ofthe day in order to achieve the desired PAR value (block 366). From this value, the system determines when the supplemental light would have to start to reach the integral target (block 368). A check is made to determine ifthe supplemental lighting must be applied before off-peak rates start (block 370). If not, the system assumes off-peak rates for supplemental lighting costs estimated in the next blocks (block 372). Otherwise, the system assumes on-peak rates for supplemental lighting (block 374). Next, the system uses the on-peak or off-peak rates to determine the cost of lighting for the next interval and also determines the cost of supplemental CO2 for the next interval (block 380). The CO concentration is also incremented to account for any supplemental CO2 that may be added during the interval (block 382). A check is made to determine ifthe CO2 to be added would exceed a maximum level of CO2 that can be utilized by the plants (block 384). If not, the system proceeds back to block 356 to recalculate values based on the incremented CO2 level. Otherwise, the system next determines ifthe lighting state changed (block 386). If the lighting state changes, the system then checks to see ifthe lighting state was changed in a previous iteration in this interval (block 392). If not, the system proceeds to block 344 to go through the loop again because the system started with the assumption the CO2 was at the ambient level, and it will now not be at the ambient level due to the predicted supplementation of CO . Ifthe state did change in a previous iteration and the state changes again, the loop is indefinite. In some embodiments, supplemental lighting is forced on and no CO2 is added (block 394). However, ifthe lighting state does not change, the system proceeds to make a determination ofthe most cost effective light integral/CO2 concentration combination based on the lighting cost (if any) plus the CO2 cost based on the predicted ventilation rate (block 388). The system chooses the combination with the lowest total cost of supplemental lighting and/or supplemental CO2. Lighting and CO2 resources are then controlled in accordance with the chosen combination (block 390.) The system then waits until the beginning ofthe next interval (block 396), when the method illustrated in FIGs. 3B-3D may be repeated. In some embodiments, the method illustrated above is modified to account for CO2 decay. For example, ifthe previous interval led to control with CO2 above ambient levels, and the next interval suggests only ambient, the system takes into consideration the decay of CO2 concentration, particularly if ventilation is not high. This is desirable because the decay of CO can affect the calculation of potential growth. In some embodiments, a simple mixing model can be used to predict the CO2 decay for the next hour, and beyond if ventilation is low enough. Additionally, the rate of adding CO2, and its temporal change (decay rate), can be used to estimate the "current" ventilation rate, which can then be compared to the predicted to know whether it (the predicted) has been greatly exceeded. Furthermore, in some embodiments, the system detects if conditions are far from the predicted conditions (e.g., due to a sudden weather change), and forces the system to a default state. In some embodiments, the default state assumes ambient CO2. FIG. 4 illustrates a set of exemplary time periods. In the example, there are four time periods P1-P , two defined by peak and non-peak electrical costs and two defined by daytime versus nighttime hours. In general, the daily cycle (with origin at sunset) may be divided into four periods as follows:
Pi No natural light (night) + on-peak electricity price P No natural light + off-peak electricity price P Natural light (day) + off-peak electricity price P4 Natural light + on-peak electricity price
Note that, depending on local conditions, one or more of these periods may not exist.
3. EXEMPLARY PARAMETERS AND FUNCTIONS This section provides exemplary parameters used in various embodiments ofthe invention where the first and second resources comprise supplemental lighting and CO2. This section also provides equations that may be used by various embodiments to assist in determining optimal combinations of supplemental light and CO2 depending on a time period. The following notations will be used in this section. Where a term is not defined here, its meaning in the art should be used. Main Symbols
CL unit cost of supplementary light $/mol[PAP]
Cx unit cost of CO2 $/mol[CO2] f{L) value of X which for given L results in desired production rate mol[CO2]/mol[air] J daily costs $/(m2[ground]d)
L light integral mol[PAP]/(m2[ground]d) m CO2 taken up by plants at desired production rate mol[CO2]/( m2[ground]d)
Q ventilation rate m3[air]/(m2[ground]s) t time of operation per day s/d
W electrical power for lights W[elect]/m2[ground]
X CO2 concentration mol[CO2]/mol[air] γ lamp efficiency mol[PAP]/J[elect] p molar density of air mol[air]/m3[air]
Subscripts
d lag of onset of natural light after onset of off-peak period L light m maximum n natural o overlap of natural and supplementary light s supplementary t total
X CO2
Superscripts
off off-peak on on-peak
In the discussion in this section, it is assumed that the natural light integral and the (constant) ventilation rate for the day are known in advance. It is also assumed that the light-CO2 combinations that produce the desired growth rate are known (see Both et al., 1997). Given the ventilation rate, Q, and the natural light integral inside the greenhouse, Ln , the CO2 concentration, Xt , which minimizes the cost of operation while maintaining the desired rate of growth is desired. The analysis starts by inspecting a candidate solution for the supplementary light integral, Ls as illustrated in FIG. 5. FIG. 5 is a schematic presentation ofthe L-X plane. The square point is the candidate solution. The horizontal dashed line is the natural level of CO2 concentration. The curve connects all the points that produce the desired rate of growth. Lt ≡ Ln + Ls and
X-t %n + %s 4. GENERAL ANALYSIS The length ofthe supplementary light period may be uniquely determined by the proposed solution and it is proportional to Ls
Figure imgf000019_0001
The cost ofthe added light depends, however, on its timing. In general, the daily cycle (with origin at sunset) may be divided into four periods as discussed above with reference to FIG.4. The cost of supplementary light for the day depends on how it is divided between the on-peak and o^-peak periods
JL = CfLf + CPI? =
Figure imgf000019_0002
+ CL°n i - tf ] [2]
The cost of supplementary CO2 for the day depends on the union tx — tsDtn.
