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Mahalanobis Distance Based Approach for Anomaly Detection of Analog Filters Using Frequency Features and Parzen Window Density Estimation

机译:基于Mahalanobis距离的频率特性和Parzen窗口密度估计的模拟滤波器异常检测方法

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摘要

Analog filters play a very important role in insuring the availability of electronic systems. Early detection of anomalies of analog filters can prevent the impending failures and enhance reliability. The complex architecture and the tolerances of multiple components make it very difficult to detect anomalies in analog filters. To address this concern, A Mahalanobis distance (MD) based anomaly detection method for analog filters is proposed in this paper. The conventional frequency features and the moment of frequency response are selected as the feature vector. Mahalanobis distance is used to transform the frequency feature vector to one dimensional MD data. The anomaly detection threshold is obtained based on probability density of the health MD data sets which is estimated by Parzen window density estimation method. The efficiency of the proposed method has been verified by two case studies. In the case studies, a comprehensive indicator constructed by miss alarm and false alarm is used to obtain an optimal anomaly detection threshold. One class SVM (OCSVM) based anomaly detection method is used as a comparison with our approach. The results illustrate that: (1) the proposed frequency features can effectively clarify the degradation of analog filters; (2) the proposed MD based approach can detect anomalies in analog filters effectively at an early time stage. (3) the proposed MD based approach can detect anomalies in analog filters more accurately than OCSVM based method.
机译:模拟滤波器在确保电子系统的可用性方面起着非常重要的作用。及早发现模拟滤波器异常可以防止即将发生的故障并提高可靠性。复杂的架构和多个组件的公差使得很难检测模拟滤波器中的异常。为了解决这一问题,本文提出了一种基于马氏距离(MD)的模拟滤波器异常检测方法。选择常规的频率特征和频率响应的矩作为特征向量。马氏距离用于将频率特征向量转换为一维MD数据。基于通过Parzen窗口密度估计方法估计的健康MD数据集的概率密度来获得异常检测阈值。通过两个案例研究验证了该方法的有效性。在案例研究中,使用由未命中警报和错误警报构成的综合指标来获得最佳异常检测阈值。一种基于SVM(OCSVM)的异常检测方法被用作与我们的方法的比较。结果表明:(1)提出的频率特性可以有效地阐明模拟滤波器的退化; (2)所提出的基于MD的方法可以在早期阶段有效地检测模拟滤波器中的异常。 (3)与基于OCSVM的方法相比,基于MD的方法可以更准确地检测模拟滤波器中的异常。

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