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Anomaly Detection Based on Kernel Principal Component and Principal Component Analysis

机译:基于内核主成分和主成分分析的异常检测

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Nowadays, behind wall human detection based on UWB radar signal, which it had a strong anti-jamming performance, was an important problem. In this setting, principal component analysis (PCA) as an anomaly detection method was used, but PCA could only deal with linear data. Thus, we introduced the kernel principal component analysis (KPCA) for performing a nonlinear form of principal component analysis (PCA). We obtained the different state data based on UWB radar signal for the behind wall human detection. These data were used as training and testing data to calculate the squared prediction error (SPE) values that detect anomalies. The experimental results showed that the introduced approach of KPCA effectively captured the nonlinear relationship in the process data and showed superior process monitoring performance compared to linear PCA.
机译:如今,基于UWB雷达信号的墙体检测后面,它具有强烈的抗干扰性能,是一个重要的问题。在此设置中,使用主成分分析(PCA)作为异常检测方法,但PCA只能处理线性数据。因此,我们介绍了用于执行非线性形式的主成分分析(PCA)的内核主成分分析(KPCA)。我们基于UWB雷达信号获得了不同的状态数据,用于墙体检测后面。这些数据被用作训练和测试数据,以计算检测异常的平方预测误差(SPE)值。实验结果表明,与线性PCA相比,KPCA的引入方法有效地捕获了过程数据中的非线性关系,并显示了与线性PCA相比的卓越过程监测性能。

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