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Intelligent maintenance frameworks of large-scale grid using genetic algorithm and K-Mediods clustering methods

机译:基于遗传算法和K-Medoids聚类方法的大型网格智能维护框架

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摘要

Large-scale power grids, especially smart grid systems, consist of a huge amount of complex computerized electronic devices, such as smart meters. A smart maintenance system is desired to schedule and send maintenance worker to locations where any computerized devices become faulty. A grid management system (GMS) is purposely designed in the way that the following three conditions are generally fulfilled: 1) all workers are working on full capacity everyday; 2) the highest severity level faulty devices are fixed the quickest; and 3) the overall traveling distance/time is minimized. In this study, two intelligent grid maintenance framework are proposed considering the above three conditioned based on two state-of-arts algorithms, namely, genetic algorithm and K-mediods clustering method, respectively. Five real-world datasets collected from five different local cities/counties in eastern China are adopted and applied to verify the effectiveness of the two proposed intelligent grid maintenance frameworks.
机译:大型电网,尤其是智能电网系统,由大量复杂的计算机化电子设备组成,例如智能电表。需要一种智能维护系统来安排维护工作人员并将其发送到任何计算机设备出现故障的位置。网格管理系统(GMS)的设计目的是通常满足以下三个条件:1)所有工人每天都在全力工作; 2)最高严重级别的故障设备被最快地修复; 3)总的行驶距离/时间最小化。本文基于遗传算法和K-方法聚类两种最先进的算法,结合以上三个条件提出了两种智能电网维护框架。采用并从中国东部的五个不同地方城市/县收集的五个实际数据集,以验证两个建议的智能电网维护框架的有效性。

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