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摘要:
The uncertainty of renewable energy and demand response brings many challenges to the microgrid energy management. Driven by the recent advances and applications of deep reinforcement learning a microgrid energy management strategy, i.e., upper confidence bound based advantage actor-critic (A3C), is proposed to utilize a novel action exploration mechanism to learn the power output of wind power generation, the price of electricity trading and power load. The simulation results indicate that the UCB-A3C learning based energy management strategy is better than conventional PPO, actor critical and A3C algorithm.
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来源 :
FRONTIERS IN ENERGY RESEARCH
ISSN: 2296-598X
年份: 2022
卷: 10
3 . 4
JCR@2022
3 . 4 0 0
JCR@2022
JCR分区:3
中科院分区:4
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