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Process Monitoring and Fault Detection using Empirical Mode Decomposition and Singular Spectrum Analysis

机译:使用经验模式分解和奇异频谱分析处理监控和故障检测

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In this study, a new data-driven multivariate multiscale statistical process monitoring method based on singular spectrum analysis (SSA) and empirical mode decomposition (EMD) is proposed for fault detection in chemical process systems. SSA extracts the trends of process signals using the eigenvalues of trajectory matrices while EMD uses the intrinsic mode functions (IMFs) to capture the signal trends through sifting process. The results obtained from the industrial and simulated case studies showed that SSA and conventional multivariate statistical process monitoring technique such as principal component analysis (PCA) failed to extract the nonstationary and nonlinear trends in the signal effectively. As an alternative, in this study, SSA is combined with EMD decomposition prior to the process monitoring procedure using PCA. The efficiency of EMD in analyzing the nonstationary and nonlinear signals enhanced the performance of linear SSA techniques by combining the two techniques in this study. Experimental and simulation results also revealed that fault detection using EMD is comparable to the combined technique.
机译:在本研究中,提出了一种基于奇异频谱分析(SSA)和经验模式分解(EMD)的新的数据驱动多变量多变量统计过程监测方法,用于化学过程系统中的故障检测。 SSA利用轨迹矩阵的特征值提取处理信号的趋势,而EMD使用内在模式功能(IMF)以通过筛选过程捕获信号趋势。从工业和模拟案例研究中获得的结果表明,SSA和常规多变量统计过程监测技术如主成分分析(PCA),未能有效地提取信号中的非间断和非线性趋势。作为替代方案,在本研究中,SSA在使用PCA过程监测过程之前与EMD分解组合。 EMD在分析非间断和非线性信号时的效率通过组合这项研究中的两种技术来增强了线性SSA技术的性能。实验和仿真结果还显示使用EMD的故障检测与组合技术相当。

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