基于ML的输电线路故障检测与分类集成方法

Muhammad Hayyan Bin Shahid, Akramul Azim
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引用次数: 0

摘要

输电线路故障是几乎所有电站都面临的最常见的故障。假设这些故障没有被及时发现。在这种情况下,它们可能导致多重损失,例如预计发电量的损失、预计时间的损失和经济损失。为了调查故障,工程师的系统方法首先是检测是否存在故障。如果在输电线路中检测到故障,应尽快进行分类。以下分类有助于维护团队识别故障类型:线路故障、线对线故障、双线故障、三线故障、单线对地故障、双线对地故障、三相故障和无故障。本文提出了利用机器学习技术的集成方法,将有助于工程师对传输线中的故障进行检测和分类。调查还训练和测试了多个ML分类器,以提供更好的建议。共享的研究将帮助用户找到预测传输线故障的最佳ML结果。因此,早期和准确的故障检测将提高安全性和可靠性,减少中断和停机时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Method For Fault Detection & Classification in Transmission Lines Using ML
Faults in a transmission line (TL) are the most common faults faced by almost every power station. Suppose these faults are not detected in time. In that case, they can result in multiple losses, such as a loss in an estimated power generation w.r.t predicted time and financial losses. In order to investigate the fault, the systematic approach of an engineer would be first to detect whether there is a fault or not. If a fault is detected in the transmission line, it should be classified as soon as possible. The following classifications would help the maintenance team identify the fault type: line fault, line-to-line fault, double line fault, triple line fault, single-line-to-ground fault, double line-to-ground fault, three-phase fault, and no fault. This paper proposes that the ensemble method, using the Machine Learning (ML) technique, will help the engineers detect and classify the faults in the transmission line. The investigation also trained and tested multiple ML classifiers to inform better recommendations. The shared research will help the user find the best possible ML results for predicting faults in the transmission line. Hence early and accurate fault detection will enhance safety and reliability and reduce interruption and downtime.
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