Fault detection in nonlinear chemical processes based on kernel entropy component analysis and angular structure

被引:0
|
作者
Qingchao Jiang
Xuefeng Yan
Zhaomin Lv
Meijin Guo
机构
[1] East China University of Science and Technology,Key Laboratory of Advanced Control and Optimization for Chemical Processes of Ministry of Education
[2] East China University of Science and Technology,State Key Laboratory of Bioreactor Engineering
来源
关键词
Kernel Entropy Component Analysis; Process Monitoring; Fault Detection; Angular Structure;
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中图分类号
学科分类号
摘要
Considering that kernel entropy component analysis (KECA) is a promising new method of nonlinear data transformation and dimensionality reduction, a KECA based method is proposed for nonlinear chemical process monitoring. In this method, an angle-based statistic is designed because KECA reveals structure related to the Renyi entropy of input space data set, and the transformed data sets are produced with a distinct angle-based structure. Based on the angle difference between normal status and current sample data, the current status can be monitored effectively. And, the confidence limit of the angle-based statistics is determined by kernel density estimation based on sample data of the normal status. The effectiveness of the proposed method is demonstrated by case studies on both a numerical process and a simulated continuous stirred tank reactor (CSTR) process. The KECA based method can be an effective method for nonlinear chemical process monitoring.
引用
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页码:1181 / 1186
页数:5
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