一种基于多特征的模拟电路故障检测方法

Tianyu Gao, Jingli Yang, Jianfeng Wang, Shouda Jiang
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引用次数: 0

摘要

模拟电路的可靠性和安全性变得越来越重要。故障诊断方法可以识别模拟电路的故障类别,从而定位故障元器件。然而,基于多分类学习框架的故障诊断方法在缺乏故障样本的情况下存在分类效果不理想的问题。针对这些问题,本文提出了一种基于多特征的模拟电路故障检测方法。所提出的故障检测方法通过只学习正常样本来获得控制限,可以有效地判断模拟电路的健康状态。首先计算待测电路(CUT)输出信号在时域、频域和时频域的特征,综合反映待测电路的状态。此外,引入相关相似度(RS)特征的构建方法,实现特征增强,进一步挖掘特征中的本质信息。然后,利用量子粒子群优化(QPSO)算法自适应地进行特征选择,去除冗余特征,适应度为改进的Wilks统计量(IWS);最后,将特征向量传递到基于核主成分分析(KPCA)的故障检测模型中,以识别切割器的健康状态。实验结果表明,该方法在缺乏故障样本的情况下对模拟电路具有良好的检测性能。
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A Novel Fault Detection Method Based on Multiple Features for Analog Circuits
The reliability and security of analog circuits are becoming increasingly significant. Fault diagnosis methods can identify fault classes of analog circuits, thus locating the fault components. However, the fault diagnosis methods based on multi-classification learning framework suffer from the problem of desirable classification effect in the case of lack of fault samples. To address these issues, a fault detection method based on multiple features for analog circuits is proposed in this paper. By learning only normal samples to obtain control limits, the proposed fault detection method can effectively determine the health states of analog circuits. First, features of the output signals of the circuit under test (CUT) in the time domain, frequency domain, and time-frequency domain are calculated to comprehensively reflect its states. In addition, the construction method of related similarity (RS) features is introduced to achieve feature enhancement, which further explores the essential information in the features. Then, to remove redundant features, the feature selection is adaptively performed by using the quantum particle swarm optimization (QPSO) algorithm, where the fitness is the improved Wilks statistic (IWS). Finally, the feature vectors are transmitted to the fault detection model based on kernel principal component analysis (KPCA) to identify the health states of CUT. The experimental results indicate that the proposed method exhibits excellent detection performance for analog circuits in the case of lack of fault samples.
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