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Optimized energy consumption model for smart home using improved differential evolution algorithm

机译:利用改进的差分演化算法优化智能家庭的优化能耗模型

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This paper proposes an improved enhanced differential evolution algorithm for implementing demand response between aggregator and consumer. The proposed algorithm utilizes a secondary population archive, which contains unfit solutions that are discarded by the primary archive of the earlier proposed enhanced differential evolution algorithm. The secondary archive initializes, mutates and recombines candidates in order to improve their fitness and then passes them back to the primary archive for possible selection. The capability of this proposed algorithm is confirmed by comparing its performance with three other well-performing evolutionary algorithms: enhanced differential evolution, multi objective evolutionary algorithm based on dominance and decomposition, and non-dominated sorting genetic algorithm III. This is achieved by testing the algorithms' ability to optimize a multi-objective optimization problem representing a smart home with demand response aggregator. Shiftable and non-shiftable loads are considered for the smart home which model energy usage profile for a typical household in Johannesburg, South Africa. In this study, renewable sources include battery bank and rooftop photovoltaic panels. Simulation results show that the proposed algorithm is able to optimize energy usage by balancing load scheduling and contribution of renewable sources, while maximizing user comfort and minimizing peak-to-average ratio. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了一种改进的增强差分演化算法,用于实现聚合器与消费者的需求响应。所提出的算法利用次级人口档案,其中包含初级档案的初步提高差分演进算法丢弃的不适合的解决方案。次要归档初始化,突变和重新组合候选物,以提高其健身,然后将它们传递回主要归档以进行可能选择。通过将其性能与三种其他良好的进化算法进行比较来确认该提出的算法的能力:基于优势和分解的增强差分演化,多目标进化算法,以及非主导分类遗传算法III。这是通过测试算法优化代表具有需求响应聚合器的智能家庭的多目标优化问题的算法的能力来实现的。智能家庭考虑了可移动和不可移动的负载,该智能家庭为南非约翰内斯堡典型家庭模拟能源使用简介。在这项研究中,可再生来源包括电池组和屋顶光伏板。仿真结果表明,该算法能够通过平衡负载调度和可再生源的贡献来优化能源使用,同时最大化用户的舒适度并最小化峰值平均比率。 (c)2019 Elsevier Ltd.保留所有权利。

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