Figure imgf000019_0003
There are 6 possible combinations of ts and t„. The one in FIG.4, for example yield tx=tn+t0. [4]
The total cost is [1][2][3] J - JL + Jx =
Figure imgf000019_0004
+ f {s - tf )j-
Figure imgf000019_0005
+ m] . [6]
The constraints on the control are 0 ≤Ls≤Lm= 24x3600 xγW 0≤Xs≤Xm. [7] Given the relationship
Figure imgf000019_0006
between Xt≡Xn+Xs [9] and t^Ln+Ls [10] that yields the desired production target (FIG. 5), the cost becomes J
Figure imgf000020_0001
+ CL°ni -tf
Figure imgf000020_0002
-Xn}x + m] . [11] The value of J depends on the times of turning the lights on and off. These are equivalent to ts and t0 of FIG. 4. Hence the search for the minimum of J may be carried out over the two dimensional [ts, t0_ space. Three different prices affect the cost of operation (Equation [11]):
Cff , Cι° and Cx . The order in which the periods V\ to P4 are to be selected for supplemental lighting, depends on the two ratios between these three prices. Whatever the prices, the best period to start is P3, if it exists, because electricity costs are low and CO2 enrichment time, tx, is at its minimum (t„). If CO2 cost is negligible relative to electricity cost (depending also on the rate of ventilation), the next choice would be P2, then P4 and finally Pi. (Enrichment during P is never more expensive per unit time than enrichment during P2, and enrichment during P4is never more expensive than enrichment during Pi). If the price of CO2 is relatively high, the choice of enrichment period, following P3, would be P4, then P2 and finally Pi. At one test location Period P3 (daytime and off-peak electricity price) does not exist and the first period of choice is either P2 (night and off-peak), or P4 (day and on- peak). The last period is Pi (night and on-peak). The calculation for the sequence starting with P2 now follows.
4.1 PERIOD P__: OFF-PEAK ELECTRICITY PRICE: NO NATURAL LIGHT The cost function [11] for this case is
J = JL + Jx = cf(Lt - Ln )+ Cx pQ(f{Lt} - Xn ϊ tn + ~ A. + m . [12] γW The extrema with respect to Lt for given Ln and Xn , are given by dJ = 0 = Cf + C pQ (yWtn +Lt -Ln ^ + (f{Lt} - Xn ) [13] άL 'X γW άLt which shows that for a given ventilation rate, the bracketed factor is constant and that the solution for Lt , and hence for Xs , does depend, in general, on Ln , the amount of natural light. The second derivative of [12], namely [14]
Figure imgf000021_0001
may be used to distinguish between maximum, minimum and inflexion.
Note that ifthe minimum indicated by [13] is outside the feasible region, the solution lies either on the borders of given by [7] or on the function given by [8] or on
Figure imgf000021_0002
where if = γWtoff [16]
4.1.1 Quadratic approximation Approximating /{ by a quadratic function xt f{Lt} = atf+bLt+c , [17] Equation [13] becomes
[18]
Figure imgf000021_0003
or
[3altf+[2a(ymn-Ln)+2b t b(yWtn-L„)+c-Xn +C = 0 [19]
Figure imgf000021_0004
Equation [19] is a quadratic equation in Lt , with Ln and Q as parameters for a given day- length tn . The solutions, if they exist, are calculated as
Figure imgf000021_0005
In the normal range of values, the solution with the + sign is a minimum, while the other solution is a maximum. When the discriminant is negative, there is no minimum, just an inflexion point, and the optimum is obtained on the border ofthe feasible region.
4.1.2 Linear approximation Approximating f{Lt} by a linear function Xt=f{Lt} = bLt+c, [21] Equation [13] becomes
Figure imgf000022_0001
and the second derivative, Equation [14] d2J 2Cx Q [23] άLt γW is always negative. Hence the extremum (the solution of equation [22]) is a maximum and the optimum (a minimum) will lie on the border ofthe feasible region. Inverting equation [21] Xt - c Lt - [24]
Figure imgf000022_0002
at the upper bound of X
[25] + C, pQ{X -Xn itn + m , [26]
Figure imgf000022_0004
Figure imgf000022_0003
and at the lower bound (where Xt - Xn = 0 )
Figure imgf000022_0005
Jo being independent of the ventilation rate.
