Nonlinear predictive control using Wiener models : computationally efficient approaches for polynomial and neural structures /

This book presents computationally efficient MPC solutions. The classical model predictive control (MPC) approach to control dynamical systems described by the Wiener model uses an inverse static block to cancel the influence of process nonlinearity. Unfortunately, the model's structure is limi...

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Bibliographic Details
Main Authors: Ławryńczuk, Maciej
Published: Springer,
Publisher Address: Cham :
Publication Dates: [2022]
Literature type: Book
Language: English
Series: Studies in systems, decision and control, volume 389
Subjects:
Summary: This book presents computationally efficient MPC solutions. The classical model predictive control (MPC) approach to control dynamical systems described by the Wiener model uses an inverse static block to cancel the influence of process nonlinearity. Unfortunately, the model's structure is limited, and it gives poor control quality in the case of an imperfect model and disturbances. An alternative is to use the computationally demanding MPC scheme with on-line nonlinear optimisation repeated at each sampling instant. A linear approximation of the Wiener model or the predicted trajectory is found on-line. As a result, quadratic optimisation tasks are obtained. Furthermore, parameterisation using Laguerre functions is possible to reduce the number of decision variables. Simulation results for ten benchmark processes show that the discussed MPC algorithms lead to excellent control quality. For a neutralisation reactor and a fuel cell, essential advantages of neural Wiener models are demonstrated.
Carrier Form: xxiii, 343 pages : illustrations (chiefly color) ; 24 cm.
Bibliography: Includes bibliographical references and index.
ISBN: 9783030838140
3030838145
Index Number: TJ217
CLC: TP273
Call Number: TP273/A967