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Algorithms comparison of feature extraction and multi-class classification for fault diagnosis of analog circuit

机译:特征提取和多类分类算法在模拟电路故障诊断中的算法比较

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For the novelties or anomalies of faulty signals occur in a damage circuit and fault signals vary with different circuit damages. To ensure the accuracy and reliability of diagnosis, it is very important to extract the characteristic features of fault signals. Two feature extraction methods based on wavelet packet transform is proposed to treat transient signals: optimal wavelet packet transform (OWPT) and incomplete wavelet packet transform (IWPT). For the fault signals decomposed, the energy in each frequency band may be heightened or be reduced, so a novel 'energy-fault' method is put forward to extract fault features. The problem of fault diagnosis of analog circuit is actually a pattern recognition problem. Nowadays, the binary tree support vector machines (BTSVMs) is usually used for multi-class classification, but the structure of the binary tree is closely related to the classification performance of binary tree support vector machines (BTSVMs). A new separability measure method based on the space distribution of pattern classes is applied to construct different binary trees. Three BTSVMs classifiers based on the separability measure are defined in this paper: inclined binary tree support vector machines (IBTSVMs), balanced binary tree support vector machines (BBTSVMs) and adaptive binary tree support vector machines (ABTSVMs). Simulation results show us that the OWPT method is prefect for soft fault diagnosis, the IWPT for hard fault diagnosis, and the BBTSVMs multi-classifier possesses better classification speed, the ABTSVMs multi-classifier better classification accuracy.
机译:对于新颖性或异常,故障信号发生在损坏的电路中,并且故障信号随着不同的电路损坏而变化。为了确保诊断的准确性和可靠性,提取故障信号的特征非常重要。提出了两种基于小波包变换的特征提取方法来处理瞬态信号:最优小波包变换(OWPT)和不完全小波包变换(IWPT)。对于分解后的故障信号,可以提高或降低每个频段的能量,因此提出了一种新颖的“能量故障”方法来提取故障特征。模拟电路的故障诊断问题实际上是模式识别问题。如今,二叉树支持向量机(BTSVM)通常用于多类分类,但是二叉树的结构与二叉树支持向量机(BTSVM)的分类性能密切相关。提出了一种基于模式类空间分布的新的可分性度量方法来构造不同的二叉树。本文定义了基于可分离性度量的三个BTSVM分类器:倾斜二叉树支持向量机(IBTSVM),平衡二叉树支持向量机(BBTSVM)和自适应二叉树支持向量机(ABTSVM)。仿真结果表明,OWPT方法是软故障诊断的理想方法,IWPT是硬故障诊断的理想方法,BBTSVMs多分类器具有更好的分类速度,ABTSVMs多分类器具有更好的分类精度。

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