Evolving Rule-Based Models

Lieferzeit: Lieferbar innerhalb 14 Tagen

106,99 

A Tool for Design of Flexible Adaptive Systems, Studies in Fuzziness and Soft Computing 92

ISBN: 3790825069
ISBN 13: 9783790825060
Autor: Angelov, Plamen P
Verlag: Physica Verlag
Umfang: xiii, 214 S.
Erscheinungsdatum: 21.10.2010
Auflage: 1/2002
Produktform: Kartoniert
Einband: KT

The objects of modelling and control change due to dynamical characteristics, fault development or simply ageing. There is a need to up-date models inheriting useful structure and parameter information. The book gives an original solution to this problem with a number of examples. It treats an original approach to on-line adaptation of rule-based models and systems described by such models. It combines the benefits of fuzzy rule-based models suitable for the description of highly complex systems with the original recursive, non iterative technique of model evolution without necessarily using genetic algorithms, thus avoiding computational burden making possible real-time industrial applications. Potential applications range from autonomous systems, on-line fault detection and diagnosis, performance analysis to evolving (self-learning) intelligent decision support systems.

Artikelnummer: 996348 Kategorie:

Beschreibung

The idea about this book has evolved during the process of its preparation as some of the results have been achieved in parallel with its writing. One reason for this is that in this area of research results are very quickly updated. Another is, possibly, that a strong, unchallenged theoretical basis in this field still does not fully exist. From other hand, the rate of innovation, competition and demand from different branches of industry (from biotech industry to civil and building engineering, from market forecasting to civil aviation, from robotics to emerging e-commerce) is increasingly pressing for more customised solutions based on learning consumers behaviour. A highly interdisciplinary and rapidly innovating field is forming which focus is the design of intelligent, self-adapting systems and machines. It is on the crossroads of control theory, artificial and computational intelligence, different engineering disciplines borrowing heavily from the biology and life sciences. It is often called intelligent control, soft computing or intelligent technology. Some other branches have appeared recently like intelligent agents (which migrated from robotics to different engineering fields), data fusion, knowledge extraction etc., which are inherently related to this field. The core is the attempts to enhance the abilities of the classical control theory in order to have more adequate, flexible, and adaptive models and control algorithms.

Autorenporträt

Inhaltsangabe1 Introduction.- I System Modelling: Basic Principles.- 2 Conventional Models.- 3 Flexible Models.- II Flexible Models Identification.- 4 Non-linear Approach to (Off-line) Identification of Flexible Models.- 5 Quasi-linear Approach to FRB Models (Off-line) Identification.- 6 Intelligent and Smart Adaptive Systems.- 7 On-line Identification of Flexible TSK-type Models.- III Engineering Applications.- 8 Modelling Indoor Climate Control Systems.- 9 On-line Modelling of Fermentation Processes.- 10 Intelligent Risk Assessment.- 11 Conclusions.- References.

Das könnte Ihnen auch gefallen …