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A novel approach for analog fault diagnosis based on neural networks and improved kernel PCA

机译:基于神经网络和改进内核PCA的模拟故障诊断新方法

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摘要

We have developed a neural-network-based fault diagnosis approach of analog circuits using maximal class separability based kernel principal components analysis (MCSKPCA) as preprocessor. The proposed approach can detect and diagnose faulty components efficiently in the analog circuits by analyzing their time responses. First, using wavelet transform to preprocess the time responses obtains the essential and reduced candidate features of the corresponding response signals. Then, the second preprocessing by MCSKPCA further reduces the dimensionality of candidate features so as to obtain the optimal features with maximal class separability as inputs to the neural networks. This simplifies the architectures reasonably and reduces the computational burden of neural networks drastically. The simulation results show that our resulting diagnostic system can classify the faulty components of analog circuits under test effectively and achieves a competitive classification performance.
机译:我们已经开发了一种基于神经网络的模拟电路故障诊断方法,该方法使用基于最大类可分离性的内核主成分分析(MCSKPCA)作为预处理器。所提出的方法可以通过分析它们的时间响应来有效地检测和诊断模拟电路中的故障组件。首先,使用小波变换对时间响应进行预处理,以获得相应响应信号的基本特征和缩减的候选特征。然后,MCSKPCA进行的第二次预处理进一步降低了候选特征的维数,从而获得了具有最大类可分离性的最优特征作为神经网络的输入。这合理地简化了体系结构,并大大减少了神经网络的计算负担。仿真结果表明,我们得到的诊断系统可以有效地对被测模拟电路的故障组件进行分类,并具有有竞争力的分类性能。

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