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Implementation of self-tuning regulators with variable forgetting factors

โœ Scribed by T.R. Fortescue; L.S. Kershenbaum; B.E. Ydstie


Publisher
Elsevier Science
Year
1981
Tongue
English
Weight
466 KB
Volume
17
Category
Article
ISSN
0005-1098

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โœฆ Synopsis


A modified version of the self-toning regulator having limited adaptability has been successfully implemented on a large-scale chemical pilot plant. The new algorithm uses a least-squares estimator with variable weighting of past data; at each step a weighting factor is chosen to maintain constant a scalar measure of the information content of the estimator. It is shown that, for nearly deterministic systems, such an approach enables the parameter estimates to follow both slow and sudden changes in the plant dynamics. Furthermore, the use of a variable forgetting factor with correct choice of information bound can avoid one of the major difficulties associated with constant exponential weighting of past data--namely, 'blowing-up' of the covariance matrix of the estimates and subsequent unstable control. Accordingly, the control algorithm described here may he well suited to the regulation of plants which would otherwise require periodic re-toning of control constants.


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Comments on: โ€˜Implementation of self-tun
โœ S.P. Sanoff; P.E. Wellstead ๐Ÿ“‚ Article ๐Ÿ“… 1983 ๐Ÿ› Elsevier Science ๐ŸŒ English โš– 170 KB

Almtract--The similarities are pointed out between the variable forgetting factor given in the paper by Fortescue, Kershenbaum and Ydstie and that given in Wellstead and Sanoff. Moreover, it is shown that the method of Fortescue, Kershenbaum and Ydstie can be made significantly more efficient, compu

Convergence and stability properties of
โœ B.E. Ydstie; R.W.H. Sargent ๐Ÿ“‚ Article ๐Ÿ“… 1986 ๐Ÿ› Elsevier Science ๐ŸŒ English โš– 223 KB

Ahstraet--A modified version of Fortescue's adaptive regulator is described, based on a minimum-variance estimator with variable forgetting factor and a d-step ahead control law. As in the Fortescue algorithm, the forgetting factor is chosen at each step to keep a measure of the information content