METHOD AND DEVICE FOR PREDICTING AN ENERGY SERVICE OFFERING AND SOFTWARE PROGRAM PRODUCT
20230299584 · 2023-09-21
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
H02J2310/12
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
H02J3/28
ELECTRICITY
H02J2310/60
ELECTRICITY
International classification
H02J3/14
ELECTRICITY
H02J3/00
ELECTRICITY
Abstract
A predictor that projects the service offering available at a point in time on the basis of the agreed technical and contractual rules is provided. The predictor further makes the same available to the operating and scheduling systems of the industrial company and optimizes the prediction parameters by observing and comparing the real situation with the calculated situation, or else indicates unused potential.
Claims
1. A method for predicting an available energy service offer or existing energy service limits at a time or over a period of time, the method comprising: ascertaining a maximum available supply power at the time or in the period of time; modelling individual conditions that influence the energy service offer; calculating a superposition by overlaying the individual conditions; and ascertaining a power range at the time or the period of time.
2. The method of claim 1, wherein the conditions that influence the energy service offer are a limitation based on an atypical grid use that takes place at regularly occurring recurrent times.
3. The method of claim 1, wherein service limits that adversely affect use of the maximum service offer are taken into consideration, and wherein an exceeding of a previous maximum service offer leads to adaptation of previously set conditions.
4. The method of claim 1, wherein a condition that influences the energy service offer is an employment of available energy stores or a possibility of internal supplementation of the energy service offer.
5. The method of claim 1, wherein the modelled conditions that influence the service offer are weighted.
6. The method of claim 5, wherein the weighting of the modelled conditions that influence the service offer is dynamically applied so that the condition is provided with a higher weighting with increasing proximity to the time of execution.
7. The method of claim 1, wherein the modelled conditions that influence the service offer are applied based on logic rules.
8. The method of claim 1, wherein an actually available power range at the time or the period of time is compared with the power range ascertained by prediction, and wherein a difference in the comparison, together with events that influence the power range, is fed back via a correction function.
9. The method of claim 8, wherein, when an expected supply by a store or an internal electricity generator at the time or the period of time is not achieved, a weighting of the modelled conditions that influence the service offer is decreased for future predictions.
10. A computer program product for predicting an available energy service offer or existing energy service limits at a time or over a period of time, wherein the computer program product, when executed on a device, causes the device to: ascertain a maximum available supply power at the time or in the period of time; model individual conditions that influence the energy service offer; calculate a superposition by overlaying the individual conditions; and ascertain a power range at the time or the period of time.
11. (canceled)
12. A device for predicting an available energy service offer (32) or existing energy service limits at a time or over a period of time, the device comprising: a rule generator configured to model individual conditions that influence the energy service offer; a predictor configured to: calculate a superposition based on a maximum available supply power at the time or in the period of time; and overlay the individual conditions with a power range available at the time or the period of time.
13. The device of claim 12, wherein the rule generator is configured to take into consideration a limitation based on an atypical grid use that takes place at regularly occurring recurrent times for the individual conditions that influence the energy service offer.
14. The device of claim 12, wherein the rule generator is configured to take into consideration service limits that adversely affect use of a maximum service offer for the individual conditions that influence the energy service offer, and wherein an exceeding of a previous maximum service offer is configured to lead to an adaptation of the previously set conditions.
15. The device of claim 12, wherein the rule generator is configured to take into consideration that the available energy service offer is influenced by an internally connectable energy supply through an employment of available previously stored energy or internal supplementation of the energy service offer by power generation.
16. The device of claim 12, wherein the the modelled conditions that influence the service offer are weighted.
17. The device of claim 16, wherein the rule generator is configured to dynamically apply the weighting of the modelled conditions so that a condition is provided with a higher weighting with increasing proximity to a time of execution.
18. The device of claim 12, wherein the rule generator is configured to apply the modelled conditions based on logic rules.
19. The device of claim 12, further comprising: a corrector configured to compare, by prediction, an actually available power range at the time or the period of time with the power range ascertained for the time or the period of time, and wherein a difference in the comparision, together with events that influence the power range, are configured to be fed back to the rule generator.
20. The device of claim 19, wherein the corrector is further configured to detect a difference between an expected supply and an actual supply by a store or an internal electricity generator at the time or the period of time, and wherein a weighting of the modelled conditions that influence the service offer is configured to be decreased for future predictions.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0025] The disclosure is also described by the figures, in which:
[0026]
[0027]
[0028]
DETAILED DESCRIPTION
[0029]
[0030] The first graph 11 shows a constant maximum supply power Pmax, as agreed with the EVU; in the area 112, the user is “in the green area”, where it complies with its part of the contract with the energy supplier. As soon as consumption moves into the area 111, the actually guaranteed supply power Pmax is exceeded, which may lead to disadvantages, be they of a technical character, if the service offer of the electricity grid is no longer adequate, or of a financial nature due to penalty levies on the electricity price.