4.1.3 Michaelis-Menten approximation Modifying the instantaneous Michaelis-Menten equation for constant environmental conditions
Figure imgf000022_0006
the optimum total light level, based on Equation [13] becomes
Lt
Figure imgf000022_0007
which shows that the optimum supplementary light depends on the level of natural light. Note: The equivalence between Equations [28] and [56] (see Section 4.5) is
Xt≡x, Lt≡I≡iτ, g≡B+/A+, h≡l/A+, tn≡τ; [29a]
4.2 PERIODS P (OFF-PEAK: NIGHT) AND P± (ON-PEAK; DAY) Ifthe day under consideration is dull and P2 is not long enough to supply all the required light integral, light must also be applied during P4 (recall that P3 is assumed not to exist), and the cost function [11] becomes
J = JL +JX = Cf Lf +CL°n(Lt-Ln -Lf
Figure imgf000023_0001
[30]
The extrema with respect to Lt are, therefore — 0 - Cr + CXPQ{„ + tf & . [31] ύLt dLt
4.2.1 Quadratic approximation For the quadratic approximation of f{Lt} (Equation [17]), a single extremum is obtained
Figure imgf000023_0002
which is a constant, independent oϊLn The second derivative of [30] is
±L-2aCxPQ{,+t*} [33] dLt and since a is positive, the extremum (Equation [32]) is a minimum.
4.2.2 Michaelis-Menten approximation In this case the optimum solution (Equation [31]) yields ,h SSI S. [34]
which, again, is independent of Ln. The second derivative of [30] is in this case
Figure imgf000023_0003
which in the relevant range (Lt > h ) is positive and therefore indicates that the extremum
(Equation [32]) is again a minimum. Hence the solutions for the quadratic approximation and for the M-M approximation (both convex downwards) are qualitatively similar.
4.3 PERIODS Pz (OFF-PEAK; NIGHT). P± (ON-PEAK: DAY) AND PL (ON-PEAK: NIGHT) If still not enough light is supplied, the luminaires may be also turned on during Pi (on-peak price at night). The appropriate cost function for this situation is
J = JL +Jx = CfLf + Cr ( t -Ln -Lf )- Cx pQ(f{Lt} -Xn Lt ~ Ln \ + m [36] γW The extrema with respect to Lt for given Ln and Xn are given by
Figure imgf000024_0001
which, just as in the case of P2, shows that for a given ventilation rate, the bracketed factor is constant and that the solution for Lt , and hence for Xs , does depend, in general, on Ln .
The second derivative of [36]
Figure imgf000024_0002
may be used to distinguish between maximum, minimum and inflexion.
4.3.1 Quadratic approximation For the quadratic approximation of f{Lt} (Equation [17]), Equation [37] becomes
Figure imgf000024_0003
or
_3a + [- 2aLn + 2b t + - bLn + c - Xn ≡ AL] + BLt + C = 0 . [40]
Figure imgf000024_0004
Equation [40] is, again, a quadratic equation in Lt , with Ln and Q as parameters for a given day-length tn . The solutions, if they exist, are calculated as
Figure imgf000025_0001
t 2A
The only difference from P2 (Equation [19]) is that B and C are slightly different.
