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A plug-and-play home energy management algorithm using optimization and machine learning techniques

机译:使用优化和机器学习技术的即插即用家用能源管理算法

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A smart home is considered as an automated residential house that is provided with distributed energy resources and a home energy management system (HEMS). The distributed energy resources comprise PV solar panels and battery storage unit, in the smart homes in this study. In the literature, HEMSs apply optimization algorithms to efficiently plan and control the PV-storage, for the day ahead, to minimize daily electricity cost. This is a sequential stochastic decision making problem, which is computationally intensive. Thus, it is required to develop a computationally efficient approach. Here, we apply a recurrent neural network (RNN) to deal with the sequential decision-making problem. The RNN is trained offline, on the historical data of end-users' demand, PV generation, time of use tariff and optimal state of charge of the battery storage. Here, optimal state of charge trace is generated by solving a mixed integer linear program, generated from the historical demand and PV traces and tariffs, with the aim of minimizing daily electricity cost. The trained RNN is called policy function approximation (PFA), and its output is filtered by a control policy, to derive efficient and feasible day-ahead state of charge. Furthermore, knowing that there are always new end-users installing PV-storage systems, that don't have historical data of their own, we propose a computationally efficient and close-to-optimal plug-and-play planning and control algorithm for their HEMSs. Performance of the proposed algorithm is then evaluated in comparison with the optimal strategies, through numerical studies.
机译:智能家庭被视为自动住宅,提供分布式能源资源和家用能管理系统(HEMS)。分布式能源资源包括PV太阳能电池板和电池存储单元,在本研究中的智能家庭中。在文献中,HEMSS应用优化算法,以有效地规划和控制PV储存,以便最大限度地降低日常电力成本。这是一个顺序随机决策问题,这是计算密集的。因此,需要开发计算有效的方法。在这里,我们应用经常性神经网络(RNN)来处理连续决策问题。 RNN训练离线,在最终用户需求,光伏生成,使用时间关税和电池存储的最佳状态的历史数据上培训。这里,通过求解从历史需求和PV痕迹和关税产生的混合整数线性程序来产生最佳充电迹线,目的是最小化每日电力成本。训练的RNN被称为策略函数近似(PFA),其输出通过控制策略过滤,以导出有效和可行的日常充电状态。此外,知道有一个全新的最终用户安装PV-Storage系统,没有自己的历史数据,我们提出了一种计算上有效和近距离的即插即用规划和控制算法下摆。然后通过数值研究与最佳策略相比,评估所提出的算法的性能。

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