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Data-driven Decision-making Strategies for Electricity Retailers:A Deep Reinforcement Learning Approach 被引量:4

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摘要 With the continuous development of the electricity market,the electricity retailers,as the intermediaries between producers and consumers,have emerged in some of the liberalized electricity markets.Meanwhile,the electricity retailer faces many increasingly significant challenges from the complexities and uncertainties in both the supply and consumption sides.This paper applies a data-driven decision-making strategy via Advantage Actor-Critic(A2C)and Deep Q-Learning(DQN)for the electricity retailers.The retailers’profits and consumers’costs are both taken into account.This study verifies that the applied data-driven methods can handle the decision-making problem as well as promote the profitability of retailers in the electricity market.Furthermore,A2C is more appropriate than DQN in our simulation.The effectiveness of the applied data-driven methods is validated by using real-world data.
出处 《CSEE Journal of Power and Energy Systems》 SCIE CSCD 2021年第2期358-367,共10页 中国电机工程学会电力与能源系统学报(英文)
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