Heterogeneous Multiobjective Differential Evolution for Electric Vehicle Charging Scheduling

Weili Liu, Yue-jiao Gong, Wei-neng Chen, J. Zhong, Sang-Woon Jean, Jun Zhang
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引用次数: 1

Abstract

With the proliferation of electric vehicles, the Electric Vehicle Charging Scheduling (EVCS) becomes a critical issue in the modern transportation systems. The EVCS problem in practice usually contains several important but conflicting objectives, such as minimizing the time cost, minimizing the charging expense, and maximizing the final state of charge. To solve the multiobjective EVCS (MOEVCS) problem, the weighted-sum approaches require expertise to predefine the weights, which is inconvenient. Meanwhile, traditional Pareto-based approaches require users to frequently select the result from a large set of trade-off solutions, which is sometimes difficult to make decisions. To address these issues, this paper proposes a Heterogeneous Multiobjective Differential Evolution (HMODE) with four heterogeneous sub-populations. Specially, one is for the multiobjective optimization and the other three are single-objective sub-populations that separately optimize three objectives. These four sub-populations are evolved cooperatively to find better trade-off solutions of MOEVCS. Besides, HMODE introduces an attention mechanism to the knee and bound solutions among non-dominated solutions of the first rank to provide more representative trade-off solutions, which facilitates decision makers to select their preferred results. Experimental results show our proposed HMODE outperforms state-of-the-art methods in terms of selection flexibility and solution quality.
电动汽车充电调度的异构多目标差分进化
随着电动汽车的普及,电动汽车充电调度问题成为现代交通系统中的一个关键问题。实践中的EVCS问题通常包含几个重要但又相互冲突的目标,如时间成本最小化、充电费用最小化和最终充电状态最大化。在求解多目标EVCS (MOEVCS)问题时,加权和方法需要专业知识来预先定义权重,这很不方便。与此同时,传统的基于帕累托的方法要求用户经常从大量权衡解决方案中选择结果,这有时很难做出决定。为了解决这些问题,本文提出了一个包含四个异质亚种群的异质多目标差异进化(HMODE)模型。其中一个是多目标优化,另外三个是单目标子种群,分别对三个目标进行优化。这4个亚种群协同进化,以寻找更好的MOEVCS权衡方案。此外,HMODE引入了对第一阶非支配解中的膝部解和结合部解的关注机制,提供了更具代表性的权衡解,便于决策者选择自己喜欢的结果。实验结果表明,我们提出的HMODE在选择灵活性和解的质量方面优于目前最先进的方法。
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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