Optimal Scheduling of Grid Supply and Batteries Operation in Residential Building: Rules and Learning Approaches

Alaa Selim, H. Mo, H. Pota
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Abstract

This article discusses and simulates a demand management algorithm in a building with a battery energy storage system (BESS) and on-grid supply scheduling using deep reinforcement learning algorithms (DRL) and rule-based controllers (Fuzzy logic). BESS is used for supplying the load profile and minimizing the electricity bills of the building. Deferrable loads of the building are controlled to reduce power consumption during peak time. Controllers used in this paper aim to optimize multi-objectives, including the cost of utility bills, state of health of battery systems (SOH), and reliability of the power source. First, this article works with optimizing BESS using the fuzzy logic controller and compares the results with DRL agent outputs. Secondly, commercial loads are modeled based on the deferrability index to be introduced into the optimization problem. Finally, the paper presents a model for controlling the battery and on-grid supply schedule, minimizing the annual electricity bill without draining the battery’s SOH and disturbing the residential comfort of household appliances.
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住宅建筑电网供电与电池运行的最优调度:规则与学习方法
本文使用深度强化学习算法(DRL)和基于规则的控制器(模糊逻辑),讨论并模拟了具有电池储能系统(BESS)和并网供电调度的建筑物的需求管理算法。BESS用于提供负载分布并最大限度地减少建筑物的电费。控制建筑物的延迟负荷,以减少高峰时段的电力消耗。本文使用的控制器旨在优化多目标,包括电费成本、电池系统健康状态(SOH)和电源可靠性。首先,本文使用模糊逻辑控制器对BESS进行优化,并将结果与DRL代理输出进行比较。其次,将可延期性指标引入到优化问题中,建立商业负荷模型。最后,本文提出了一个控制电池和并网供电计划的模型,在不消耗电池SOH和不影响家用电器居住舒适性的情况下,最大限度地减少年电费。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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