4.4 RESULTS OF ANALYSIS FIGs. 6 and 7 show results ofthe optimal CO2 concentration and the associated cost function for the parameter values of Table 1 and for the lighting sequence P2, P4, Pi. A complete solution should also consider the sequence P4, P2, Pi. FIG. 6 shows the optimal CO2 concentration as a function of available natural light integral (divided equally over 12 hours). Table 1 Functional relationships
Ferentinos quadratic approx Xt = f{Lt} = aL2 +bLt + c = (20 AL2 - 169.6Lt + 7531) x 10~6 Both quadratic approximation Xt = f{Lt} = aLt + bLt + c = (40.4X, - 1355Z, + 11690) x 10 linear approximation Xt = f{Lt} = bLt + c = (-2l2Lt + 3800) x 10~6
M-M approximation Xt xlO-6
Figure imgf000025_0002
Parameter values of an exemplary embodiment unit price of on-peak light C = 0.088 $/kW[elect]h = 0.0252 $/mol[PAP] unit price of off-peak light cf = 0.056 $/kW[elect]h = 0.0160 $/mol[PAP] unit price of CO2 Cx = 0.14 $/kg[CO2]x 0.044kg[CO2]/mol[CO2] = 0.00616$/mol[CO2] supplementary light flux W = 150 W[elect]/m [ground] lamp efficiency γ = 0.97 x 10~6 mol[PAP]/J[elect] molar density of air p = 1.2 kg[air]/m [air] / 0.029 kg[air]/mol[air] = 41.4 mol[air]/m [air] length of off-peak price period fff= 9 hrs (all at night = P2 period; no P3 period) length of day-light t„ = 12 hrs (on-peak price; period P4)
FIG. 6 illustrates optimal CO2 concentration as a function of available natural light, for several ventilation rates, Q. The curve on the right (No. 1; Ferentinos approx) connects all combinations of light flux and CO2 concentration which produce the desired daily target. The region between the parallel curves 1 and 2 provides supplementary light during the off-peak (P2) period. The region between curves 2 and 3 is for additional light provided during period P4 (day-time and on-peak electricity price). The region between curves 3 and 4 is for additional light during period Pi (night-time and on-peak electricity price). There are no feasible solutions to the right of curve 1, to the left of curve 4, below Xt=360 ppm and above Xt=1600 ppm. It should be noted that the particular values for Xt (e.g. 360 ppm and 1600 ppm) are those used in an exemplary embodiment ofthe invention. No embodiment ofthe invention is limited to a particular lower or upper boundary for Xt. Considering, for example, the (constant) ventilation rate of 0.008 m3[air]/(m2[floor]s), the solution behaves as follows: As the natural light integral diminishes, the solution point first climbs along the Ferentinos approximation by increasing the CO2 concentration, while refraining from adding supplementary light. As the maximum permissible CO2 concentration (1600 ppm) is reached, any further loss of natural light must be replaced by supplementary light during the off-peak (low electricity price) period. As the natural light diminishes further, CO enrichment becomes less economic (due to longer enrichment time) and the optimal CO2 concentration decreases. When the off-peak period is exhausted, increasing the CO2 concentration becomes attractive again for a while, until supplementing with on-peak light becomes necessary. Enrichment during P is at a constant concentration, independent ofthe length of supplementary lighting, because the length of enrichment period is constant (enrichment continues throughout the day even if no light is provided during P4). When the end of P4 is reached, there is again some incentive for trade-off between light and CO2 concentration, without the need to increase enrichment time. As a result, the solution point climbs up curve 3 for a while, until switching to period Pi (on-peak, night) is justified. The behavior in period PI is similar to that in P2 and for the same reason. When curve 4 is reached, lights have been on for 24 hours and the only way to reach the target production is to add CO2, climbing up curve 1. As expected, the optimal CO2 concentration is higher for lower ventilation rates. FIG. 7 shows the cost ofthe solutions of FIG. 6 and, in addition, the cost of adding light only (e.g., when high ventilation rates are required). The change in slope is due to switching from off-peak (9 hours) to on-peak (rest of day) electricity price. Light alone typically cannot efficiently produce the target at very low natural light integral levels, but it is always possible to reach the target by combining light and CO2 enrichment. Wherever the light-only solution exists, it is the upper bound on the other solutions. The absolute saving from CO2 enrichment is constant for P4, but diminishes towards higher levels of natural light. As illustrated in FIG. 7, gaps between segments are where the solutions climb along the curves of FIG. 6. A few ofthe solutions are not represented in this figure.
4.5 Equivalence Between Curves of Both, et al. (2000) and Instantaneous Photosynthesis Note that the symbols in Table 2 may be different than elsewhere. The special notation used in herein is: Table 2. Notation
A+ coefficient m2d/mol[PAP]
B+ coefficient mol[C]s/(mol[PAP]m)
C* coefficient
D+ coefficient m2d/mol[PAP] c exponent in respiration equation 1/K
F deviation from daily goal mol[CO2]/mol[air]
G growth integral mol[C]/(m2[ground]d)
G* desired daily growth mol[C]/(m2[ground]d) g net growth rate mol[C]/(m2 [ground] s) I light integral mol[PAP]/(m2[ground]d) i light flux mol[PAP]/(m2[ground]s)
J fitting criterion mol[C]/(m2[ground]d) k maintenance respiration rate at T=Tr mol[C]/(m2[ground]s) P photosynthesis rate mol[C]/(m2[ground]s)
R-m daily maintenance respiration mol[C]/(m2[ground]d) rS growth respiration rate mol[C]/(m2[ground]s) rm maintenance respiration rate mol[C]/(m2[ground]s)
T temperature K τr reference temperature K x molar CO2 concentration mol[CO2]/mol[air]
a coefficient mol[CO2]m4[ground]d2/(mol[air]mol2[PAP]) β coefficient mol[CO2]m2[ground]d/(mol[air]mol[PAP]) r G/G*
Y coefficient mol[CO2]/mol[air] ε photosynthetic efficiency mol[C]/mol[PAP] θ growth respiration as fraction of growth σ leaf conductance to CO2 mol[air]/(m2s) τ time of uniform operation during prescribed period s/d According to Both et al., the following light-CO2 combinations result in the desired daily growth, G* x = al2-βl + γ 13 mol[PAP]/d < / < 17 mol[PAP]/d [42]
On the other hand, a common instantaneous photosynthesis rate function is g = p-rg-rm-p/(l + θ)-rm=- ^-k x^(T-Tr)} [43] 6 εi + σx
Assuming constant environmental conditions during a light-period of length τ, namely 7 = ιτ [44] the daily growth becomes εiσx
[43] G = -kexvk(T-Tr)} [45]
Figure imgf000028_0001
or
Figure imgf000028_0002
Assuming now that the daily maintenance respiration rate is constant, independent of I and x, (since daily temperature cycle repeats itself)
[46] G = 1ψ Rm [47] + x στ and normalizing with respect to the desired daily growth, G*.
