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首页> 外文期刊>Journal of Electronic Testing >Diagnostics of Filtered Analog Circuits with Tolerance Based on LS-SVM Using Frequency Features
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Diagnostics of Filtered Analog Circuits with Tolerance Based on LS-SVM Using Frequency Features

机译:基于LS-SVM频率特性的容差滤波模拟电路诊断

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摘要

Most researchers have used the optimal wavelet coefficients or wavelet energy indicators from the time-domain response of analog circuits to train support vector machines (SVMs) to diagnose faults. In this study, we have proposed two kinds of feature vectors from frequency response data of a filter system to train least squares SVM (LS-SVM) to diagnose faults. The first is defined as the conventional frequency feature vector, which includes the center frequency and the maximum frequency response. The second is a new wavelet feature vector that is composed of the mean and standard deviation of wavelet coefficients. Different feature vectors’ combination and normalization are also discussed in the paper. The results from the simulation data and the real data for two filters showed the following: (1) The proposed method has better diagnostic accuracy than the traditional methods that were based only on the optimal wavelet coefficients or wavelet energy indicators. (2) The diagnostic accuracies using the combined feature vectors were better than those using only the conventional frequency feature vectors or wavelet feature vectors. (3) The best accuracy from using the conventional frequency feature vectors was better than that from using wavelet feature vectors. The proposed method can be extended to diagnostics of other analog circuits that are determined by their frequency characteristics.
机译:大多数研究人员已使用模拟电路的时域响应中的最佳小波系数或小波能量指标来训练支持向量机(SVM)来诊断故障。在这项研究中,我们提出了两种特征向量:从滤波器系统的频率响应数据到训练最小二乘支持向量机(LS-SVM)来诊断故障。第一个定义为常规频率特征向量,其中包括中心频率和最大频率响应。第二个是新的小波特征向量,它由小波系数的均值和标准差组成。本文还讨论了不同特征向量的组合和归一化。从两个滤波器的仿真数据和真实数据得出的结果表明:(1)与仅基于最优小波系数或小波能量指标的传统方法相比,该方法具有更高的诊断精度。 (2)使用组合特征向量的诊断准确性优于仅使用常规频率特征向量或小波特征向量的诊断准确性。 (3)使用常规频率特征向量的最佳精度优于使用小波特征向量的精度。所提出的方法可以扩展到由其频率特性确定的其他模拟电路的诊断。

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