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Scavenging differential evolution algorithm for smart grid demand side management

机译:智能电网需求侧管理的清除差分进化算法

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Demand side management (DSM) has gained a lot of attention in recent years as a result of increased deployment of alternative renewable energy resources in electric power grids. This paper presents a novel scavenging differential evolution algorithm which reuses unfit population agents in previous generations of a genetic algorithm. The performance of the proposed algorithm is compared to another popular evolutionary algorithm in literature: enhanced differential evolution (EDE). The cost minimization model consists of parameters which describe consumer energy cost savings for weekdays in Johannesburg using home energy management system (HEMS). The HEMS is incorporated with solar photovoltaic (PV) panel and plug-in electric vehicle (PHEV). Preliminary results show that the proposed algorithm outperforms EDE with regard to flattening consumer energy usage profile and minimizing discomfort related to load scheduling.
机译:近年来,由于在电网中增加了可替代可再生能源的部署,需求侧管理(DSM)引起了很多关注。本文提出了一种新颖的清除差分进化算法,该算法在遗传算法的前几代中重用了不合适的种群代理。将该算法的性能与文献中另一种流行的进化算法进行了比较:增强差分进化(EDE)。成本最小化模型包含一些参数,这些参数描述了使用家庭能源管理系统(HEMS)在约翰内斯堡工作日节省的消费者能源成本。 HEMS与太阳能光伏(PV)面板和插电式电动汽车(PHEV)结合在一起。初步结果表明,在使用户能源使用曲线平坦化并最大程度减少与负荷调度有关的不适方面,该算法优于EDE。

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