Uncertain Rule-based Fuzzy Logic Systems: Introduction and New Directions
Breakthrough fuzzy logic techniques for handling real-world uncertainty. The world is full of uncertainty that classical fuzzy logic can't model. Now, however, there's an approach to fuzzy logic that can model uncertainty: "type-2" fuzzy logic. In this book, the developer of type-2 fuzzy logic demonstrates how it overcomes the limitations of classical fuzzy logic, enabling a wide range of applications from digital mobile communications to knowledge mining. Dr. Jerry Mendel presents a bottom-up approach that begins by introducing traditional "type-1" fuzzy logic, explains how it can be modified to handle uncertainty, and, finally, adds layers of complexity to handle increasingly sophisticated applications. Coverage includes:
Carefully balanced between theory and design, the book contains over 90 worked examples and more than 110 figures. It is ideal for engineers, scientists, computer science researchers, and mathematicians interested in AI, rule-based systems, and modeling uncertainty. Since it contains brief introductory primers on fuzzy logic and fuzzy sets, it's accessible to virtually anyone with an undergraduate B.S. degree--including computing professionals designing and implementing rule-based systems. SOFTWARE RESOURCESOnline software includes more than 30 companion MATLAB m-files for implementing a wide variety of type-1 and type-2 fuzzy logic systems. |
From inside the book
74 pages matching non-singleton type-2 FLS in this book
Page 552
Where's the rest of this book?
Results 1-3 of 74
Contents
SINGLETON TYPE2 FUZZY LOGIC | 17 |
SHORT PRIMERS ON FUZZY SETS | 19 |
SOURCES OF UNCERTAINTY | 66 |
Copyright | |
18 other sections not shown
Common terms and phrases
References to this book
Fuzzy Decision Making in Modeling and Control João M. C. Sousa,Uzay Kaymak No preview available - 2002 |