Systems and methods for controlling a chiller plant for a building
원문보기
IPC분류정보
국가/구분
United States(US) Patent
등록
국제특허분류(IPC7판)
G05D-023/00
G05D-023/19
G01M-001/38
G05B-013/00
G05B-015/00
G05B-013/02
출원번호
US-0533848
(2012-06-26)
등록번호
US-9002532
(2015-04-07)
발명자
/ 주소
Asmus, Matthew J.
출원인 / 주소
Johnson Controls Technology Company
대리인 / 주소
Foley & Lardner LLP
인용정보
피인용 횟수 :
11인용 특허 :
72
초록▼
A computerized method for controlling a chiller plant for cooling a building is provided. The chiller plant has a chiller plant load. The method includes estimating an optimal combination of chiller plant equipment for meeting the chiller plant load. Estimating the optimal combination of chiller pla
A computerized method for controlling a chiller plant for cooling a building is provided. The chiller plant has a chiller plant load. The method includes estimating an optimal combination of chiller plant equipment for meeting the chiller plant load. Estimating the optimal combination of chiller plant equipment includes using binary optimization to determine at least two potential combinations of chiller plant equipment. Estimating the optimal combination of chiller plant equipment also includes using nonlinear optimization to determine a potential power consumption minimum for each of the at least two potential combinations. The method also includes controlling the chiller plant according to the estimated optimal combination of chiller plant equipment.
대표청구항▼
1. A computerized method for controlling a chiller plant for cooling a building, the chiller plant having a chiller plant load, the method comprising: estimating an optimal combination of chiller plant equipment for meeting the chiller plant load, wherein estimating the optimal combination of chille
1. A computerized method for controlling a chiller plant for cooling a building, the chiller plant having a chiller plant load, the method comprising: estimating an optimal combination of chiller plant equipment for meeting the chiller plant load, wherein estimating the optimal combination of chiller plant equipment comprises using binary optimization to determine at least two potential combinations of chiller plant equipment and using nonlinear optimization to determine a potential power consumption minimum for each of the at least two potential combinations; andcontrolling the chiller plant according to the estimated optimal combination of chiller plant equipment. 2. The method of claim 1, wherein using binary optimization comprises: identifying a first combination of devices to be turned; andidentifying at least a second combination of devices to be turned on,wherein each combination minimizes a function of a power consumption of the chiller plant and provides a cooling energy to satisfy the chiller plant load. 3. The method of claim 2, wherein a branch and bound method is used to identify the first combination of devices. 4. The method of claim 2, wherein identifying at least a second combination of devices comprises: determining whether a first device of the first combination is on or off;determining, if the first device is off, whether a second combination of a second device on and the first device off can provide the cooling energy to satisfy the chiller plant load;identifying the second combination, if the first device is off and if the second combination can provide the cooling energy to satisfy the chiller plant load;determining, if the first device is on, whether a third combination of the second device on and the first device on can provide the cooling energy to satisfy the chiller plant load;determining, if the first device is on, whether a fourth combination of a third device on, the second device off, and the first device on can provide the cooling energy to satisfy the chiller plant load;identifying the third combination, the fourth combination or both, if the first device is on and the third combination, the fourth combination, or both can provide the cooling energy to satisfy the chiller plant load. 5. The method of claim 4, wherein identifying at least a second combination of devices further comprises estimating the non-linear power consumption of at least one of the first combination, the second combination, the third combination, and the fourth combination using quadratic compensation. 6. The method of claim 1, wherein using nonlinear optimization comprises minimizing a function of a power consumption of the chiller plant using at least one of a Nelder-Mead method, a Generalized Reduced Gradient method, Sequential Quadratic Programming, a Steepest Descent method, and a Conjugate Gradient method. 7. A computerized method for controlling a chiller plant for cooling a building, the method comprising: identifying, at a processing circuit, a first combination of on/off statuses for a plurality of cooling devices using non-exhaustive binary optimization;identifying at least a second combination of on/off statuses for the plurality of cooling devices;identifying, for each of the first combination and at least a second combination, optimized operating setpoints for the plurality of cooling devices using a non-linear optimization;using the optimized operating setpoints identified with the non-linear optimization, estimating a likely energy consumption for the first combination of on/off statuses and at least a second combination of on/off statuses;comparing the estimated likely energy consumption for the first combination of on/off statuses and at least a second combination of on/off statuses to determine which combination of cooling devices to turn on; andcontrolling the chiller plant according to the determined combination of cooling devices to turn on. 8. The method of claim 7, wherein controlling the chiller plant according to the determined combination of cooling devices comprises: transmitting commands to the chiller plant using the on/off statuses of the determined combination of cooling devices to turn on. 9. The method of claim 8, wherein controlling the chiller plant according to the determined combination of cooling devices further comprises: transmitting the identified optimized operating setpoints to the chiller plant for the determined combination of cooling devices to turn on. 10. The method of claim 7, wherein the plurality of cooling devices comprises at least one chiller, at least one evaporator pump, at least one condenser pump, and at least one cooling tower. 