ADAPTIVE CONTROL OF ELECTRICITY CONSUMPTION
20220294220 · 2022-09-15
Inventors
Cpc classification
Y02B70/3225
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
H02J3/144
ELECTRICITY
H02J3/14
ELECTRICITY
H02J2310/52
ELECTRICITY
H02J2310/64
ELECTRICITY
Y04S20/222
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
G05B2219/2639
PHYSICS
H02J3/003
ELECTRICITY
International classification
H02J3/14
ELECTRICITY
Abstract
A method for controlling a process that draws power from an electrical power source operates by obtaining time-related electrical demand data from the electrical power source and adaptively adjusting at least one control parameter in a control algorithm for the process to reduce the cost of the electrical energy consumed. The time-related electrical demand data indicates at least diurnal variation, and optionally seasonal variation, in electrical power demand. The time-related electrical power demand data may also include real-time electrical power demand data from the electrical power source.
Claims
1. A method for controlling a process that draws power from an electrical power source, comprising the steps of: obtaining time-related electrical demand data from the electrical power source; and adaptively adjusting at least one control parameter in a control algorithm for the process to reduce the cost of the electrical energy consumed.
2. The method of claim 1, wherein: the time-related electrical demand data indicates diurnal variation in electrical power demand.
3. The method of claim 1, wherein: the time-related electrical demand data indicates seasonal variation in electrical power demand.
4. The method of claim 2, wherein: the time-related electrical demand data further indicates seasonal variation in electrical power demand.
5. The method of claim 1, wherein: the time-related electrical demand data is real-time data from the electrical power source.
6. The method of claim 1, wherein: the step of adaptively adjusting at least one control parameter maximizes energy consumption during periods of low electrical demand at the electrical power source.
7. A system for controlling a process that draws power from an electrical power source, comprising: a plurality of devices for applying electrical power from the electrical power source to the process, each of the devices having a controller, a means for applying the electrical power as directed by the controller, and a sensor arranged to supply a feedback signal to the controller regarding the application of power; and a central controller, in communication with each controller of the plurality of devices, the central controller having a control algorithm implemented therein, the control algorithm based at least upon data provided to the central controller by each controller of the plurality of devices.
8. The system of claim 7, wherein the control algorithm implemented on the central controller uses a model of time-related electrical energy demand data as an input for the control algorithm.
9. The system of claim 7, wherein the control algorithm implemented on the central controller uses real-time electrical energy demand data from the electrical power source as an input for the control algorithm.
10. The system of claim 8, wherein the control algorithm implemented on the central controller uses real-time electrical energy demand data from the electrical power source as an input for the control algorithm.
11. The method of claim 2, wherein: the step of adaptively adjusting at least one control parameter maximizes energy consumption during periods of low electrical demand at the electrical power source.
12. The method of claim 3, wherein: the step of adaptively adjusting at least one control parameter maximizes energy consumption during periods of low electrical demand at the electrical power source.
13. The method of claim 4, wherein: the step of adaptively adjusting at least one control parameter maximizes energy consumption during periods of low electrical demand at the electrical power source.
14. The method of claim 5, wherein: the step of adaptively adjusting at least one control parameter maximizes energy consumption during periods of low electrical demand at the electrical power source.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0013] A better understanding of the inventive concept will be had by reference to the appended drawings, wherein identical reference numbers identify identical parts and wherein:
[0014]
[0015]
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DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS
[0020] As an illustrative example only,
[0021] As is well-known, the demand for electrical power in most locations has a natural variation on a diurnal and seasonal basis.
[0022] An important observation about the electrical demand curve is that the electrical grid cannot store energy. As demand rises, additional electrical energy needs to enter the grid from the suppliers, including additional suppliers. If the grid operates efficiently, each new marginal unit that is added to the grid enters at a per unit price that at least matches, if not exceeds, the unit price of the most recently added marginal unit. Assuming that to be the case, the demand curve of
[0023] In a first aspect of the inventive concept, a controller using two point control is provided, for adaptive control, with an electrical energy demand curve as depicted in
[0024] Just before noon, the temperature of the pipeline has dropped enough that the bottom setpoint is reached and energy is needed to prevent frost. Unfortunately, the energy demand/cost is at or near a local maximum, so the base setpoint is used to add a short burst of necessary, but not inexpensive, electrical energy. This avoids the frost issue and when the base setpoint temperature is reached, power is again turned off.
[0025] With power turned off, the temperature of the pipeline again declines, with the rate of decline being influenced by local conditions around the pipeline. In this case, the bottom setpoint is reached about when the late afternoon local minimum of electrical demand/price is reached. Rather than advancing the setpoint to the high setpoint used between midnight and 6 am, an intermediate setpoint between the base setpoint and the high setpoint is used, so that the less expensive energy is used to raise the pipeline temperature high enough to hold through the evening local maximum.
[0026] When heat is again required, the evening local maximum has passed and energy demand/cost is on a strong downward slope, headed for the overnight local minimum. Just as a high setpoint was used to warm the pipeline to the high setpoint during the overnight minimum, the pattern repeats and the control algorithm, aided by a model of the diurnal pattern, has adaptively reduced the cost of maintaining temperature in the pipeline.
[0027] Attention is now directed for illustrative purposes to
[0028] In an ideal version of the embodiment, a database of historic diurnal energy demand curves, based on the date, is used to implement the algorithm, and, in the most ideal version of the embodiment, a real time view of the energy demand, including trending slope information, is used to feed the controller for setpoint adjustments.
[0029] While the inventive concept is described as implemented on a system of sequentially-arranged thermostats to control temperature in a pipeline, it will be understood by one of skill in the art that the same concept may be used to adaptively control electrical energy consumption in any process that has the ability to “reservoir” the work provided by the electrical energy for release over time, by adjusting a parameter that controls the amount of energy being demanded from the grid. Some of the potential applications include the maintenance of temperature in a pool, a central water heating system, a home compressor, charging of batteries, either directly or in a device such as a cell phone, or a pump for circulating water. The main issue is a tolerance of the system to altering the level of the control value or the time slot.