DocumentCode :
486217
Title :
Approximate Model Identification via Set-Theoretic Estimation
Author :
Pearson, Ronald K.
Author_Institution :
Engineering Physics Laboratory, E. I. du Pont de Nemours & Company (Inc.), Wilmington, Delaware 19898
fYear :
1985
fDate :
19-21 June 1985
Firstpage :
144
Lastpage :
150
Abstract :
The performance achievable with a model-based process control strategy increases with the fidelity of the model used, but so do the cost and complexity of these models. This trade-off has led Prater to propose the "principle of optimum sloppiness"--make the model only as detailed as necessary to minimize cost and complexity. But model accuracy is difficult to quantify a priori, especially for simplified models of complex processes. This paper considers the "parameter uncertainty intervals" described by Milanese and Belforte as a method of determining model uncertainty and develops a simple recursive algorithm for evaluating these parameter bounds. A numerical example is included to illustrate the utility of the method, and its application to the problem of approximate process modeling is discussed.
Keywords :
Centralized control; Control system synthesis; Costs; Estimation error; Least squares approximation; Optimal control; Parameter estimation; Physics; Predictive models; Process control;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
American Control Conference, 1985
Conference_Location :
Boston, MA, USA
Type :
conf
Filename :
4788595
Link To Document :
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