11. The method of claim 7, wherein the first combination and at least a second combination are estimated to provide a cooling energy required to satisfy a chiller plant load. 12. The method of claim 7, wherein identifying at least a second combination of on/off statuses for the plurality of cooling devices comprises: determining whether a first device of the first combination is on or off;determining, if the first device is off, a second combination of a second device on and the first device off;determining, if the first device is on, a third combination of the second device on and the first device on;determining, if the first device is on, a fourth combination of a third device on, the second device off, and the first device on;identifying at least one of the second combination, the third combination, and the fourth combination when the second combination, the third combination, or the fourth combination is estimated to provide the cooling energy required to satisfy the chiller plant load. 13. The method of claim 12, wherein identifying at least a second combination of devices further comprises estimating the non-linear power consumption of at least one of the first combination, the second combination, the third combination, and the fourth combination using quadratic compensation. 14. The method of claim 12, wherein the first device consumes a least amount of energy and subsequent devices consume progressively greater amounts of energy. 15. The method of claim 7, wherein the operating setpoints comprise at least one of a chilled water temperature setpoint, a condenser water temperature setpoint, and a chilled water return temperature setpoint. 16. The method of claim 7, wherein binary optimization comprises a branch and bound method. 17. The method of claim 7, wherein non-linear optimization comprises at least one of a Nelder-Mead method, a Generalized Reduced Gradient method, Sequential Quadratic Programming, a Steepest Descent method, and a Conjugate Gradient method. 18. The method of claim 7, wherein the optimum operating setpoints minimize energy consumption of the chiller plant. 19. The method of claim 7, wherein the first combination and at least a second combination satisfy constraints on the chiller plant. 20. The method of claim 19, wherein the constraints comprise at least one of (a) operating the chiller plant with an energy consumption below a maximum energy consumption and (b) operating any one device with an energy consumption above a minimum energy consumption. 21. The method of claim 7, further comprising outputting an indication of the on/off statuses and optimum operating setpoints to at least one of a memory device, a user device, or another device on a building management system. 22. A controller for controlling a chiller plant for cooling a building, the chiller plant having a chiller plant load, the controller comprising: a processing circuit configured to estimate an optimal combination of chiller plant equipment for meeting the chiller plant load, wherein estimating the optimal combination of chiller plant equipment comprises using binary optimization to determine at least two potential combinations of chiller plant equipment and using nonlinear optimization to determine a potential power consumption minimum for each of the at least two potential combinations; andwherein the processing circuit is further configured to control the chiller plant according to the estimated optimal combination of chiller plant equipment. 23. The controller of claim 22, wherein using binary optimization comprises: identifying a first combination of equipment to be turned; andidentifying at least a second combination of equipment to be turned on,wherein each combination minimizes a function of a power consumption of the chiller plant and provides a cooling energy to satisfy the chiller plant load. 24. The controller of claim 23, wherein a branch and bound method is used to identify the first combination of equipment. 25. The controller of claim 23, wherein identifying at least a second combination of equipment comprises: determining whether a first device of the first combination is on or off;determining, if the first device is off, whether a second combination of a second device on and the first device off can provide the cooling energy to satisfy the chiller plant load;identifying the second combination, if the first device is off and if the second combination can provide the cooling energy to satisfy the chiller plant load;determining, if the first device is on, whether a third combination of the second device on and the first device on can provide the cooling energy to satisfy the chiller plant load;determining, if the first device is on, whether a fourth combination of a third device on, the second device off, and the first device on can provide the cooling energy to satisfy the chiller plant load;identifying the third combination, the fourth combination or both, if the first device is on and the third combination, the fourth combination, or both can provide the cooling energy to satisfy the chiller plant load. 26. The controller of claim 25, wherein identifying at least a second combination of devices further comprises estimating the non-linear power consumption of at least one of the first combination, the second combination, the third combination, and the fourth combination using quadratic compensation. 27. The controller of claim 22, wherein using nonlinear optimization comprises minimizing a function of a power consumption of the chiller plant using at least one of a Nelder-Mead method, a Generalized Reduced Gradient method, Sequential Quadratic Programming, a Steepest Descent method, and a Conjugate Gradient method.
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