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A novel multi-class fault diagnosis approach based on support vector machine of particle swarm Optimization and Huffman tree

机译:一种基于粒子群优化和霍夫曼树支持向量机的新型多级故障诊断方法

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Based on VC dimension theory and structural risk minimization principle of statistical learning theory, Support vector machine (SVM) has a prominent advantage in solving classification and fault prediction problems, specifically suitable for small sample, nonlinear and high dimensional pattern recognition problems. However, SVM is originally created for solving binary classification problems. The efficient application of SVM on multi-classification has always been a hotspot. This paper represents a novel approach to the multi-class fault diagnosis based on support vector machine of particle swarm optimization method. Besides the one-against-one, one-against-other, directed acyclic graph and binary tree, the Huffman tree is introduced, and the priority of the classification is determined by calculating dissimilarity degree of each two class. Thus, a multi-classification model based on Huffman tree is built. When the sample amount of each class varies greatly, using the same penalty parameter for each class will lower the classification accuracy. Thus, the penalty parameters of different class is optimized by particle swarm optimization method, which guarantee each SVM is the optimal result. Finally, a database of power transformer is used to demonstrate the superiority of this new method.
机译:基于VC尺寸理论和统计学习理论的结构风险最小化原理,支持向量机(SVM)在解决分类和故障预测问题方面具有突出的优势,特别适用于小样本,非线性和高尺​​寸模式识别问题。但是,最初创建SVM以解决二进制分类问题。 SVM对多分类的有效应用始终是热点。本文代表了一种基于粒子群优化方法支持向量机的多级故障诊断的新方法。除了一个反对 - 一个,一个反对其他指导的非循环图和二进制树,介绍了霍夫曼树,并且通过计算每种类的不同程度来确定分类的优先级。因此,构建了基于霍夫曼树的多分类模型。当每个类的样品量大大变化时,每个类的相同惩罚参数会降低分类准确性。因此,通过粒子群优化方法优化了不同类的惩罚参数,该方法可以保证每个SVM是最佳结果。最后,使用电力变压器数据库来展示这种新方法的优越性。

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