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Fault diagnosis model of power transformer based on an improved binary tree and the choice of the optimum parameters of multi-class SVM

机译:基于改进二叉树和多类支持向量机最优参数选择的电力变压器故障诊断模型

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摘要

An improved binary tree algorithm is proposed for the practical problem of the relativity position of the data sets for oil-immersed transformer in the pattern feature space. And a fault diagnosis model of Dissolved Gas Analysis (DGA) based on an improved binary tree multi -class support vector machine (SVM) is constructed. This method overcomes the disadvantage that the traditional binary tree, which doesn't consider the distributing situation of the data sets, constructs directly the SVM classifier. At the same time, the two-divided method presented by the paper is applied in the choice of the optimal parameters of SVM. The experiment is performed and this method acquires a better performance.
机译:针对模式特征空间中油浸式变压器数据集相对位置的实际问题,提出了一种改进的二叉树算法。基于改进的二叉树多类支持向量机(SVM),建立了溶解气体分析(DGA)的故障诊断模型。该方法克服了传统二叉树不考虑数据集分布情况而直接构造SVM分类器的缺点。同时,将本文提出的二分法应用于支持向量机的最优参数选择。进行了实验,该方法获得了更好的性能。

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