首页> 外文期刊>Chemical Engineering Research & Design: Transactions of the Institution of Chemical Engineers >Improved multi-scale kernel principal component analysis and its application for fault detection
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Improved multi-scale kernel principal component analysis and its application for fault detection

机译:改进的多尺度核主成分分析及其在故障检测中的应用

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摘要

In this paper the multiscale kernel principal component analysis (MSKPCA) based on sliding median filter (SFM) is proposed for fault detection in nonlinear system with outliers. The MSKPCA based on SFM (SFM-MSKPCA) algorithm is first proposed and applied to process monitoring. The advantages of SFM-MSKPCA are: (1) the dynamical multiscale monitoring method is proposed which combining the Kronecker production, the wavelet decomposition technique, the sliding median filter technique and KPCA. The Kronecker production is first used to build the dynamical model; (2) there are more disturbances and noises in dynamical processes compared to static processes. The sliding median filter technique is used to remove the disturbances and noises; (3) SFM-MSKPCA gives nonlinear dynamic interpretation compared to MSPCA; (4) by decomposing the original data into multiple scales, SFM-MSKPCA analyze the dynamical data at different scales, reconstruct scales contained important information by IDWT, eliminate the effects of the noises in the original data compared to kernel principal component analysis (KPCA). To demonstrate the feasibility of the SFM-MSKPCA method, its process monitoring abilities are tested by simulation examples, and compared with the monitoring abilities of the KPCA and MSPCA method on the quantitative basis. The fault detection results and the comparison show the superiority of SFM-MSKPCA in fault detection.
机译:本文提出了基于滑动中值滤波(SFM)的多尺度核主成分分析(MSKPCA),用于异常值非线性系统的故障检测。首先提出了基于SFM的MSKPCA(SFM-MSKPCA)算法,并将其应用于过程监控。 SFM-MSKPCA的优点是:(1)提出了一种动态多尺度监测方法,该方法结合了Kronecker产生,小波分解技术,滑动中值滤波技术和KPCA。 Kronecker产品首先用于构建动力学模型; (2)与静态过程相比,动态过程中存在更多的干扰和噪声。滑动中值滤波技术用于消除干扰和噪声。 (3)与MSPCA相比,SFM-MSKPCA提供了非线性动态解释; (4)通过将原始数据分解为多个尺度,SFM-MSKPCA在不同尺度上分析动态数据,通过IDWT重构包含重要信息的尺度,与内核主成分分析(KPCA)相比消除了原始数据中的噪声影响。为了证明SFM-MSKPCA方法的可行性,通过仿真实例测试了其过程监控能力,并在定量基础上与KPCA和MSPCA方法的监控能力进行了比较。故障检测结果和比较结果表明,SFM-MSKPCA在故障检测中具有优越性。

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