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Indirect Customer-to-Customer Energy Trading With Reinforcement Learning

机译:具有强化学习的间接客户间能源交易

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摘要

In this paper, we explore the role of emerging energy brokers (middlemen) in a localized event-driven market (LEM) at the distribution level for facilitating indirect customer-to-customer energy trading. This proposed LEM does not aim to replace any existing energy service or become the best market model; but instead to diversify the energy ecosystem at the edge of distribution networks. In light of this philosophy, the market mechanism will provide additional options for customers and prosumers who have the willingness to directly participate in the retail electricity market occasionally, on top of using existing utility services. It also helps in improving market efficiency and encouraging local-level power balance, while taking into account the characteristics of customers' behavior. The energy trading process will be built as a Markov decision process with some reinforcement learning and data-driven methods applied. Some economic concepts, like search friction, related to this kind of typical search cost involved market model are also discussed.
机译:在本文中,我们探讨了新兴能源经纪人(中间商)在分销级别的本地事件驱动市场(LEM)中的作用,以促进间接的客户到客户的能源交易。建议的LEM并非旨在取代任何现有的能源服务或成为最佳市场模型;而是使配电网络边缘的能源生态系统多样化。根据这一理念,市场机制将为有意在使用现有公用事业服务的基础上偶尔直接参与零售电力市场的客户和生产者提供更多选择。在考虑到客户行为的特征的同时,它还有助于提高市场效率并促进地方权力平衡。能源交易过程将构建为马尔可夫决策过程,并应用一些强化学习和数据驱动方法。还讨论了与这种典型的涉及搜索成本的市场模型有关的一些经济概念,例如搜索摩擦。

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