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Diagnosis of Power Transformer Faults Based on Multi-layer Support Vector Machine Hybridized with Optimization Methods

机译:基于多层支持向量机与优化方法混合的电力变压器故障诊断

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摘要

This article presents an intelligent diagnosis and classification method for power transformer fault classification based on dissolved gas analysis: the support vector machine. It is a powerful algorithm for classification of faults that needs a limited set of small sampling data, a case of applications with non-linear behavior, and a high number of parameters; however, appropriate model parameters must be determined carefully. The selection of parameters has a direct effect on the machine's classification accuracy. In this study, a multi-layer support vector machine classifier is optimized by a grid search method and three heuristic approaches: (1) genetic, (2) differential evolution, and (3) particle swarm optimization algorithms. The performance analysis of the support vector machine hybridized with these optimization methods is demonstrated using the same classification set. The employed structure has five support vector machine layers, each of which uses a Gaussian kernel function due to its advantages of needing one parameter for optimization and providing excellent classification ability for non-linear data. The proposed approach gives highly accurate performance for diagnosis of power transformers. The support vector machine optimized with the particle swarm optimization algorithm has the best accuracy and requires less computational time compared to the other methods.
机译:本文提出了一种基于溶解气体分析的电力变压器故障分类的智能诊断和分类方法:支持向量机。它是一种功能强大的故障分类算法,需要少量的少量采样数据,具有非线性行为的应用案例以及大量参数,因此需要有限的一组采样数据;但是,必须仔细确定合适的模型参数。参数的选择直接影响机器的分类精度。在这项研究中,通过网格搜索方法和三种启发式方法优化了多层支持向量机分类器:(1)遗传,(2)差分进化和(3)粒子群优化算法。使用相同的分类集证明了与这些优化方法混合的支持向量机的性能分析。所采用的结构具有五个支持向量机层,由于其需要一个参数进行优化并为非线性数据提供出色的分类能力,因此每个层都使用高斯核函数。所提出的方法为电力变压器的诊断提供了高度准确的性能。与其他方法相比,使用粒子群优化算法进行优化的支持向量机具有最高的准确性,并且需要更少的计算时间。

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