基于改进神经网络算法的模拟电路故障识别策略

Han Gao Han Gao, Dan Wang Han Gao, Ying He Dan Wang, Yang-Yang Yu Ying He, Bai-Jun Gao Yang-Yang Yu
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引用次数: 0

摘要

模拟电路故障是导致集成电路系统性能下降或瘫痪的主要原因。然而,由于电路故障本身的原因复杂、表现形式多样,传统方法在识别模拟电路中的典型故障时难度较大,识别精度较低。本文构建了一种改进的ResNet深度特征识别网络模型,建立了一维和二维故障信息源。最后,利用粒子群优化算法搜索模型解出的最优参数,最终实现模拟电路故障诊断精度和识别速度的提高。最后通过实验验证,对典型故障C2的识别准确率达到99.6%,证明了本文方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strategy for Identifying Analog Circuit Faults Using Improved Neural Network Algorithms
Analog circuit faults are the main cause of performance degradation or paralysis in integrated circuit systems. However, due to the complex causes and diverse manifestations of circuit faults themselves, traditional methods have high difficulty in identifying typical faults in analog circuits and low recognition accuracy. This article constructs an improved ResNet deep feature recognition network model and establishes one-dimensional and two-dimensional fault information sources. Finally, particle swarm optimization algorithm is used to search for the optimal parameters solved by the model, ultimately achieving improvements in the accuracy and recognition speed of analog circuit fault diagnosis. Finally, through experimental verification, the recognition accuracy of typical fault C2 reached 99.6%, proving the effectiveness of the method proposed in this paper.  
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