A Power Transformer Event Classification Technique Based on Support Vector Machine

L. D. Simões, B. L. Souza, H. J. Costa, R. P. de Medeiros, V. S. Orivaldo, F. Costa
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引用次数: 2

Abstract

Currently, different artificial intelligence techniques have been applied in power transformer protection purposes to discriminate internal faults from inrush currents and other disturbances. This paper proposes the application of a support vector machine (SVM) algorithm, for distinguishing among internal faults, external faults, and transformer energizations in a power transformer. The event classifier is enabled through a disturbance detector, hence receiving as input features the first post-fault boundary wavelet differential energies, which are processed by the classifier during the training and set stages. Simulations of a 100 MVA rated power transformer using the Alternative Transients Program (ATP) were carried out. Hence considering a wide variety of the fault parameters, a performance analysis of the SVM classifier regarding the overall accuracy and the time of operation in discriminating the events was accomplished, and promising results were achieved.
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基于支持向量机的电力变压器事件分类技术
目前,不同的人工智能技术已应用于电力变压器保护目的,以区分内部故障与涌流和其他干扰。本文提出了一种支持向量机(SVM)算法,用于电力变压器内部故障、外部故障和变压器断电的识别。事件分类器通过扰动检测器使能,因此接收作为输入特征的第一个后故障边界小波微分能量,由分类器在训练和设置阶段进行处理。利用备选瞬变程序(ATP)对100 MVA额定功率变压器进行了仿真。因此,在考虑多种故障参数的情况下,对SVM分类器在事件识别方面的总体准确率和运行时间进行了性能分析,并取得了令人满意的结果。
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