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首页> 外文期刊>Journal of Electronic Testing: Theory and Applications: Theory and Applications >Practical Analog Circuit Diagnosis Based on Fault Features with Minimum Ambiguities
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Practical Analog Circuit Diagnosis Based on Fault Features with Minimum Ambiguities

机译:基于最小模糊度故障特征的实用模拟电路诊断

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摘要

As numerous faults exist in practical analog circuits, new challenges arise in the field of diagnosis with large-scale target faults as well as fault features. To address this issue, firstly, an ambiguity model is built to measure the distinguishability between two faults. Then, the optimal fault features are obtained by analyzing the response curves of the circuit under test (CUT) to minimize the ambiguities among the faults. Finally, comparisons are made among three classification methods, including the maximum likelihood classifier (MLC), artificial neural networks (ANNs) and support vector machine (SVM), to demonstrate their own diagnostic abilities for practical use. Two examples are illustrated, and taking advantage of an automated implementation framework, 92 faults in total are examined in the second example. The experimental results show that good diagnostic performances can be obtained with the proposed method. However, when a practical case is encountered, the ANNs method may fail due to its high time and space complexity, while the MLC and SVM methods are still applicable.
机译:由于实际模拟电路中存在大量故障,因此在具有大规模目标故障以及故障特征的诊断领域中出现了新的挑战。为了解决这个问题,首先,建立一个模糊度模型来测量两个故障之间的可区分性。然后,通过分析被测电路(CUT)的响应曲线来获得最佳故障特征,以最大程度地减少故障之间的歧义。最后,对三种分类方法进行了比较,包括最大似然分类器(MLC),人工神经网络(ANN)和支持向量机(SVM),以证明其自身的实用诊断能力。说明了两个示例,并利用自动实现框架,在第二个示例中总共检查了92个错误。实验结果表明,该方法可以取得良好的诊断性能。但是,当遇到实际情况时,ANNs方法可能会因其较高的时间和空间复杂性而失败,而MLC和SVM方法仍然适用。

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