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Energy Management of Smart Home with Home Appliances Energy Storage System and Electric Vehicle: A Hierarchical Deep Reinforcement Learning Approach

机译:带有家用电器储能系统和电动汽车的智能家居的能源管理:分层深度强化学习方法

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摘要

This paper presents a hierarchical deep reinforcement learning (DRL) method for the scheduling of energy consumptions of smart home appliances and distributed energy resources (DERs) including an energy storage system (ESS) and an electric vehicle (EV). Compared to Q-learning algorithms based on a discrete action space, the novelty of the proposed approach is that the energy consumptions of home appliances and DERs are scheduled in a continuous action space using an actor–critic-based DRL method. To this end, a two-level DRL framework is proposed where home appliances are scheduled at the first level according to the consumer’s preferred appliance scheduling and comfort level, while the charging and discharging schedules of ESS and EV are calculated at the second level using the optimal solution from the first level along with the consumer environmental characteristics. A simulation study is performed in a single home with an air conditioner, a washing machine, a rooftop solar photovoltaic system, an ESS, and an EV under a time-of-use pricing. Numerical examples under different weather conditions, weekday/weekend, and driving patterns of the EV confirm the effectiveness of the proposed approach in terms of total cost of electricity, state of energy of the ESS and EV, and consumer preference.
机译:本文提出了一种层次化深度强化学习(DRL)方法,用于调度智能家电和包括能量存储系统(ESS)和电动汽车(EV)的分布式能源(DER)的能耗。与基于离散动作空间的Q学习算法相比,该方法的新颖之处在于,使用基于行为者-批评的DRL方法在连续动作空间中调度家用电器和DER的能耗。为此,提出了一个两级DRL框架,其中,根据消费者的首选设备调度和舒适性级别将家用电器调度到第一级,而在第二级使用ESS和EV的充电和放电时间表来计算。从第一级开始的最佳解决方案以及消费者的环境特征。在使用时间定价的情况下,在带有空调,洗衣机,屋顶太阳能光伏系统,ESS和EV的单个房屋中进行了模拟研究。在不同的天气条件,工作日/周末和电动汽车的驾驶模式下的数值示例证实了该方法在总电力成本,ESS和EV的能量状态以及消费者偏好方面的有效性。

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