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4 edition of Deterministic control of uncertain systems found in the catalog.

Deterministic control of uncertain systems

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Published by P. Peregrinus on behalf of the Institution of Electrical Engineers in London, U.K .
Written in English

    Subjects:
  • Automatic control.,
  • Control theory.

  • Edition Notes

    Includes bibliographical references and index.

    Statementedited by A.S.I. Zinober.
    SeriesIEE control engineering series ;, 40
    ContributionsZinober, A. S. I.
    Classifications
    LC ClassificationsTJ213 .D47 1990
    The Physical Object
    Paginationxiv, 362 p. ;
    Number of Pages362
    ID Numbers
    Open LibraryOL1917557M
    ISBN 100863411703
    LC Control Number90127082


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Deterministic control of uncertain systems Download PDF EPUB FB2

Get this from a library. Deterministic control of uncertain systems. [A S I Zinober;] -- This volume covers both the historical and current state of variable structure control, with theory illustrated by practical examples.

Among the topics examined are switching command devices. In book: Deterministic Control of Uncertain Systems, Chapter: 11, Publisher: Peregrinus London, Editors: r, pp The authors consider the deterministic control problem for a. Includes sections on: Sliding mode control with switching command devices.

Hyperplane design and CAD of variable structure control systems. Variable structure controllers for robots. The hyperstability approach to VSCS design. Nonlinear continuous feedback for robust tracking.

Control of uncertain systems with neglected dynamics. Deterministic Control of Uncertain Systems Edited by A.S.I. Zinober One of the main fields of study in the control of dynamical systems has been the effective control of time-varying systems with uncertain parameters and external disturbances.

The deterministic control of uncertain time-varying systems control is achieved using nonlinear feedback control functions, which operate effectively over a specified magnitude range of a class of system parameter variations, without the need for.

One of the main fields of study in the control of dynamical systems has been the effective control of time-varying systems with uncertain parameters and external disturbances. In contrast to stochastic adaptive controllers with identification algorithms, the deterministic control of uncertain time-varying systems has a fixed nonlinear feedback controller, which operates effectively.

Uncertain systems, deterministic control, guaranteed stability, feedback control, adaptive control. INTRODUCTION In order to predict or control the behavior of a system in the "real" world, be it phys ical, biological or socio-economic, the system analyst seeks to capture its salient features in an abstraction, a mathematical by: A Lyapunov theory approachChapter Control of uncertain systems with neglected dynamicsChapter Nonlinear composite control of a class of nominally linear singularly perturbed uncertain systemsChapter Some extensions of variable structure control theory for the control of nonlinear systemsChapter Continuous self-adaptive control.

Cite this paper as: Corless M., Leitmann G. () Deterministic control of uncertain systems. In: Byrnes C.I., Kurzhanski A.B. (eds) Modelling and Adaptive by: “This book is a concise, clear and well-organized masterpiece on robust control theory for linear systems with parameter-uncertainty.

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The presence of uncertainty in a system description has always been a critical issue in control. The main objective of Randomized Algorithms for Analysis and Control of Uncertain Systems, with Applications (Second Edition) is to introduce the reader to the fundamentals of probabilistic methods in the analysis and design of systems subject to deterministic and stochastic.

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Sergio J. Rey, in International Encyclopedia of the Social & Behavioral Sciences (Second Edition), Deterministic versus Stochastic Models. A deterministic model is one in which the values for the dependent variables of the system are completely determined by the parameters of the model.

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The Introduction presents some dynamical time-delay systems and gives the notations used in the book, states the problems and the difference between the two systems under discussion.

Different design algorithms for state feedback are proposed. In physics. Physical laws that are described by differential equations represent deterministic systems, even though the state of the system at a given point in time may be difficult to describe explicitly. In quantum mechanics, the Schrödinger equation, which describes the continuous time evolution of a system's wave function, is r, the relationship between a system's.

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Robust Control of Uncertain Dynamic Systems: A Linear State Space Approach is an ideal book for first year graduate students taking a course in robust control in aerospace, mechanical, or electrical engineering. Englisch. Book Description. Deterministic Learning Theory for Identification, Recognition, and Control presents a unified conceptual framework for knowledge acquisition, representation, and knowledge utilization in uncertain dynamic environments.

It provides systematic design approaches for identification, recognition, and control of linear uncertain systems. The success of the distributed randomized methods proposed by Roberto Tempo is witnessed by the monograph “Randomized Algorithms for Analysis and Control of Uncertain Systems”, that was published by Springer-Verlag, and that represents a pioneering textbook, lying the foundations of probabilistic methods in the analysis and design of Alma mater: Politecnico di Torino.

Deterministic Control of Uncertain Systems A.S.I. Zinober This book is a comprehensive collection of the latest in control theories that lay a solid foundation for the establishment of glocal control theory for the coming decades. In stock. Limited Quantity: 5 in stock. Free Online Library: Deterministic learning theory for identification, recognition, and control.(Brief article, Book review) by "SciTech Book News"; Publishing industry Library and information science Science and technology, general Books Book reviews Control systems.

This book directly addresses these issues from a deterministic uncertainty viewpoint and focuses on the interval parameter characterization of uncertain systems.

Various tools of analysis and design are presented in a consolidated manner. Deterministic sampling (DS) of uncertain systems is a viable alternative to random sampling (RS).

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The present book is a very timely contribution to the literature. Reliability-Based Control Design for Uncertain Systems Luis G. Crespo ∗ National Institute of Aerospace, Hampton VA,USA Sean P. Kenny † Dynamic Systems and Control Branch, NASA LaRC, Hampton VA This paper presents a robust control design methodology for systems with probabilistic parametric uncertainty.

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Stabilization of Nonlinear Uncertain Systems Miroslav Krstic and Hua Deng. Springer,ISBN Preface and Contents.

The efforts in nonlinear control over the last few years have led to the level of generality in which conceptual solutions to global Lyapunov stabilization and optimal control problems exist for all finite-dimensional continuous-time.

Uncertainty and Robustness -- Probability and Robustness of Uncertain Systems -- Elements of Probability Theory -- Uncertain Linear Systems and Robustness -- Linear Robust Control Design -- Some Limits of the Robustness Paradigm -- Probabilistic Methods for Robustness -- Monte Carlo Methods -- Randomized Algorithms in Systems and Control -- Probability Inequalities --.

This book is intended for use by scientists in the areas of automatic control, mathematics, chemical engineering and physics.

Reviews Review of the hardback:‘ an extraordinary book, establishing a new paradigm in the observability theory of nonlinear systems.’.MULTIVARIABLE CONTROL SYSTEMS by A. Megretski Analysis of Uncertain Systems1 In this lecture enhanced techniques of stability and robustness analysis of LTI systems are developed by combining the ideas of small gain theorem, zero exclusion principle, and relaxations in quadratic programming Motivation and Basic DefinitionsFile Size: KB.TY - BOOK.

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