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基于主元分析和核密度估计的多变量统计过程监控及在工厂聚丙烯催化剂反应器的应用
引用本文:熊丽,梁军,钱积新. 基于主元分析和核密度估计的多变量统计过程监控及在工厂聚丙烯催化剂反应器的应用[J]. 中国化学工程学报, 2007, 15(4): 524-532. DOI: 10.1016/S1004-9541(07)60119-0
作者姓名:熊丽  梁军  钱积新
作者单位:National Lab of Industrial Control Technology, Institute of Systems Engineering, Zhejiang University, Hangzhou310027, China
基金项目:国家自然科学基金,the Doctorate Foundation of the State Education Ministry of China
摘    要:Abstract Data-driven tools, such as principal component analysis (PCA) and independent component analysis (ICA) have been applied to different benchmarks as process monitoring methods. The difference between the two methods is that the components of PCA are still dependent while ICA has no orthogonality constraint and its latentvariables are independent. Process monitoring with PCA often supposes that process data or principal components is Gaussian distribution. However, this kind of constraint cannot be satisfied by several practical processes. To ex-tend the use of PCA, a nonparametric method is added to PCA to overcome the difficulty, and kernel density estimation (KDE) is rather a good choice. Though ICA is based on non-Gaussian distribution intormation, .KDE can help in the close monitoring of the data. Methods, such as PCA, ICA, PCA.with .KDE(KPCA), and ICA with KDE,(KICA), are demonstrated and. compared by applying them to a practical industnal Spheripol craft polypropylene catalyzer reactor instead of a laboratory emulator.

关 键 词:多变量统计过程监视  主要成分分析  克密尔聚酰胺纤维密度估算  聚炳稀  催化反应器  故障检出
收稿时间:2006-09-06
修稿时间:2006-09-06

Multivariate statistical process monitoring of an industrial polypropylene catalyzer reactor with component analysis and kernel density estimation
XIONG Li,LIANG Jun,QIAN Jixin. Multivariate statistical process monitoring of an industrial polypropylene catalyzer reactor with component analysis and kernel density estimation[J]. Chinese Journal of Chemical Engineering, 2007, 15(4): 524-532. DOI: 10.1016/S1004-9541(07)60119-0
Authors:XIONG Li  LIANG Jun  QIAN Jixin
Affiliation:National Lab of Industrial Control Technology, Institute of Systems Engineering, Zhejiang University, Hangzhou 310027, China;National Lab of Industrial Control Technology, Institute of Systems Engineering, Zhejiang University, Hangzhou 310027, China;National Lab of Industrial Control Technology, Institute of Systems Engineering, Zhejiang University, Hangzhou 310027, China
Abstract:Data-driven tools, such as principal component analysis (PCA) and independent component analysis (ICA) have been applied to different benchmarks as process monitoring methods. The difference between the two methods is that the components of PCA are still dependent while ICA has no orthogonality constraint and its latent variables are independent. Process monitoring with PCA often supposes that process data or principal components is Gaussian distribution. However, this kind of constraint cannot be satisfied by several practical processes. To extend the use of PCA, a nonparametric method is added to PCA to overcome the difficulty, and kernel density estimation (KDE) is rather a good choice. Though ICA is based on non-Gaussian distribution information, KDE can help in the close monitoring of the data. Methods, such as PCA, ICA, PCA with KDE (KPCA), and ICA with KDE (KICA), are demonstrated and compared by applying them to a practical industrial Spheripol craft polypropylene catalyzer reactor instead of a laboratory emulator.
Keywords:multivariate statistical process monitoring  principal component analysis  independent component analysis  kernel density estimation  polypropylene  catalyzer reactor  fault detection  data-driven tools
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