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A novel approach for analog fault diagnosis based on LMD decomposition and reconstruction

机译:基于LMD分解与重构的模拟故障诊断新方法

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Correct incipient fault diagnosis is crucial to the health management of the analog circuits, though remaining challenging. This paper presents a novel fault diagnosis method to diagnose ordinary soft fault and incipient soft fault for linear analog circuit. Due to the presence of analog circuit noise stress and the tolerance of the components, the linear circuit responses are considered as a stochastic process; and the time responses are acquired by sampling the outputs of the circuits under test. In this study, the local mean decomposition (LMD) method is used to decompose the stochastic series into a set of functions, each of which is the product of an envelope signal and a frequency modulated signal. The noises are decomposed and extracted from the sampled signals, which are later reconstructed. In the next step, the fault signatures are extracted from the de-noised series by applying the improved wavelet transform. Then the de-noised series samples are randomly selected as the training sample group and testing sample group. Finally, the feasibility of the proposed method is tested by SVM classifier. The proposed incipient fault diagnosis procedure is performed and verified on a Sallen-Key band-pass filter circuit and a four-op-amp high-pass filter circuit, which reveals improved accuracy of the proposed approach.
机译:正确的早期故障诊断对于模拟电路的健康管理至关重要,尽管仍然具有挑战性。本文提出了一种新颖的故障诊断方法,用于诊断线性模拟电路的普通软故障和初期软故障。由于存在模拟电路噪声应力和组件的公差,因此线性电路响应被认为是随机过程。通过对被测电路的输出进行采样来获取时间响应。在这项研究中,使用局部均值分解(LMD)方法将随机序列分解为一组函数,每个函数都是包络信号和调频信号的乘积。噪声被分解并从采样信号中提取出来,随后被重建。下一步,通过应用改进的小波变换从去噪序列中提取故障特征。然后将去噪系列样本随机选择为训练样本组和测试样本组。最后,通过支持向量机分类器测试了该方法的可行性。在Sallen-Key带通滤波器电路和四运放高通滤波器电路上执行并验证了所提出的初期故障诊断程序,从而揭示了所提方法的准确性。

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