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Advances in Fuzzy Control (Paperback, Softcover reprint of the original 1st ed. 1998): Dimiter Driankov, Rainer Palm Advances in Fuzzy Control (Paperback, Softcover reprint of the original 1st ed. 1998)
Dimiter Driankov, Rainer Palm
R1,600 Discovery Miles 16 000 Ships in 10 - 15 working days

Model-based fuzzy control uses a given conventional or a fuzzy open loop of the plant under control in order to derive the set of fuzzy if-then rules constituting the corresponding fuzzy controller. Furthermore, of central interest are the consequent stability, performance, and robustness analysis of the resulting closed loop system involving a conventional model and a fuzzy controller, or a fuzzy model and a fuzzy controller. The major objective of the model-based fuzzy control is to use the full available range of existing linear and nonlinear design of such fuzzy controllers which have better stability, performance, and robustness properties than the corresponding non-fuzzy controllers designed by the use of these same techniques.

An Introduction to Fuzzy Control (Paperback, Softcover reprint of hardcover 2nd ed. 1996): L. Ljung An Introduction to Fuzzy Control (Paperback, Softcover reprint of hardcover 2nd ed. 1996)
L. Ljung; Assisted by R. Palm; Dimiter Driankov; Assisted by B. Graham; Hans Hellendoorn; Assisted by …
R4,982 Discovery Miles 49 820 Ships in 10 - 15 working days

Fuzzy controllers are a class of knowledge based controllers using artificial intelligence techniques with origins in fuzzy logic. They can be found either as stand-alone control elements or as integral parts of a wide range of industrial process control systems and consumer products. Applications of fuzzy controllers are an established practice for Japanese manufacturers, and are spreading in Europe and America. The main aim of this book is to show that fuzzy control is not totally ad hoc, that there exist formal techniques for the analysis of a fuzzy controller, and that fuzzy control can be implemented even when no expert knowledge is available. The book is mainly oriented to control engineers and theorists, although parts can be read without any knowledge of control theory and may interest AI people. This 2nd, revised edition incorporates suggestions from numerous reviewers and updates and reorganizes some of the material.

Model Based Fuzzy Control - Fuzzy Gain Schedulers and Sliding Mode Fuzzy Controllers (Paperback, Softcover reprint of the... Model Based Fuzzy Control - Fuzzy Gain Schedulers and Sliding Mode Fuzzy Controllers (Paperback, Softcover reprint of the original 1st ed. 1997)
Rainer Palm; Foreword by K.M. Passino; Dimiter Driankov, Hans Hellendoorn
R1,528 Discovery Miles 15 280 Ships in 10 - 15 working days

Model Based Fuzzy Control uses a given conventional or fuzzy open loop model of the plant under control to derive the set of fuzzy rules for the fuzzy controller. Of central interest are the stability, performance, and robustness of the resulting closed loop system. The major objective of model based fuzzy control is to use the full range of linear and nonlinear design and analysis methods to design such fuzzy controllers with better stability, performance, and robustness properties than non-fuzzy controllers designed using the same techniques. This objective has already been achieved for fuzzy sliding mode controllers and fuzzy gain schedulers - the main topics of this book. The primary aim of the book is to serve as a guide for the practitioner and to provide introductory material for courses in control theory.

Fuzzy Logic Techniques for Autonomous Vehicle Navigation (Paperback, Softcover reprint of hardcover 1st ed. 2001): Dimiter... Fuzzy Logic Techniques for Autonomous Vehicle Navigation (Paperback, Softcover reprint of hardcover 1st ed. 2001)
Dimiter Driankov, Alessandro Saffiotti
R4,519 Discovery Miles 45 190 Ships in 10 - 15 working days

In the past decade a critical mass of work that uses fuzzy logic for autonomous vehicle navigation has been reported. Unfortunately, reports of this work are scattered among conference, workshop, and journal publications that belong to different research communities (fuzzy logic, robotics, artificial intelligence, intelligent control) and it is therefore not easily accessible either to the new comer or to the specialist. As a result, researchers in this area may end up reinventing things while being unaware of important existing work. We believe that research and applications based on fuzzy logic in the field of autonomous vehicle navigation have now reached a sufficient level of maturity, and that it should be suitably reported to the largest possible group of interested practitioners, researches, and students. On these grounds, we have endeavored to collect some of the most representative pieces of work in one volume to be used as a reference. Our aim was to provide a volume which is more than "yet another random collection of papers," and gives the reader some added value with respect to the individual papers. In order to achieve this goal we have aimed at: * Selecting contributions which are representative of a wide range of prob lems and solutions and which have been validated on real robots; and * Setting the individual contributions in a clear framework, that identifies the main problems of autonomous robotics for which solutions based on fuzzy logic have been proposed.

Fuzzy Logic Techniques for Autonomous Vehicle Navigation (Hardcover, 2001 ed.): Dimiter Driankov, Alessandro Saffiotti Fuzzy Logic Techniques for Autonomous Vehicle Navigation (Hardcover, 2001 ed.)
Dimiter Driankov, Alessandro Saffiotti
R4,737 Discovery Miles 47 370 Ships in 10 - 15 working days

In the past decade a critical mass of work that uses fuzzy logic for autonomous vehicle navigation has been reported. Unfortunately, reports of this work are scattered among conference, workshop, and journal publications that belong to different research communities (fuzzy logic, robotics, artificial intelligence, intelligent control) and it is therefore not easily accessible either to the new comer or to the specialist. As a result, researchers in this area may end up reinventing things while being unaware of important existing work. We believe that research and applications based on fuzzy logic in the field of autonomous vehicle navigation have now reached a sufficient level of maturity, and that it should be suitably reported to the largest possible group of interested practitioners, researches, and students. On these grounds, we have endeavored to collect some of the most representative pieces of work in one volume to be used as a reference. Our aim was to provide a volume which is more than "yet another random collection of papers," and gives the reader some added value with respect to the individual papers. In order to achieve this goal we have aimed at: * Selecting contributions which are representative of a wide range of prob lems and solutions and which have been validated on real robots; and * Setting the individual contributions in a clear framework, that identifies the main problems of autonomous robotics for which solutions based on fuzzy logic have been proposed.