Figure imgf000028_0003
στ The result is a three-parameter expression:
Figure imgf000028_0004
τ
Having information (from [42]) only for the case G = G* (namely E=l), only two parameters can be fitted.
[49] -^ ++l)=0 [50] B+- + x τ [50] — — Ix - B+ - - x = 0 [51] 1 + C+ τ or
[51] D+Ix-B+ -- x = 0 [52]
Selecting the appropriate values of τ, [I, x] pairs obtained from [42], can be used as data to fit [52]. The fitting requires the minimization of
Figure imgf000029_0001
where F{I,x,τ} = D+Ix -B÷ ~-x [54]
An estimate of C+ ≡= Rm /G* must be obtained in some other way. It could probably be set arbitrarily to say 0.1 or even to zero without too much loss of accuracy in the inversion. Once the parameters A+,B+ and C1" are known, the (normalized) growth over any period of time (assuming uniform respiration) can be calculated via
Figure imgf000029_0002
where i and x are instantaneous (hourly) values. The value of τ may have to be a guess, perhaps based on the previous 24 hours period. If C is assumed to be zero, [55] reduces to:
Figure imgf000029_0003
From Ferentinos et al. (2000) incorporated by reference above, a = 2.04 e - 5 mol[CO2]m4[ground]d2/(mol[air]mol2[PAP]) β = 7.70 e - 4 mol[CO2]m2[ground]d/(mol[air]mol[PAP]) γ = 7.53 e - 3 mol[CO2]/mol[air]
A sample fitting resulted in B+ = 0.416 mol[C]s/(mol[PAP]m) D+ = 0.087 m2d/mol[PAP] and is shown in FIG. 8. 5. SIMULATED RESULTS Combinations ofthe daily PAR integral and CO2 concentration have been established that result in comparable growth rates for a specific cultivar and cultural practice, but the results suggest similar behaviors represent other lettuce cultivars and, perhaps, other species during their vegetative growth phases, albeit with their own unique functions that relate the two factors. Data for Lactuca sativa, butterhead lettuce, cv. Vivaldi are shown in FIG. 8. With CO2 concentration and the daily PAR integral expressed in ppm and mol/m2, respectively, the data is represented by the following expression: CO2 = 2.66E+4 exp(-0.261 PAR) [57]
An assumption here is that the plant response time constant in response to CO2 changes is short compared to the one-hour time step of control actions, and there is no adaptation required for plants to adjust when the concentration changes. Parallel gas exchange measurements have shown that lettuce reacts quickly to instantaneous light and CO2 concentrations. Light intensity and integral projections for each hour time step may be made using the light control algorithm published by Albright, et al. (2000.) The present invention employs a similar algorithm predicated on controlling supplemental lights to reach a temporally consistent light integral target, but utilizes a daily target that can change hourly, depending on the history ofthe day and the CO2 concentration found to be optimum for the predicted ventilation rate for the next hour. As noted above, the predicted PAR and outdoor air temperature during the near future may be used in a greenhouse energy balance to solve for the expected ventilation rate. Predicting outdoor air temperature one hour ahead ofthe current hour (the selected time interval) was by extrapolation. If one measures the current and two previous hourly air temperatures, a second order polynomial can be fitted exactly to the three data points and used to extrapolate one time step ahead. A polynomial was used, assuming the temperature trend would continue (the trend and its curvature). This is not always true because sudden temperature changes can occur. In FIG. 9 are shown prediction errors for one year of hourly air temperature data for Ithaca, New York, U.S.A. Seventy-seven percent ofthe predictions were within 1 C accuracy, 94% within 2 C accuracy, and 98% within 3 C accuracy. It should be noted that errors where outdoor air temperature is less than predicted are acceptable; ventilation will be less than predicted, CO2 loss will be less, and operation will still be close to optimum. Moreover, greenhouse temperature can be permitted to drift up a degree or two and remain within typical greenhouse control accuracy. There may even be a benefit to drifting up a degree or two. More frequent data and regression could, perhaps, provide more accurate temperature predictions. With these sub-models, a step-wise, steady state, thermal model of a greenhouse was formulated, based on the sketch in FIG. 10. The model was used to predict the ventilation required for the next hour (with a minimum infiltration rate as a threshold below which ventilation could not go). The model and sub-models described above were tested by computer simulation (using hourly weather data for one year) and is estimated to save approximately one-half the lighting energy and nearly forty percent ofthe operating cost of supplementing the two resources, with no loss of plant production potential when lettuce is the crop of interest. A generic greenhouse was assumed for simulation purposes; representative parameters are listed in Table 3. The model was programmed as an application in Java and one year (1988) of hourly weather data from Ithaca, NY, USA, was used for calculations.
