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Residential Demand Response Using Reinforcement Learning

机译:使用强化学习的住宅需求响应

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We present a novel energy management system for residential demand response. The algorithm, named CAES, reduces residential energy costs and smooths energy usage. CAES is an online learning application that implicitly estimates the impact of future energy prices and of consumer decisions on long term costs and schedules residential device usage. CAES models both energy prices and residential device usage as Markov, but does not assume knowledge of the structure or transition probabilities of these Markov chains. CAES learns continuously and adapts to individual consumer preferences and pricing modifications over time. In numerical simulations CAES reduced average end-user financial costs from $16%$ to $40%$ with respect to a price-unaware energy allocation.
机译:我们提出了一种用于住宅需求响应的新型能源管理系统。该算法名为CAES,可降低住宅的能源成本并简化能源使用。 CAES是一个在线学习应用程序,可隐式估计未来能源价格和消费者决策对长期成本的影响,并计划使用住宅设备。 CAES将能源价格和住宅设备使用情况都建模为马尔可夫模型,但不假设这些马尔可夫链的结构或转移概率是已知的。 CAES不断学习,并随着时间的推移适应个人消费者的喜好和价格调整。在数值模拟中,就不知价格的能源分配而言,CAES将最终用户的平均财务成本从16%降低到了40%。

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