Software development of optimal substation ground grid design based on genetic algorithm and pattern search

Qianzhi Zhang, Xuan Wu
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引用次数: 10

Abstract

Substation ground system serves to safety of personnel and as major equipment during earth faults, which deserves considerable attentions. Basic substation safety assessment quantities include ground grid resistance, mesh touch potential and step potential, moreover, optimal design of substation ground system should consider both safeness and cost. To fill the lack of such suitable and economical optimal design software in North American industry, a software package coded in MATLAB is developed and its core algorithm and main features are introduced in this paper. A novel hybrid GA-PS optimization or two-steps optimization method is developed, in which Genetic Algorithm (GA) is used firstly to search an approximate start point range for the further optimal searching, followed by Pattern Search (PS) to find the final optimal result. This software can give analysis of ground grid safety performance and is able to recommend optimal grid design for given safety constraints. In order to make sure the accuracy of this software, the results of grid safety assessment obtained here are also compared with the results calculated by using worldwide used software WinIGS.
基于遗传算法和模式搜索的变电站地网优化设计软件开发
变电站接地系统作为发生接地故障时的主要设备,对人员安全起着重要的作用,值得重视。变电站的基本安全评价量包括接地网电阻、网格接触电位和阶跃电位,变电站接地系统的优化设计应同时考虑安全性和成本。为了弥补北美工业中缺乏这种合适且经济的优化设计软件的不足,本文开发了一个用MATLAB编写的软件包,并介绍了其核心算法和主要特点。提出了一种新的混合GA-PS优化或两步优化方法,该方法首先使用遗传算法(GA)搜索一个近似的起始点范围进行进一步的优化搜索,然后使用模式搜索(PS)找到最终的最优结果。该软件可以对地网的安全性能进行分析,并能够在给定的安全约束条件下推荐最优的地网设计。为了保证该软件的准确性,还将本文得到的电网安全评价结果与国际通用的WinIGS软件计算结果进行了比较。
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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