Table 3: Summary of base case simulation parameters Parameter Assumed Value Units Air infiltration 0.5 Air changes per hour Transmissivity to sunlight 0.7 Dimensionless Greenhouse latitude 42 North Degrees Electric rate schedule peak hours 7 am to 10 pm Hours On-peak electric rate 0.088 US$/kWh Off-peak electric rate 0.056 US$/kWh CO2 cost 0.25 US$/kg Greenhouse floor area 743 m2 Average greenhouse height 3.7 m Number of luminaires 146 Luminaire wattage, HPS 680 (includes ballast) Watts Supplemental PAR level 180 μmol m"2 si Daily PAR integral target 17 mol/m2 Greenhouse temp., 6 am to 6 pm 24 C Greenhouse temp., 6 pm to 6 am 18 C Greenhouse heat loss factor 8.5 Wm"2K"l (of floor area) Conversion, suppl. light energy 0.6 Dimensionless to sensible energy Conversion, sunlight outdoors 0.34 Dimensionless to sensible energy indoors Ambient CO2 concentration 400 ppm, or μmol/mol
A base case scenario without CO2 supplemented provided the data in Table 4. Table 5 contains comparable data but with supplemental CO2 enabled. Additional simulations to show the influence of greenhouse light transmissivity and greenhouse air-tightness (averaged air infiltration) were completed and results are in Table 6.
Table 4. Results, base case with CO2 not enabled
Parameter Value
Total cost of lighting US$18,670 Lighting cost/m2 US$25.12 Hours of lighting 2766 Mol/m2 from supplemental lighting 1792
Table 5. Results, base case with CO2 enabled
Parameter Value
Total cost of lighting US$9630 Lighting cost/m2 US$12.96 Total CO2 cost US$1860 CO2 cost/m2 US$2.50 Total Lighting + CO2 cost US$11,500 Total Lighting + CO2 cost/m2 US$15.50 Cost savings compared to base case US$9.60/m2 (38%) Hours of lighting 1451 Mol/m2 from supplemental lighting 940
Table 6. Simulation results, additional situations, values are yearly and per m of greenhouse floor area
Simulation Lighting hours Lighting cost CO2 cost Total cost
Set greenhouse transmissivity = 0.5 CO2 enabled 2002 US$18.16 US$3.02 US$21.18 CO2 not enabled 3623 US$33.31 US$33.31
Set greenhouse transmissivity = 0.6 CO2 enabled 1673 US$15.08 US$2.72 US$17.80 CO2 not enabled 3138 US$28.67 - US$28.67
Set minimum air infiltration = 1.0 h"l CO2 enabled 1489 US$13.26 US$4.36 US$17.62 CO2 not enabled 2766 US$25.12 - US$25.12
Set minimum air infiltration = 1.5 h"l CO2 enabled 1503 US$13.36 US$6.13 US$19.49 CO2 not enabled 2766 US$25.12 - US$25.12
Set minimum air infiltration = 2.0 h"l CO2 enabled 1514 US$13.47 US$7.88 US$22.35 CO2 not enabled 2766 US$25.12 - US$25.12
5.1 SIMULATION RESULTS DISCUSSION The most obvious result ofthe simulations is the predicted savings of both energy and operating cost. The base case, with CO2 supplemented and coordinated light control, shows an energy savings of 47% and an operating cost savings of 37%. A lower greenhouse PAR transmittance raises costs. Ifthe greenhouse is less air tight, costs increase significantly - both for heat and CO , if supplemented. Separate simulations, not shown here, show savings from adding CO2 are real, although diminishing, up to an air exchange rate of approximately 4 h"l, depending on values of other factors. To implement the process of adjusting the daily PAR integral target when CO2 was above ambient, the process was programmed starting with Eq. [57]. Inverting the equation yields PAR = 3.83[ln(2.66E4) - ln(CO2)], [58] which can be used to scale the actual PAR received by PARvirtuai = PARaCtuai[ln(2.66E4) - ln(400)] / [ln(2.66E4) - ln(CO2)], [59] where 400 is assumed to be the ambient CO2 concentration. For example, an hourly PAR integral of 1.5 mol/m2 (natural and/or supplemental light) at a CO2 concentration of 1000 ppm corresponds to a virtual PAR integral of 1.92 mol/m2 at ambient CO . The simulation program accumulated daily sums of virtual PAR values and controlled the lights and CO2 to reach the standard target integral using the virtual values (e.g., 17 mol/m2 for the base case). This approach was simpler than readjusting the daily PAR integral target every hour. The majority of hourly CO2 control decisions were to provide full CO2 (1600 ppm in the simulation) or ambient. However, there were numerous hours between the two extremes. For example, the base case showed 237 out of 1451 hours of supplemental lighting were with an optimum CO2 concentration calculated between the extremes, caused by the calculated required ventilation being somewhat above the air infiltration rate but not large. Including CO2 concentration decay when supplementation stopped was important in calculating the virtual PAR integrals ofthe following hours, particularly during daylight hours when natural light always continued. When the air infiltration rate was low, as in the base case, the decay of CO to ambient required several hours. As an example, decay from 1600 ppm, with 0.5 h"l air exchange, showed calculated CO2 hourly concentrations of: 1128, 841, 668, 562, and 499 ppm (at which point supplementation resumed), which is a long decay curve. These data were for daylight hours when CO2 had been supplemented early but then stopped. Actual (natural) PAR