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An effective approach based on nonlinear spectrum and improved convolution neural network for analog circuit fault diagnosis. | LitMetric

AI Article Synopsis

  • This work presents a novel method for diagnosing faults in analog circuits using a nonlinear output frequency response function (NOFRF) and an enhanced convolutional neural network (CNN).
  • The approach utilizes NOFRF spectra as fault indicators instead of direct system outputs and incorporates batch normalization and a convolutional block attention module (CBAM) to boost diagnosis accuracy and efficiency.
  • Fault diagnosis experiments conducted on a simulated Sallen-Key circuit show that the proposed method enhances diagnostic accuracy while exhibiting robust performance against noise.

Article Abstract

In this work, an effective approach based on a nonlinear output frequency response function (NOFRF) and improved convolution neural network is proposed for analog circuit fault diagnosis. First, the NOFRF spectra, rather than the output of the system, are adopted as the fault information of the analog circuit. Furthermore, to further improve the accuracy and efficiency of analog circuit fault diagnosis, the batch normalization layer and the convolutional block attention module (CBAM) are introduced into the convolution neural network (CNN) to propose a CBAM-CNN, which can automatically extract the fault features from NOFRF spectra, to realize the accurate diagnosis of the analog circuit. The fault diagnosis experiments are carried out on the simulated circuit of Sallen-Key. The results demonstrate that the proposed method can not only improve the accuracy of analog circuit fault diagnosis, but also has strong anti-noise ability.

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Source
http://dx.doi.org/10.1063/5.0142657DOI Listing

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