Constrained control of uncertain, time-varying, discrete-time systems [electronic resource] : an interpolation-based approach / Hoai-Nam Nguyen.
2014
QA402.3 .N52 2014
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Title
Constrained control of uncertain, time-varying, discrete-time systems [electronic resource] : an interpolation-based approach / Hoai-Nam Nguyen.
ISBN
9783319028279 electronic book
3319028278 electronic book
9783319028262
3319028278 electronic book
9783319028262
Published
Cham : Springer, 2014.
Language
English
Description
1 online resource (xiv, 196 pages) : illustrations.
Item Number
10.1007/978-3-319-02827-9 doi
Call Number
QA402.3 .N52 2014
Dewey Decimal Classification
629.8
Summary
A comprehensive development of interpolating control, this monograph demonstrates the reduced computational complexity of a ground-breaking technique compared with the established model predictive control. The text deals with the regulation problem for linear, time-invariant, discrete-time uncertain dynamical systems having polyhedral state and control constraints, with and without disturbances, and under state or output feedback. For output feedback a non-minimal state-space representation is used with old inputs and outputs as state variables. Constrained Control of Uncertain, Time-Varying, Discrete-time Systems details interpolating control in both its implicit and explicit forms. In the former at most two linear-programming or one quadratic-programming problem are solved on-line at each sampling instant to yield the value of the control variable. In the latter the control law is shown to be piecewise affine in the state, and so the state space is partitioned into polyhedral cells so that at each sampling interval the cell to which the measured state belongs must be determined. Interpolation is performed between vertex control, and a user-chosen control law in its maximal admissible set surrounding the origin. Novel proofs of recursive feasibility and asymptotic stability of the vertex control law, and of the interpolating control law are given. Algorithms for implicit and explicit interpolating control are presented in such a way that the reader may easily realize them. Each chapter includes illustrative examples, and comparisons with model predictive control in which the disparity in computational complexity is shown to be particularly in favour of interpolating control for high-order systems, and systems with uncertainty. Furthermore, the performance of the two methods proves similar except in those cases when a solution cannot be found with model predictive control at all. The book concludes with two high dimensional examples and a benchmark robust model predictive control problem: the non-isothermal continuously-stirred-tank reactor. For academic control researchers and students or for control engineers interested in implementing constrained control systems Constrained Control of Uncertain, Time-Varying, Discrete-time Systems will provide an attractive low-complexity control alternative for cases in which model predictive control is currently attempted.
Bibliography, etc. Note
Includes bibliographical references and index.
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Access limited to authorized users.
Source of Description
Description based on print version record.
Series
Lecture notes in control and information sciences ; 451. 0170-8643
Available in Other Form
Constrained control of uncertain, time-varying discrete-time systems
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Table of Contents
Introduction
Part I. Background
Set-Theoretic Methods in Control
Optimal and Constrained Control: An Overview
Part II. Interpolating Control
Interpolating Control: Nominal State Feedback Case
Interpolating Control: Robust State Feedback Case
Interpolating Control: Output Feedback Case
Part III. Applications
High-order Examples
A Benchmark Problem: The Non-Isothermal Continuous Stirred Tank Reactor.
Part I. Background
Set-Theoretic Methods in Control
Optimal and Constrained Control: An Overview
Part II. Interpolating Control
Interpolating Control: Nominal State Feedback Case
Interpolating Control: Robust State Feedback Case
Interpolating Control: Output Feedback Case
Part III. Applications
High-order Examples
A Benchmark Problem: The Non-Isothermal Continuous Stirred Tank Reactor.