![[Book Cover]](../covergif/0131011715.gif)
|
Fuzzy Sets and Fuzzy Logic: Theory and Applications, 1/e
George J. Klir, State University of New York, Binghamton
Bo Yuan
Published May, 1995 by Prentice Hall PTR (ECS Professional)
Copyright 1995, 592 pp.
Cloth
ISBN 0-13-101171-5
|
Sign up for future mailings on this subject.
See other books about:
Neural Networks and Fuzzy Systems-Computer Science
Fuzzy Systems/Control-Electrical Engineering
Neural Networks/Fuzzy Systems-Electrical Engineering
|

Reflecting the tremendous advances that have taken place in the study
of fuzzy set theory and fuzzy logic from 1988 to the present, this
book not only details the theoretical advances in these areas, but
considers a broad variety of applications of fuzzy sets and fuzzy
logic as well.
details the advances that have taken place in fuzzy set
theory and fuzzy logic in recent years.
requires only a basic knowledge of classical (nonfuzzy)
set theory, classical (two-valued) logic, and probability theory.
includes all bibliographical, historical, and other side
remarks in the notes that follow each individual chapter.
includes a set of exercises after each chapter.
offers an overview of neural networks, genetic algorithms,
and rough sets in Appendices A-C.
includes a glossary of key concepts and a glossary of symbols.
I. THEORY.
1. From Classical (Crisp) Sets to Fuzzy Sets: A Grand Paradigm
Shift.
Introduction. Crisp Sets: An Overview. Fuzzy Sets: Basic
Types. Fuzzy Sets: Basic Concepts. Characteristics and Significance
of the Paradigm Shift. Notes. Exercises.
2. Fuzzy Sets versus Crisp Sets.
Additional Properties of -Cuts. Representations of Fuzzy
Sets. Extension Principle for Fuzzy Sets. Notes. Exercises.
3. Operations on Fuzzy Sets.
Types of Operations. Fuzzy Complements. Fuzzy Intersections:
t- Norms. Fuzzy Unions: t-Conorms. Combinations of Operations. Aggregation
Operations. Notes. Exercises.
4. Fuzzy Arithmetic.
Fuzzy Numbers. Linguistic Variables. Arithmetic Operations
on Intervals. Arithmetic Operations on Fuzzy Numbers. Lattice of Fuzzy
Numbers. Fuzzy Equations. Notes. Exercises.
5. Fuzzy Relations.
Crisp versus Fuzzy Relations. Projections and Cylindric
Extensions. Binary Fuzzy Relations. Binary Relations on a Single Set.
Fuzzy Equivalence Relations. Fuzzy Compatibility Relations. Fuzzy
Ordering Relations. Fuzzy Morphisms. Sup-i Compositions of Fuzzy Relations.
Inf- Compositions of Fuzzy Relations. Notes. Exercises.
6. Fuzzy Relation Equations.
General Discussion. Problem Partitioning. Solution Method.
Fuzzy Relation Equations Based on Sup-i Compositions. Fuzzy Relation
Equations Based on Inf-Compositions. Approximate Solutions. The Use
of Neural Networks. Notes. Exercises.
7. Possibility Theory.
Fuzzy Measures. Evidence Theory. Possibility Theory. Fuzzy
Sets and Possibility Theory. Possibility Theory versus Probability
Theory. Notes. Exercises.
8. Fuzzy Logic.
Classical Logic: An Overview. Multivalued Logics. Fuzzy
Propositions. Fuzzy Quantifiers. Linguistic Hedges. Inference from
Conditional Fuzzy Propositions. Inference from Conditional and Qualified
Propositions. Inference from Quantified Propositions. Notes. Exercises.
9. Uncertainty-Based Information.
Information and Uncertainty. Nonspecificity of Crisp Sets.
Nonspecificity of Fuzzy Sets. Fuzziness of Fuzzy Sets. Uncertainty
in Evidence Theory. Summary of Uncertainty Measures. Principles of
Uncertainty. Notes. Exercises.
II. APPLICATIONS.
10. Constructing Fuzzy Sets and Operations on Fuzzy Sets.
General Discussion. Methods of Construction: An Overview.
Direct Methods with One Expert. Direct Methods with Multiple Experts.
Indirect Methods with One Expert. Indirect Methods with Multiple Experts.
Constructions from Sample Data. Notes. Exercises.
11. Approximate Reasoning.
Fuzzy Expert Systems: An Overview. Fuzzy Implications. Selection
of Fuzzy Implications. Multiconditional Approximate Reasoning. The
Role of Fuzzy Relation Equations. Interval-Valued Approximate Reasoning.
Notes. Exercises.
12. Fuzzy Systems.
General Discussion. Fuzzy Controllers: An Overview. Fuzzy
Controllers: An Example. Fuzzy Systems and Neural Networks. Fuzzy
Neural Networks. Fuzzy Automata. Fuzzy Dynamic Systems. Notes. Exercises.
13. Pattern Recognition.
Introduction. Fuzzy Clustering. Fuzzy Pattern Recognition.
Fuzzy Image Processing. Notes. Exercises.
14. Fuzzy Databases and Information Retrieval Systems.
General Discussion. Fuzzy Databases. Fuzzy Information Retrieval.
Notes. Exercises.
15. Fuzzy Decision Making.
General Discussion. Individual Decision Making. Multiperson
Decision Making. Multicriteria Decision Making. Multistage Decision
Making. Fuzzy Ranking Methods. Fuzzy Linear Programming. Notes. Exercises.
16. Engineering Applications.
Introduction. Civil Engineering. Mechanical Engineering.
Industrial Engineering. Computer Engineering. Reliability Theory.
Robotics. Notes. Exercises.
17. Miscellaneous Applications.
Introduction. Medicine. Economics. Fuzzy Systems and Genetic
Algorithms. Fuzzy Regression. Interpersonal Communication. Other Applications.
Notes. Exercises.
Appendix A. Neural Networks: An Overview.
Appendix B. Genetic Algorithms: An Overview.
Appendix C. Rough Sets versus Fuzzy Sets.
Appendix D. Proofs of Some Mathematical Theorems.
Appendix E. Glossary of Key Concepts.
Appendix F. Glossary of Symbols.
Bibliography.
Bibliographical Index.
Name Index.
Subject Index.
|