Fuzzy Reasoning in Information, Decision and Control Systems

Great progresses have been made in the application of fuzzy set theory and fuzzy logic. Most remarkable area of application is 'fuzzy control', where fuzzy logic was first applied to plant control systems and its use is expanding to consumer products. Most of fuzzy control systems uses fuz...

Full description

Bibliographic Details
Corporate Author: SpringerLink (Online service)
Format: Electronic
Language:English
Published: Dordrecht : Springer Netherlands, 1994.
Series:International Series on Microprocessor-Based and Intelligent Systems Engineering ; 11
Subjects:
Online Access:View fulltext via EzAccess
Description
Summary:Great progresses have been made in the application of fuzzy set theory and fuzzy logic. Most remarkable area of application is 'fuzzy control', where fuzzy logic was first applied to plant control systems and its use is expanding to consumer products. Most of fuzzy control systems uses fuzzy inference with max-min or max-product composition, similar to the algorithm that first used by Mamdani in 1970s. Some algorithms are developed to refine fuzzy controls systems but the main part of algorithm stays the same. Triggered by the success of fuzzy control systems, other ways of applying fuzzy set theory are also investigated. They are usually referred to as 'fuzzy expert sys­ tems', and their purpose are to combine the idea of fuzzy theory with AI based approach toward knowledge processing. These approaches can be more generally viewed as 'fuzzy information processing', that is to bring fuzzy idea into informa­ tion processing systems.
Physical Description:XX, 568 p. online resource.
ISBN:9780585346526