integrals during the decay period were 1.86, 2.38, 1.75, 0.98 and 0.81 mol/m2, for a total of 7.78 mol/m2. The corresponding virtual hourly PAR integrals were 2.47, 2.89, 1.99, 1.07 and 0.86 mol/m2, for a total of 9.28 mol/m2, a 19% increase over the actual values. This magnitude of error, if repeated for several days, could lead to noticeable lettuce tip burn problems and potential crop and economic loss. The simple extrapolation procedure used to predict the next hour's outdoor air temperature showed slightly better efficacy during night when air temperatures are generally more stable. However, the efficacy was relatively constant during the day. Prediction accuracy for the 1988 weather data simulation is shown in FIG. 11. The outdoor air temperature prediction accuracy is reflected as a function of time of day. Symbols, from bottom to top, represent 0.5, 1.0, 1,5 and 2.0 C errors. The errors are shown (percentages represent how many hours were within each error limit). Accuracy is slightly reduced early in the morning as the air temperature history changes from relatively flat before sunrise, to a sudden jump after sunrise. In such situations, errors were often large positive values for one hour, followed by large negative values the next hour. This is an artifact ofthe extrapolation procedure. A mirror image effect appears to occur at or slightly after sunset when air temperature can suddenly drop during clear evenings. During the exploration of this extrapolation procedure, a year of air temperature data from New Jersey, USA, was analyzed and prediction accuracy was greater. The New Jersey climate is closer to maritime in nature; the Ithaca climate is more continental. More sophisticated greenhouse air temperature control could be implemented to improve the simple simulation presented here, without deviating from the scope ofthe present invention. For example, the program was written to keep greenhouse air temperature at the desired set point by using ventilation. The prediction errors where actual outdoor air temperature was one or two degrees above the predicted value would lead to increased ventilation and CO2 venting. Most greenhouse air temperature control includes a dead band between heating and cooling, with temperature steps of one or two degrees between ventilation/cooling stages. Permitting such temperature drifting would improve the efficacy ofthe control algorithm.
6. SUMMARY Previous attempts to optimize combinations of CO2 and supplemental lighting have been inadequate Two reasons for this are (1) ventilation rate is assumed constant throughout the day, and (2) the non-linear response of assimilation to light and CO2 is averaged in the previous systems. The sudden jumps ofthe solutions for periods P2 and P4 suggest that vertical solution trajectories in these regions are probably good enough. In view of FIGs. 6 and 7, a simple enrichment strategy usable in some embodiments ofthe invention may be as follows: Ifthe ventilation rate is higher than 0.005 m3/(m2s), do not enrich. If it is lower, enrich to the maximum permissible concentration (1600 ppm in some embodiments, however no embodiment is limited to any particular maximum permissible concentration). Systems and methods for optimizing costs associated with resource consumption related to plant production have been disclosed. Although specific embodiments have been illustrated and described herein, it will be appreciated by those of ordinary skill in the art that any arrangement which is calculated to achieve the same purpose may be substituted for the specific embodiments shown. This application is intended to cover any adaptations or variations ofthe present invention. The terminology used in this application is meant to include all of these environments. It is to be understood that the above description is intended to be illustrative, and not restrictive. Many other embodiments will be apparent to those of skill in the art upon reviewing the above description. Therefore, it is manifestly intended that this invention be limited only by the following claims and equivalents thereof. It is claimed:

Claims

Claims
1. A computerized control system using data input and output, the control system comprising: a processor; a first resource controller operable to control a first resource, said first resource having a first cost, wherein the first cost varies depending on a resource cost time period; and a second resource controller operable to control a second resource, said second resource having a second cost; wherein the processor is operable to: receive a desired plant production rate, said desired plant production rate related to a first resource and a second resource; receive a first cost associated with the first resource, wherein the first cost varies in accordance with a resource cost time period; receive a second cost associated with the second resource; and determine based on the resource time period an amount ofthe first resource to expend during the time period and an amount ofthe second resource to expend during the time period.