[0031] Graph 12 shows a seasonal and daytime limitation in accordance with a contractual model “atypical grid use”, that is to say service limitation during daily or otherwise regularly recurring predictable peak times t1, t2, t3. It shows not the power consumption that has actually taken place or is actually to be expected, but rather the energy level that the energy supplier is willing or able to deliver at said time. Here too, the area 122 shows the permitted usage area and 121 shows the excess. These may be recurring events (evening) or days with peak events that mean that the behavior of the subscribers in the electricity supply grid changes and that cause the electricity supplier to have to control the drawing of power as appropriate.
[0032] Graph 13 shows avoidance of load peaks based on a high annual total amount of energy according to the contractual model “intensive grid use”. Graph 13 also introduces a minimum draw amount 133. At the time t4, unplanned electricity consumption 135 now occurs, for example, which leads to the available amount of power being exceeded. As a consequence, the minimum threshold is raised to reach the limit for annual hours of use (7000 h) after the previously obtained maximum power is exceeded at this time t4. Not only is a maximum supply power Pmax indicated here, but also a minimum draw amount P(Emin), and so the intended consumption 132 is between excess 131 and shortfall 133.
[0033] Further margins may be obtained through the employment of private stores or the internal generation of one's own electricity, for example as a result of the installation of solar cells or wind power installations, as indicated in the bottom graph 14. If the externally supplied power is exceeded internally, or the internally available power is reduced as a result of a need to recharge, these surpluses may also be used to fill the store, 141, in order to supply the thus stored energy to the system in question again as required 143. Applicable values are sometimes not as easy to ascertain, depending on the performance of the electricity generator, for example the presence of sufficient wind in the case of wind power, or the same for solar cells. The delivery of energy held in a store does not occur linearly either, but rather according to the technical properties of the store that is used.
[0034] Further conditions may arise e.g. from participation in contractual models for providing balancing energy (short-term/brief load shedding), employment of private power stations or participation in energy trade.
[0035] An important consideration in this case is that not only is the maximum drawable power significant here but also a possible minimum power to be drawn.
[0036] After the individual conditions have been modelled, superposition is carried out, which involves the individual conditions for each time being overlaid and in this way a power range 32 being ascertained, between the minimum power 33 and the maximum power 31. This result is shown by way of illustration in
[0037] In an advantageous configuration of the disclosure, the individual conditions may be provided with weightings. A decreased weighting for the power of a store would be conceivable, because here there are degrees of freedom with regard to the use, and logic rules may be applied. Condition B makes sense only if A is satisfied, but not C. An example would be that a store may be taken into consideration in the calculations of the service offer only if it has also been able to be charged beforehand.
[0038] A dynamic, (e.g., time-dependent), weighting (e.g., values that are closer in time have greater weight) makes sense in particular if the conditions become “harder” with increasing proximity to the time of execution, because, e.g., a probability of a partial service being available is substantiated, in a similar manner to a “sales funnel”.
[0039] The service predictor may be used as indicated in
[0040] In a refined form, the circumstances that are actually observed are fed back 319 to the predictor 311 with the aim of optimizing in particular the weightings in a control loop.
[0041] To this end, the events that are actually observed are fed back to the predictor 311 via a correction function 312 so as to achieve an optimization. This may be done, e.g., in the form that a failure in the expected supply by the store decreases the weighting thereof for future predictions. Another example would be that if, for example, the conditions for the “intensive grid use” may no longer be achieved in an appropriate manner, the weighting of this contractual model is set to zero.
[0042] A final example would be the need to purchase more power in the short term because the prediction was incorrect.
[0043] A particularly advantageous embodiment of the correction function is obtained for a large number of rule and weighting changes (for example, as a result of participation in energy trade) through the use of machine learning in conjunction with a neural network, for example in a (trade) scenario in which constantly changing probabilities would arise for the available power.
[0044] One advantage of the disclosure is making the advantages of dynamic EVU contractual models continuously available in industrial applications and reducing the need to hold large reserves as a result of uncertainty.
[0045] This is made possible by automated ascertainment of the service limits available at times t1, t2, . . . , even in the case of multiple and/or more complex contractual models, or trade scenarios in which changing powers with different probability of availability need to be taken into consideration. In particular in the last scenario, employing feedback based on machine learning in conjunction with a neural network is a useful extension.
[0046] Advantages arise from additional up-to-date functions for products such as “power rate”, “energy suite”, or energy storage solutions.
[0047] It is to be understood that the elements and features recited in the appended claims may be combined in different ways to produce new claims that likewise fall within the scope of the present disclosure. Thus, whereas the dependent claims appended below depend on only a single independent or dependent claim, it is to be understood that these dependent claims may, alternatively, be made to depend in the alternative from any preceding or following claim, whether independent or dependent, and that such new combinations are to be understood as forming a part of the present specification.
[0048] While the present disclosure has been described above by reference to various embodiments, it may be understood that many changes and modifications may be made to the described embodiments. It is therefore intended that the foregoing description be regarded as illustrative rather than limiting, and that it be understood that all equivalents and/or combinations of embodiments are intended to be included in this description.