Robust Fault Diagnosis of Analog Circuits with Tolerances

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Ying Deng Yigang He Xu He Yichuang Sun College of Electrical and Information EngineeringHunan University Changsha Hunan China Department of Computer Science Hunan University Changsha Hunan China Department of Ele [1 ,1 ,2 ,3 ,1 ,410082 ,2 ,410082 ,3 ]
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TN702 [设计、分析、计算];
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A method for robust analog fault diagnosis using hybrid neural networks is proposed. The primary focus of the paper is to provide robust diagnosis using a mechanism to deal with the problem of element tolerances and reduce testing time. The proposed approach is based on the fault dictionary diagnosis method and backward propagation neural network (BPNN) and the adaptive resonance theory (ART) neural network. Simulation results show that the method is robust and fast for fault diagnosis of analog circuits with tolerances.
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页码:133 / 138
页数:6
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  • [1] A neural-based nonlinear L 1-norm optimization algorithm for diagnosis of networks.[J].Yigang He;Xianjue Luo;Guanyuan Qiu.Journal of Electronics (China).1998, 4