期刊文献+

A novel multimode process monitoring method integrating LCGMM with modified LFDA 被引量:4

一种新的融合LCGMM与改进LFDA的多模态过程监测方法(英文)
下载PDF
导出
摘要 Complex processes often work with multiple operation regions, it is critical to develop effective monitoring approaches to ensure the safety of chemical processes. In this work, a discriminant local consistency Gaussian mixture model(DLCGMM) for multimode process monitoring is proposed for multimode process monitoring by integrating LCGMM with modified local Fisher discriminant analysis(MLFDA). Different from Fisher discriminant analysis(FDA) that aims to discover the global optimal discriminant directions, MLFDA is capable of uncovering multimodality and local structure of the data by exploiting the posterior probabilities of observations within clusters calculated from the results of LCGMM. This may enable MLFDA to capture more meaningful discriminant information hidden in the high-dimensional multimode observations comparing to FDA. Contrary to most existing multimode process monitoring approaches, DLCGMM performs LCGMM and MFLDA iteratively, and the optimal subspaces with multi-Gaussianity and the optimal discriminant projection vectors are simultaneously achieved in the framework of supervised and unsupervised learning. Furthermore, monitoring statistics are established on each cluster that represents a specific operation condition and two global Bayesian inference-based fault monitoring indexes are established by combining with all the monitoring results of all clusters. The efficiency and effectiveness of the proposed method are evaluated through UCI datasets, a simulated multimode model and the Tennessee Eastman benchmark process. Complex processes often work with multiple operation regions, it is critical to develop effective monitoring approaches to ensure the safety of chemical processes. In this work, a discriminant local consistency Gaussian mixture model(DLCGMM) for multimode process monitoring is proposed for multimode process monitoring by integrating LCGMM with modified local Fisher discriminant analysis(MLFDA). Different from Fisher discriminant analysis(FDA) that aims to discover the global optimal discriminant directions, MLFDA is capable of uncovering multimodality and local structure of the data by exploiting the posterior probabilities of observations within clusters calculated from the results of LCGMM. This may enable MLFDA to capture more meaningful discriminant information hidden in the high-dimensional multimode observations comparing to FDA. Contrary to most existing multimode process monitoring approaches, DLCGMM performs LCGMM and MFLDA iteratively, and the optimal subspaces with multi-Gaussianity and the optimal discriminant projection vectors are simultaneously achieved in the framework of supervised and unsupervised learning. Furthermore, monitoring statistics are established on each cluster that represents a specific operation condition and two global Bayesian inference-based fault monitoring indexes are established by combining with all the monitoring results of all clusters. The efficiency and effectiveness of the proposed method are evaluated through UCI datasets, a simulated multimode model and the Tennessee Eastman benchmark process.
出处 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2015年第12期1970-1980,共11页 中国化学工程学报(英文版)
基金 Supported by the National Natural Science Foundation of China(61273167)
关键词 Multimode process monitoring Discriminant local consistency Gaussian mixture model Modified local Fisher discriminant analysis Global fault detection index Tennessee Eastman process 过程监控 多模态 Fisher判别分析 改良 高斯混合模型 无监督学习 贝叶斯推理 集成
  • 相关文献

参考文献3

二级参考文献34

  • 1牛征,刘吉臻,牛玉广.动态多主元模型故障检测方法在变工况过程中的应用[J].动力工程,2005,25(4):554-558. 被引量:18
  • 2范玉刚,李平,宋执环.基于特征样本的KPCA在故障诊断中的应用[J].控制与决策,2005,20(12):1415-1418. 被引量:20
  • 3Hyvarinen A, Oja E.A fast fixed-point algorithm for independent component analysis. Neural Computation, 1997, 9 (7): 1483- 1492.
  • 4Lin Kuan Ming, Lin Chin Jen. A study on reduced support vector machine. IEEE Transactions on Neural Networks, 2003, 14 (6):1449 -1459.
  • 5Kim P J, Chang H J, Song D S. Fast support vector data description using K means clustering//Proceeding of the 4th International Symposium on Neural Networks. Nanjing, China, 2007 : 506-514.
  • 6Yan Liu, Bojan Cukic, Srikanth Gururajan. Decompose and combine--a fast training algorithm for SVDD. United States Institute of Peace Technical Report, V&V of Adaptive Systems [ EB/OL ]. http: //sarpresults. ivv. nasa. gov/ DownloadFile/35/19/Decompose G20 and %20Combine%20-G 20AG 20Fast% 20Training% 20Algorithm% 20for% goSVDD, pdf.
  • 7Jong Min Lee, ChangKyoo Yoo, Sang Wook Choi, Veter A Vanrolleghem, ln-Beum Lee. Nonlinear process monitoring using kernel principal component analysis. Chemical Engineering Science, 2004, 59 (1) : 223- 234.
  • 8Shao Jidong, Rong Gang. Nonlinear process monitoring based on maximum variance unfolding projections. Expert Systems with Applications, 2009, 36:11332 - 11340.
  • 9Zhang Z Y, Zha H Y. Principal manifolds and nonlinear dimensionality reduction via tangent space alignment. Society for Industrial and Applied Mathematics Journal of Scientific Computing, 2004, 26 (1) : 313 338.
  • 10Tax D M J, Duin R P W. Support vector data description. Machine Learning, 2004, 54 (1) : 45- 66.

共引文献62

同被引文献9

引证文献4

二级引证文献9

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部