基于svm的架空配电故障事件分类方法

V. Barrera Nunez, S. Kulkarni, S. Santoso, J. Meléndez
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引用次数: 12

摘要

本文提出应用支持向量机(SVM)根据架空配电故障的一般根本原因对架空配电故障进行分类;它们是由于动物接触、树木接触和雷击引起的故障。支持向量机方法利用隐藏在电压和/或电流波形中的独特特征。给出了基于时间和电量的七个独特特征。将具有不同核的支持向量机与基于规则的分类方法的性能进行了比较。训练和分类结果表明,基于支持向量机的方法优于基于规则的方法。例如,基于svm的方法正确分类了收集到的148个电压事件中的119个,而基于规则的方法正确分类了其中的88个。同样,在训练过程中也证明了基于svm的方法具有良好的泛化性能。然而,这种基于支持向量机和其他黑箱方法的分类器的缺点是难以解释决策标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM-based classification methodology for overhead distribution fault events
This paper proposes the application of support vector machines (SVM) to classify overhead distribution faults according to their general root causes; they are faults due to animal contacts, tree contacts, and lightning-induced events. The SVM method uses unique features buried in voltage and/or current waveforms. Seven unique features based on time and electrical quantities are presented. The performance of support vector machines with different kernels is compared to that of a rule-based classification method. The training and classification results demonstrate that SVM-based approach performs better than the rule-based approach. For instance, SVM-based approach correctly classifies 119 out of 148 collected voltage events, whereas rule-based approach 88 out of them. Likewise, a good generalization performance of the SVM-based approach is demonstrated during the training process carried out. However, the drawback of such a classifier based on SVM, and other blackbox methods, is due to the difficulties to interpret decision criteria.
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