Detection of High Impedance Faults in Microgrids using Machine Learning

Pallav Kumar Bera, Vajendra Kumar, Samita Rani Pani, Vivek Bargate
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引用次数: 1

Abstract

This article presents differential protection of the distribution line connecting a wind farm in a microgrid. Machine Learning (ML) based models are built using differential features extracted from currents at both ends of the line to assist in relaying decisions. Wavelet coefficients obtained after feature selection from an extensive list of features are used to train the classifiers. Internal faults are distinguished from external faults with CT saturation. The internal faults include the high impedance faults (HIFs) which have very low currents and test the dependability of the conventional relays. The faults are simulated in a 5-bus system in PSCAD/EMTDC. The results show that ML-based models can effectively distinguish faults and other transients and help maintain security and dependability of the microgrid operation.
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基于机器学习的微电网高阻抗故障检测
本文介绍了微电网中连接风电场配电线路的差动保护。基于机器学习(ML)的模型是使用从线路两端的电流中提取的差分特征来构建的,以帮助传递决策。从广泛的特征列表中选择特征后获得的小波系数用于训练分类器。利用CT饱和度将内部断层与外部断层区分开来。继电器的内部故障包括具有极低电流的高阻抗故障(hif),它考验着传统继电器的可靠性。在PSCAD/EMTDC的5总线系统中进行了故障模拟。结果表明,基于机器学习的模型能够有效区分故障和其他暂态,有助于维护微网运行的安全可靠性。
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