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Domain Randomization for Demand Response of an Electric Water Heater

机译:电热热水器需求响应的域随机化

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摘要

Thermostatically Controlled Loads (TCLs) provide a source of demand flexibility, and are often considered a good source for Demand Response (DR) applications. Due to their heterogeneity, and as such a lack of dynamics models, Reinforcement Learning (RL) is often used to exploit this flexibility. Unfortunately, RL requires exploratory interaction with the TCL, resulting in a period of potential discomfort for the users. We present an approach to reduce this exploratory time by pre-training the RL-agent. Domain randomization is used to facilitate knowledge transfer. We evaluate the pre-training potential in a DR energy arbitrage scenario with an Electric Water Heater (EWH). Our experiments show that a priori knowledge about EWH dynamics can be used to initialize and improve the control policy. In our experiments, pre-training attributes to 8.8% additional cost savings, compared to starting from scratch.
机译:恒温控制负载(TCLS)提供了需求灵活性的来源,并且通常被认为是需求响应(DR)应用的好源。由于它们的异质性,并且由于这种缺乏动力学模型,钢筋学习(RL)通常用于利用这种灵活性。不幸的是,RL需要与TCL进行探索性互动,导致用户潜在的不适。我们提出了一种通过预先培训RL-Agent来减少这种探索时间的方法。域随机化用于促进知识转移。我们评估DR能源套利情景中的训练潜力,电热水器(EWH)。我们的实验表明,关于EWH动态的先验知识可用于初始化和改进控制策略。在我们的实验中,与从头开始开始,预先训练属性额外的成本节省8.8%。

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