2. The control system of claim 1, wherein the first resource comprises electricity for a lighting system.
3. The control system of claim 1, wherein the second resource comprises carbon dioxide (CO2).
4. The control system of claim 1, wherein the processor is operable to select the resource cost time period from the group consisting of a peak period and a non-peak period.
5. The control system of claim 1 , wherein the processor is further operable to re- determine the amount ofthe first resource to expend and the amount ofthe second resource to expend upon a change to a differing resource cost time period.
6. The control system of claim 1, wherein the processor is further operable to periodically re-determine the amount ofthe first resource to expend and the amount ofthe second resource to expend at a plurality of time intervals.
7. The control system of claim 6, wherein the processor is further operable to calculate a proportional plant growth achieved.
8. The control system of claim 7, wherein the re-determined amounts of the first resource to expend and the amount ofthe second resource to expend are based at least in part on the calculated proportional growth achieved.
9. The control system of claim 1, wherein the first resource controller is operable to supplement a naturally available resource.
10. The control system of claim 9, wherein: the naturally available resource varies in accordance with a natural resource time period; and the processor is operable to determine the amount ofthe first resource to expend and the amount ofthe second resource to expend based at least in part on the natural resource time period and the resource cost time period.
11. The control system of claim 10, wherein the natural resource is solar radiation and the natural resource time period is selected from the group consisting of daytime and nighttime.
12. The control system of claim 1, wherein: the second resource comprises CO2; and the second resource controller is operable to supplement CO2 decay losses.
13. The control system of claim 1, wherein the processor is operable to predict for an upcoming time interval at least one ofthe environmental conditions selected from the group consisting of air temperature outside of a greenhouse containing the plant, solar insolation, and ventilation rate from a greenhouse encompassing the plant.
14. The control system of claim 1, wherein the resource controllers are operable to adjusting the amounts ofthe first resource and the second resource respectively to amounts determined by the processor.
15. The control system of claim 1, wherein the processor is operable to determine amounts ofthe first resource and the second resource to be expended that substantially achieve the desired plant production rate at or near a minimum total cost ofthe respective resources.
16. A method for controlling resources for growing a plant, the method comprising: receiving a desired plant production rate, said desired plant production rate related to a first resource and a second resource; receiving a first cost associated with the first resource, wherein the first cost varies in accordance with a resource cost time period; receiving a second cost associated with the second resource; and determining based on the resource time period an amount ofthe first resource to expend during the time period and an amount ofthe second resource to expend during the time period.
17. The method of claim 16, wherein the first resource comprises electricity for a lighting system.
18. The method of claim 16, wherein the second resource comprises carbon dioxide (CO2).
19. The method of claim 16, wherein the resource cost time period is selected from the group consisting of a peak period and a non-peak period.
20. The method of claim 16 further comprising re-determining the amount ofthe first resource to expend and the amount ofthe second resource to expend upon a change to a differing resource cost time period.
21. The method of claim 16, further comprising periodically re-determining the amount ofthe first resource to expend and the amount ofthe second resource to expend at a plurality of time intervals.
22. The method of claim 21, further comprising calculating a proportional plant growth achieved.
23. The method of claim 22, further comprising re-determining at the time intervals the amount ofthe first resource to expend and the amount ofthe second resource to expend based at least in part on the calculated proportional growth achieved.
24. The method of claim 16, wherein the first resource is used to supplement a naturally available resource.
25. The method of claim 24, wherein the naturally available resource varies in accordance with a natural resource time period and further wherein the amount ofthe first resource to expend and the amount ofthe second resource to expend is determined by the natural resource time period in addition to the resource cost time period.
26. The method of claim 25, wherein the natural resource is solar radiation and the natural resource time period is selected from the group consisting of daytime and nighttime.
27. The method of claim 16, wherein the second resource comprises CO2 and is used to supplement CO2 decay losses.
28. The method of claim 16, wherein the determining step further comprises predicting for an upcoming time interval at least one ofthe environmental conditions selected from the group consisting of air temperature outside of a greenhouse containing the plant, solar insolation, and ventilation rate from a greenhouse encompassing the plant.
29. The method of claim 16, further comprising the step of adjusting the amounts of the first resource and the second resource to amounts determined.
30. The method of claim 16, wherein the amounts ofthe first resource and the second resource determined to be expended substantially achieve the desired plant production rate at or near a minimum cost of resources.
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