Abstract

To improve the diagnosis capability of soft fault for analog circuit, a WNN diagnosis model is proposed based on fault feature samples extracted, which is trained by a modified UKF algorithm. An adaptive factor is firstly introduced to enhance the accuracy of UKF algorithm. Then, the UKF algorithm with adaptive factor is used to optimize the parameters of WNN, establishing the soft fault diagnosis model for fault feature samples extracted by multi-resolution transform. Finally, each fault mode is diagnosed and determined by the model. The simulation experiment on Sallen-Key bandpass filter indicates that, the proposed method has a good convergence rate and diagnosis accuracy rate for all faults in analog circuit. The feasibility and effectiveness of this method is also validated.

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