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Article
Likelihood and Bayesian Methods for Accurate Identification of Measurement Biases in Pseudo Steady-State Processes
Chemical Engineering Research and Design
  • Sriram Devanathan, Iowa State University
  • Stephen B. Vardeman, Iowa State University
  • Derrick K. Rollins, Sr., Iowa State University
Document Type
Article
Publication Version
Accepted Manuscript
Publication Date
1-1-2005
DOI
10.1205/cherd.04270
Abstract

Two new approaches are presented for improved identification of measurement biases in linear pseudo steady-state processes. Both are designed to detect a change in the mean of a measured variable leading to an inference regarding the presence of a biased measurement. The first method is based on a likelihood ratio test for the presence of a mean shift. The second is based on a Bayesian decision rule (relying on prior distributions for unknown parameters) for the detection of a mean shift. The performance of these two methods is compared with that of a method given by Devanathan et al. (2000). For the process studied, both techniques were found to have higher identification power than the method of Devanathan et al. and appears to have excellent but sightly lower type I error performance than the Devanathan et al. method.

Comments

This is an accepted manuscript of an article published as Likelihood and Bayesian methods for accurate identification of measurement biases in pseudo steady-state processes. Chemical Engineering Research and Design: Part A, 2005, Vol. 83(A12), pp. 1391-1398. With Sriram Devanathan and Derrick Rollins. © 2005. This manuscript version is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/licenses/by-nc-nd/4.0/

Creative Commons License
Creative Commons Attribution-NonCommercial-No Derivative Works 4.0 International
Copyright Owner
Institute of Chemical Engineers
Language
en
File Format
application/pdf
Citation Information
Sriram Devanathan, Stephen B. Vardeman and Derrick K. Rollins. "Likelihood and Bayesian Methods for Accurate Identification of Measurement Biases in Pseudo Steady-State Processes" Chemical Engineering Research and Design Vol. 83 Iss. 12 (2005) p. 1391 - 1398
Available at: http://works.bepress.com/stephen_vardeman/27/