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An accurate classifier based on adaptive neuro-fuzzy and features selection techniques for fault classification in analog circuits

机译:基于自适应神经模糊和特征选择技术的模拟电路故障分类的准确分类器

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摘要

This paper presents a new approach for faults classification in analog integrated circuits using a multiclass adaptive neuro fuzzy inference system classifier. This is carried out to assist analog circuits faults diagnosis suffering from inaccurate faults classification on one hand, and to lessen computational burden on the other hand. This has been achieved from features number reduction. These features serving as input feature vector are extracted from the selected circuits (CUT) frequency and transient responses under both fault free and faulty conditions. The considered faults are resistors and capacitors values variations of about 50% low and high from their nominal ones. The method accuracy has been validated with three experiment circuits, the Sallen Key band-pass, the four opamp biquad high-pass and the leapfrog filters. The obtained results reveal a high level of efficiency with an accuracy average reach to 99.76%. Hence, the proposed method has shown a good performance in term of fault classification accuracy when compared with those of both the Artificial Neural Networks (ANN) approach and the fractional Fourier transform (FRFT) method based on a statistical property.
机译:本文提出了一种使用多类自适应神经模糊推理系统分类器进行模拟集成电路故障分类的新方法。这样做是为了一方面帮助模拟电路故障诊断具有错误的故障分类,另一方面减轻了计算负担。这是通过减少特征数量来实现的。在无故障和故障条件下,从选定电路(CUT)的频率和瞬态响应中提取用作输入特征向量的这些特征。所考虑的故障是电阻器和电容器的值与标称值之间的上下偏差约为50%。方法的准确性已通过三个实验电路,Sallen Key带通,四个运算放大器双二阶高通和跳越滤波器进行了验证。获得的结果显示出高水平的效率,平均准确率达到99.76%。因此,与基于统计特性的人工神经网络(ANN)方法和分数傅里叶变换(FRFT)方法相比,该方法在故障分类准确性方面表现出良好的性能。

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