Multi‐objective electrical demand response policy generation considering customer response behaviour learning: An enhanced inverse reinforcement learning approach
Autor: | Junhao Lin, Yan Zhang, Shuangdie Xu, Haidong Yu |
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Jazyk: | angličtina |
Rok vydání: | 2021 |
Předmět: |
Power system management
operation and economics Direct energy conversion and energy storage Data handling techniques Power engineering computing Machine learning (artificial intelligence) Distribution or transmission of electric power TK3001-3521 Production of electric energy or power. Powerplants. Central stations TK1001-1841 |
Zdroj: | IET Generation, Transmission & Distribution, Vol 15, Iss 23, Pp 3284-3301 (2021) |
Druh dokumentu: | article |
ISSN: | 1751-8695 1751-8687 |
DOI: | 10.1049/gtd2.12260 |
Popis: | Abstract Demand response (DR) is an effective load management method. To attract customers to participate, DR policies need to both satisfy customers' individual DR habits and be economically profitable. However, customers’ individual DR habits are hard to be formulated with few hypotheses when other objectives are simultaneously considered. To tackle this challenge, a novel DR behavioural learning method is proposed. We learn customers’ DR habits by an inverse reinforcement learning (IRL) method to reduce the subjectivity in DR model formulation. Meanwhile, in contrast to traditional learning‐based methods, the proposed method can adapt to multiple DR objectives more than just following customers’ DR habits, like obtaining higher economic revenues. Additionally, we consider the diversity and changes of customer DR behaviour patterns and offer an enhancement for the proposed DR behavioural learning method via building a DR pattern clustering and inference module. The proposed method can work with customer‐side energy storage systems to diversify the DR policies and make the DR behaviours more flexible. Case studies show the proposed method can reduce about 10–20% behavioural learning deviations than the compared model‐based methods, while daily charges of the proposed method can be further reduced by over 4% than the compared supervised‐learning‐based methods. |
Databáze: | Directory of Open Access Journals |
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