An improved GA approach for distribution system outage and crew scheduling with Google maps integration

Jaw-Shyang Wu, Tsung-En Lee, Chun Lee, Chia-Pei Syu, Shung-Der Su
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Abstract

In this paper an improved genetic algorithm (GA) approach is proposed to find the optimal solution of crew and outage scheduling of distribution systems with integration of Google maps. Various types of engineering teams with different get-in and get-off times to the fields are considered. The fitness function is to minimize the engineering days, the outage loading, the difference of working time among the crews, and the distances of routings. Improved crossover rules and a weighted dynamic mutation method are presented. The transportation time and distance obtained from Google-Maps are integrated in the scheduling approach. Smartphones are exploited in the fields to communicate with the dispatching center with the scheduling displayed on the Google-Maps. Simulation results for a sample distribution system are performed to demonstrate the effectiveness of the study.
一种改进的GA方法,用于分配系统中断和与谷歌地图集成的机组调度
本文提出了一种改进的遗传算法(GA),用于寻找集成谷歌图的配电系统机组和停机调度的最优解。考虑了不同类型的工程团队,他们进入和离开油田的时间不同。适应度函数是使工程天数、停运负荷、机组人员工作时间差和线路距离最小。提出了一种改进的交叉规则和加权动态变异方法。将谷歌地图获取的交通时间和距离整合到调度方法中。在现场,智能手机可以通过谷歌地图显示的调度信息与调度中心进行通信。仿真结果表明了该方法的有效性。
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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