Optimal Selection of Input Variables by BPSO for Diagnosis of Incipient Failures in Power Transformers (by DGA)

A. Enriquez, S. Lima, O. Saavedra
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Abstract

Power transformer immersed in oil is a valuable asset in the operation of the electrical system, therefore, it is of interest to the operating companies to keep the power transformers in perfect operating conditions. Early diagnosis of a fault condition in the power transformer is a fairly addressed research topic, however, inappropriate use and the limited number of data do not allow formulating a robust methodology for a real implementation in the electrical system. This document presents an optimal selection of input variables in diagnosis of power transformer failures by DGA, the sample of inputs is generated from the gas contents (hydrogen, methane, acetylene, ethane and ethylene) and the selection of optimal inputs (VE-BPSO) is extracted with Binary Particle Swarm Optimization (BPSO) in the nearest neighbor classification (Conventional K-NN Classifier). In the validation process for 63 independent data in both Conventional K-NN Classifier and Artificial Neural Network (ANN) the performances for VE-BPSO are superior to the conventional approach (IEC 60599 standard inputs). Therefore, the input variables with the best characterization (clustering) in diagnosis of faults in TP is VE-BPSO, which is the main contribution of this paper.
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基于BPSO的电力变压器早期故障诊断输入变量优选(DGA)
浸没在油中的电力变压器是电力系统运行中的宝贵资产,因此,保持电力变压器处于良好的运行状态是运营公司关心的问题。电力变压器故障状态的早期诊断是一个相当有针对性的研究课题,然而,不适当的使用和有限的数据数量不允许制定一个可靠的方法,在电力系统中真正实施。本文提出了一种基于DGA的电力变压器故障诊断中输入变量的优化选择方法,该方法从气体含量(氢气、甲烷、乙炔、乙烷和乙烯)中生成输入样本,并采用最近邻分类(传统K-NN分类器)中的二元粒子群算法(BPSO)提取最优输入的选择(VE-BPSO)。在传统K-NN分类器和人工神经网络(ANN)对63个独立数据的验证过程中,该方法的性能优于传统方法(IEC 60599标准输入)。因此,在TP故障诊断中具有最佳表征(聚类)的输入变量是VE-BPSO,这是本文的主要贡献。
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