Maximize user rewards in distributed generation environments using reinforcement learning

Cleveland, OH(2011)

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摘要
In Smart Grid environments, with distributed generation, homes are encouraged to generate power and sell it back to utilities. Time of Use pricing techniques and the introduction of storage devices would greatly influence a user in deciding when to sell back power and how much to sell. Therefore, a study of sequential decision making algorithms that can optimize the total pay off for the user is necessary. In this paper, Reinforcement Learning is used to solve this optimization problem. The problem of determining when to sell back power is formulated as a Markov decision process and a near optimal strategy is chosen using policy iteration. The results show a significant increase of total rewards from selling back power with the proposed approach.
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关键词
markov processes,decision making,distributed power generation,learning (artificial intelligence),power distribution economics,power engineering computing,smart power grids,markov decision process,distributed generation environment,optimization problem,reinforcement learning,sequential decision making algorithms,smart grid environments,storage devices,distributed generation,machine learning,maximize user rewards,smart grid,time of use pricing,power generation,pricing,learning artificial intelligence,testing
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