Grey Wolf Accretive Satisfaction Algorithm for Optimization of Residence Energy Management with Time and Device-based Preferences

Sara Ayub, Shahrin Bin Md. Ayob, Tan Chee Wei, Lubna Aziz
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Abstract

In residential energy management (REM), time of use (TOU) of appliances scheduling based on user-defined preferences is an essential task performed by the home energy management controller. This paper devised a robust REM technique that capable of monitoring and controlling residential loads within a smart home. The method is based on an improved binary grey wolf accretive satisfaction algorithm (GWASA), which is founded on four hypotheses that allow time-varying preferences to be quantifiable in terms of time and device-dependent features. Based on household appliances TOU, the absolute satisfaction derived from the preferences of appliance and power ratings, the GWASA can produce optimum energy consumption pattern that will give the customer maximum satisfaction at the predefined user budget. A cost per unit satisfaction index is also established to relate daily consumer expenses with the achieved satisfaction. Simulation results on two peak budgets from $1.5/day and $2.5/day are carried out to analyze the efficacy of GWASA. Accordingly, the result of each of the scenarios is compared with the result obtained from three other different algorithms, namely, BPSO, BGA, BGWO. The simulation results reveal that the proposed demand side residential management based on GWASA offers the least cost per unit satisfaction and maximum percentage satisfaction in each scenario.
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基于时间和设备偏好的住宅能源管理优化的灰狼增量满意算法
在住宅能源管理(REM)中,基于用户自定义偏好的家电使用时间(TOU)调度是家庭能源管理控制器的一项重要任务。本文设计了一种强大的REM技术,能够监测和控制智能家居中的住宅负荷。该方法基于改进的二元灰狼增加满意度算法(GWASA),该算法建立在四个假设的基础上,允许根据时间和设备相关特征对时变偏好进行量化。GWASA基于家用电器分时电价(TOU),即用户对电器的绝对满意程度和额定功率的偏好,产生最优的能耗模式,使用户在预先设定的用户预算内获得最大的满意度。还建立了单位满意度成本指数,将日常消费费用与达到的满意度联系起来。在1.5美元/天和2.5美元/天两个峰值预算下进行仿真,分析了GWASA的有效性。据此,将每种场景的结果与BPSO、BGA、BGWO三种不同算法的结果进行比较。仿真结果表明,提出的基于GWASA的需求侧住宅管理方案在每个场景下都具有最小的单位成本满意度和最大的百分比满意度。
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