Classification and Analysis of Power System Faults in IEEE-14 Bus System using Machine learning Algorithm

Praveen Kumar, Baidyanath Bag, N. Londhe, Anurag Tikariha
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Abstract

The complexity in the Power transmission and distribution sectors is increasing day by day with a continuous increase in power demand. Due to the increased complexity, the frequency of symmetrical and unsymmetrical fault has significantly increased, leading to frequent tripping of circuit Breakers. Due to which the reliability and quality provided at the consumer end are jeopardizing, therefore, it is necessary to develop an intelligent mechanism that can easily identify the power system fault so that occurrence of failure is more frequent in transmission and distribution lines due to symmetrical and unsymmetrical faults. As a result, the power reliability and the quality of the service provided by the Power Sector are identified to be at risk. Providing an adequate system that can identify the power system faults is very essential for the faster restoration of the faults in the power supply. In this paper, the analysis and performance of machine learning algorithms for the classification of faults in the power system are studied. Current and Voltage data were taken from a standard IEEE-14 bus system normal, symmetrical, and unsymmetrical fault cases were simulated in MATLAB Simulink. The data extracted is then used to train and tested through the SVM model. The main objective of this work is to classify the different types of fault happening in power systems with accuracy for faster restoration.
基于机器学习算法的IEEE-14总线系统电力系统故障分类与分析
随着电力需求的不断增加,输配电系统的复杂性日益增加。由于复杂性的增加,对称和不对称故障的频率显著增加,导致断路器频繁跳闸。因此,有必要开发一种能够轻松识别电力系统故障的智能机制,使输配电线路中由于对称和非对称故障而发生的故障更加频繁。因此,电力部门提供的电力可靠性和服务质量被认为处于危险之中。提供一个足够的系统来识别电力系统的故障,对于电力系统故障的快速恢复是至关重要的。本文研究了电力系统故障分类中机器学习算法的分析和性能。从标准的IEEE-14总线系统中获取电流和电压数据,在MATLAB Simulink中模拟正常、对称和非对称故障情况。然后将提取的数据通过SVM模型进行训练和测试。本工作的主要目的是对电力系统中发生的不同类型的故障进行准确的分类,以便更快地恢复。
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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