基于机器学习的径向配电网外围总线故障识别方法

S. Chattopadhyay, Gaurang Humne, Md Sanir Alam, Bhaskar Roy, Animesh Bera, Gopal Bandyopadhyay
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引用次数: 0

摘要

提出了一种新的拓扑结构,用于通过机器学习选择最佳方法来检测径向电网任何外围发生的故障类型。首先进行了常规的潮流分析,然后在外围负载母线的健康状态和不同故障状态下找到了不同类型的序列参数。最后进行了基于序列分量的故障诊断,并应用六种基于机器学习的方法对所有类型的故障进行了判别。通过比较研究,得出了最合适的方法。
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Machine Learning Based Peripheral Bus Fault Discrimination using Sequence Components in Radial Distribution Network
A novel topology for choosing best method to detect the type of fault occurred at any periphery of a radial power network through machine learning has been presented. Firstly, conventional load flow analysis has been performed, and then, different types of sequence parameters have been found for healthy and different fault conditions at peripheral load buses. Then, sequence component-based fault diagnosis has been performed at the end, and six types of machine learning-based methods have been applied for the discrimination of all types of faults. From a comparative study, the best suitable method has been derived.
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