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Defect Detection in Analog and Mixed Circuits by Neural Networks Using Wavelet Analysis

机译:小波分析的神经网络在模拟电路和混合电路中的缺陷检测

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摘要

An efficient defect-oriented parametric test method for analog & mixed-signal integrated circuits based on neural network classification of a selected circuit's parameter using wavelet decomposition preprocessing is proposed in this paper. The neural network has been used for detecting catastrophic defects in two experimental analog & mixed-signal CMOS circuits by sensing the abnormalities in selected parameters, observed under defective conditions and by their consequent classification into a proper category. To reduce complexity of the neural network, wavelet decomposition is used to perform preprocessing of the analyzed parameter. Moreover, we show that wavelet analysis brings significant enhancement in the correct classification, and makes the neural network-based test method extremely efficient & versatile for detecting hard-detectable catastrophic defects in analog & mixed-signal circuits.
机译:提出了一种基于小波分解预处理对选定电路参数进行神经网络分类的,面向模拟和混合信号集成电路的面向缺陷的有效参数测试方法。该神经网络已用于检测两个实验性模拟和混合信号CMOS电路中的灾难性缺陷,方法是检测所选参数的异常情况(在有缺陷的情况下观察到)并将其分类为适当的类别。为了降低神经网络的复杂性,使用小波分解对所分析的参数进行预处理。此外,我们表明,小波分析在正确分类方面带来了显着增强,并使基于神经网络的测试方法极其有效且通用,可检测出模拟和混合信号电路中难以检测到的灾难性缺陷。

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