Structural and parametric identification of soft sensors models for process plants based on robust regression and information criteria
- Authors: Digo G.B.1, Digo N.B.1, Kozlov A.V.2, Samotylova S.A.3, Torgashov A.Y.1
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Affiliations:
- Institute of Automation and Control Processes, Far Eastern Branch
- “OJSC Gazpromneft-Omsk Refinery”
- Far Eastern Federal University
- Issue: Vol 78, No 4 (2017)
- Pages: 724-731
- Section: Automation in Industry
- URL: https://ogarev-online.ru/0005-1179/article/view/150584
- DOI: https://doi.org/10.1134/S0005117917040130
- ID: 150584
Cite item
Abstract
Approach to the solution of a problem of structural and parametrical identification of models of the soft sensors (SS) of technological plants on the basis of robust regression and information criteria is proposed. The robust regression is used for model parameter estimation, and choosing the best model structure in the sense of information criteria. SS is developed by means of the proposed approach which was tested in control systems for optimization of the process operation of gas separation section of fluid catalytic cracking unit of “OJSC Gazpromneft-Omsk Refinery.”
About the authors
G. B. Digo
Institute of Automation and Control Processes, Far Eastern Branch
Email: torgashov@iacp.dvo.ru
Russian Federation, Vladivostok
N. B. Digo
Institute of Automation and Control Processes, Far Eastern Branch
Email: torgashov@iacp.dvo.ru
Russian Federation, Vladivostok
A. V. Kozlov
“OJSC Gazpromneft-Omsk Refinery”
Email: torgashov@iacp.dvo.ru
Russian Federation, Omsk
S. A. Samotylova
Far Eastern Federal University
Email: torgashov@iacp.dvo.ru
Russian Federation, Vladivostok
A. Yu. Torgashov
Institute of Automation and Control Processes, Far Eastern Branch
Author for correspondence.
Email: torgashov@iacp.dvo.ru
Russian Federation, Vladivostok
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