ScienceDirect® Home Skip Main Navigation Links
You have guest access to ScienceDirect. Find out more.
 
Home
Browse
My Settings
Alerts
Help
 Quick Search
 Search tips (Opens new window)
    Clear all fields    
Expert Systems with Applications
Volume 33, Issue 2, August 2007, Pages 274-285
 
Font Size: Decrease Font Size  Increase Font Size
 Abstract - selected
Article
Purchase PDF (761 K)

  E-mail Article   
  Add to my Quick Links   
Bookmark and share in 2collab (opens in new window)
Request permission to reuse this article
  Cited By in Scopus (0)
 
 
 
Related Articles in ScienceDirect
View More Related Articles
 
View Record in Scopus
 
doi:10.1016/j.eswa.2006.05.010    How to Cite or Link Using DOI (Opens New Window)
Copyright © 2006 Elsevier Ltd All rights reserved.

Identification of contributing variables using kernel-based discriminant modeling and reconstruction

Hyun-Woo ChoCorresponding Author Contact Information, a, E-mail The Corresponding Author

aDepartment of Industrial and Information Engineering, University of Tennessee, Knoxville, TN 37996, USA

Available online 5 June 2006.

Purchase the full-text article



References and further reading may be available for this article. To view references and further reading you must purchase this article.

Abstract

Fault identification is one of essential operational tasks required for process safety and consistent production of high quality final products. The objective of fault identification is to identify process variables responsible for causing a specific fault in the process. Such an identification of contributing process variables helps process operators or engineers to diagnose a root cause of the fault more effectively. A new nonlinear fault identification method is developed using a nonlinear kernel-based Fisher discriminant analysis (KFDA). The proposed method performs a pair-wise KFDA on normal and fault data. Thus it characterizes the change of each process variable’s contribution relative to normal operating conditions when a specific fault occurs. A case study on the Tennessee Eastman process has shown that the proposed method produces reliable identification results. Moreover, the proposed method outperforms the contribution chart approach based on linear PCA. The use of a nonlinear technique of KFDA in a fault identification task was shown to be a promising tool for determining key process variables of various faults.

Keywords: Fault identification; Kernel Fisher discriminant analysis (KFDA); Nonlinear feature extraction; Reconstruction; Principal component analysis (PCA); Contribution chart

Article Outline

1. Introduction
2. Review of kernel Fisher discriminant analysis
3. KFDA based fault identification with reconstruction
3.1. Identification index
3.2. Reconstruction of data in original input space
3.3. KFDA discriminant score vectors and contributions of process variables
3.4. Procedure of the proposed fault identification method
4. Application
4.1. Description of test process
4.2. Simulation data and fault identification
4.3. Fault identification results
5. Concluding remarks
References








 
Home
Browse
My Settings
Alerts
Help
Elsevier.com (Opens new window)
About ScienceDirect  |  Contact Us  |  Information for Advertisers  |  Terms & Conditions  |  Privacy Policy
Copyright © 2008 Elsevier B.V. All rights reserved. ScienceDirect® is a registered trademark of Elsevier B.V.