Fault detection and localization based on Decision Tree and Support vector machine algorithms in electrical power transmission network

Nouha Bouchiba, A. Kaddouri
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Abstract

This paper introduces an application of machine learning algorithms. In fact, support vector machine and decision tree approaches are studied and applied to compare their performances in detecting, classifying, and locating faults in the transmission network. The IEEE 14-bus transmission network is considered in this work. Besides, 13 types of faults are tested. Particularly, the one fault and the multiple fault cases are investigated and tested separately. Fault simulations are performed using the SimPowerSystems toolbox in Matlab. Basing on the accuracy score, a comparison is made between the proposed approaches while testing simple faults, on the one hand, and when complicated faults are integrated, on the other hand. Simulation results prove that the support vector machine technique can achieve an accuracy of 87% compared to the decision tree which had an accuracy of 53% in complicated cases.
基于决策树和支持向量机算法的输电网故障检测与定位
本文介绍了机器学习算法的一个应用。实际上,研究并应用了支持向量机和决策树方法来比较它们在输电网故障检测、分类和定位方面的性能。在这项工作中考虑了IEEE 14总线传输网络。此外,还测试了13种故障类型。具体来说,对单个故障和多个故障分别进行了研究和测试。使用Matlab中的SimPowerSystems工具箱进行故障仿真。在准确度评分的基础上,比较了所提方法在测试简单故障和集成复杂故障时的效果。仿真结果表明,在复杂情况下,支持向量机技术的准确率达到87%,而决策树的准确率为53%。
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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