Wavelet - Based principal component analysis for process monitoring with experimental application

A. Alkaya, I. Eker
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引用次数: 1

Abstract

PCA methods for Fault Detection (FD) use data collected from a steady-state process to monitor T2 statistics with a fixed threshold. The fixed threshold method causes false alarms in the transient state of the system. To overcome the false alarms arising from the transient state the combination of the fixed and adaptive threshold (Tcomb) based PCA method is used. But the measurements noise results in very high Tcomb. This causes to produce the missing fault signal components. The problem can be solved by filtering the noisy measurement signals. The wavelet transform has been widely used in signal de-noising, due to its extraordinary time-frequency representation capability. In this paper, a new PCA method based on wavelet is proposed to overcome false alarms which occur in the transient states according to changing process conditions and the missing data problem. The proposed method is implemented and validated experimentally on an electromechanical system. Experimental results illustrate the much better fault detection performance of the proposed method in comparison with classical PCA monitoring and process controlling charts.
基于小波的主成分分析在过程监控中的实验应用
故障检测(FD)的PCA方法使用从稳态过程收集的数据来监测具有固定阈值的T2统计数据。固定阈值法会在系统暂态状态下产生假告警。为了克服暂态产生的虚警,采用了基于固定阈值和自适应阈值(Tcomb)相结合的PCA方法。但是测量噪声会导致很高的梳度。这导致产生缺失的故障信号组件。该问题可以通过对测量信号的噪声滤波来解决。小波变换以其优异的时频表示能力在信号去噪中得到了广泛的应用。本文提出了一种新的基于小波变换的主成分分析方法,克服了因过程条件变化而产生的暂态虚警和数据缺失问题。该方法在某机电系统上进行了实验验证。实验结果表明,与传统的主成分分析监测图和过程控制图相比,该方法具有更好的故障检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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