Fuzzy Model Identification - Selected Approaches (Paperback, Softcover reprint of the original 1st ed. 1997): Hans Hellendoorn,... Fuzzy Model Identification - Selected Approaches (Paperback, Softcover reprint of the original 1st ed. 1997)
Hans Hellendoorn, Dimiter Driankov
R1,572 Discovery Miles 15 720 Ships in 10 - 15 working days

During the past few years two principally different approaches to the design of fuzzy controllers have emerged: heuristics-based design and model-based design. The main motivation for the heuristics-based design is given by the fact that many industrial processes are still controlled in one of the following two ways: - The process is controlled manually by an experienced operator. - The process is controlled by an automatic control system which needs manual, on-line 'trimming' of its parameters by an experienced operator. In both cases it is enough to translate in terms of a set of fuzzy if-then rules the operator's manual control algorithm or manual on-line 'trimming' strategy in order to obtain an equally good, or even better, wholly automatic fuzzy control system. This implies that the design of a fuzzy controller can only be done after a manual control algorithm or trimming strategy exists. It is admitted in the literature on fuzzy control that the heuristics-based approach to the design of fuzzy controllers is very difficult to apply to multiple-inputjmultiple-output control problems which represent the largest part of challenging industrial process control applications. Furthermore, the heuristics-based design lacks systematic and formally verifiable tuning tech niques. Also, studies of the stability, performance, and robustness of a closed loop system incorporating a heuristics-based fuzzy controller can only be done via extensive simulations."

Model Based Fuzzy Control - Fuzzy Gain Schedulers and Sliding Mode Fuzzy Controllers (Hardcover, 1997 ed.): Rainer Palm Model Based Fuzzy Control - Fuzzy Gain Schedulers and Sliding Mode Fuzzy Controllers (Hardcover, 1997 ed.)
Rainer Palm; Foreword by K.M. Passino; Dimiter Driankov, Hans Hellendoorn
R1,679 Discovery Miles 16 790 Ships in 10 - 15 working days

Model based fuzzy control uses a given conventional or fuzzy open loop model of the plant under control to derive the set of fuzzy if-then rules for the fuzzy controller. Of central interest are the stability, performance, and robustness properties of the resulting closed loop system involving a conventional or fuzzy model and a fuzzy controller. The major objective of model based fuzzy control is to use the full range of linear and nonlinear design and analysis methods to design such fuzzy controllers with properties superior to non-fuzzy controllers designed using the same techniques. This objective has already been achieved for fuzzy sliding mode controllers and fuzzy gain schedulers - the main topics of this book. A comprehensive and up-to-date treatment of model based fuzzy control and its relationship to conventional control, the text is intended to serve as a guide for scientists and practitioners and to provide introductory material on fuzzy control for courses in control theory.

An Introduction to Fuzzy Control (Hardcover, 2nd rev. ed. 1996): L. Ljung An Introduction to Fuzzy Control (Hardcover, 2nd rev. ed. 1996)
L. Ljung; Assisted by R. Palm; Dimiter Driankov; Assisted by B. Graham; Hans Hellendoorn; Assisted by …
R3,164 Discovery Miles 31 640 Ships in 10 - 15 working days

Fuzzy controllers are a class of knowledge based controllers using artificial intelligence techniques with origins in fuzzy logic. They can be found either as stand-alone control elements or as integral parts of distributed control systems including conventional controllers in a wide range of industrial process control systems and consumer products. Applications of fuzzy controllers have become a well established practice for Japanese manufacturers of control equipment and systems, and are becoming more and more common in Europe and America. The main aim of this book is to show that fuzzy control is not totally ad hoc, that there exist formal techniques for the analysis of a fuzzy controller, and that fuzzy control can be implemented even when no expert knowledge is available. Thus the book is mainly oriented toward control engineers and theorists, although parts can be read without any knowledge of control theory and may be of interest to Al people. This 2nd, revised edition incorporates suggestions from numerous reviewers and updates and reorganizes some of the material.

Fuzzy Logic and Fuzzy Control - IJCAI '91 Workshops on Fuzzy Logic and Fuzzy Control, Sydney, Australia, August 24, 1991.... Fuzzy Logic and Fuzzy Control - IJCAI '91 Workshops on Fuzzy Logic and Fuzzy Control, Sydney, Australia, August 24, 1991. Proceedings (Paperback, 1994 ed.)
Dimiter Driankov, Peter W. Eklund, Anca L Ralescu
R1,966 Discovery Miles 19 660 Ships in 10 - 15 working days

This volume contains the thoroughly refereed and revised papers accepted for presentation at the IJCAI '91 Workshops on Fuzzy Logic and Fuzzy Control, held during the International Joint Conference on AI at Sydney, Australia in August 1991. The 14 technical contributions are devoted to several theoretical and applicational aspects of fuzzy logic and fuzzy control; they are presented in sections on theoretical aspects of fuzzy reasoning and fuzzy control, fuzzy neural networks, fuzzy control applications, fuzzy logic planning, and fuzzy circuits. In addition, there is a substantial introduction by the volume editors on the latest developments in the field that brings the papers presented into line.

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