As a powerful approach to data reasoning, rough set theory has proven to be invaluable in knowledge acquisition, decision analysis and forecasting, and knowledge discovery. With the ability to enhance the advantages of other soft technology theories, hybrid rough set theory is quickly emerging as a
Analysis and Decision Making in Uncertain Systems
โ Scribed by Professor Zdzislaw Bubnicki PhD (auth.)
- Publisher
- Springer-Verlag London
- Year
- 2004
- Tongue
- English
- Leaves
- 376
- Series
- Communications and Control Engineering
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
A unified and systematic description of analysis and decision problems within a wide class of uncertain systems, described by traditional mathematical methods and by relational knowledge representations.
With special emphasis on uncertain control systems, Professor Bubnicki gives you a unique approach to formal models and design (including stabilization) of uncertain systems, based on uncertain variables and related descriptions.
โข Introduction and development of original concepts of uncertain variables and a learning process consisting of knowledge validation and updating.
โข Examples concerning the control of manufacturing systems, assembly processes and task distributions in computer systems indicate the possibilities of practical applications and approaches to decision making in uncertain systems.
โข Includes special problems such as recognition and control of operations under uncertainty.
โข Self-contained.
If you are interested in problems of uncertain control and decision support systems, this will be a valuable addition to your bookshelf. Written for researchers and students in the field of control and information science, this book will also benefit designers of information and control systems.
โฆ Table of Contents
Front Matter....Pages i-x
Introduction to Uncertain Systems....Pages 1-9
Relational Systems....Pages 11-27
Application of Random Variables....Pages 29-62
Uncertain Logics and Variables....Pages 63-84
Application of Uncertain Variables....Pages 85-122
Fuzzy Variables, Analogies and Soft Variables....Pages 123-154
Systems with Logical Knowledge Representation....Pages 155-168
Dynamical Systems....Pages 169-200
Parametric Optimization of Decision Systems....Pages 201-223
Stability of Uncertain Dynamical Systems....Pages 225-258
Learning Systems....Pages 259-282
Complex Problems and Systems....Pages 283-311
Complex of Operations....Pages 313-338
Pattern Recognition....Pages 339-360
Conclusions....Pages 361-362
Back Matter....Pages 363-371
โฆ Subjects
Control;Computer Systems Organization and Communication Networks;Artificial Intelligence (incl. Robotics);Computer-Aided Engineering (CAD, CAE) and Design;Complexity
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