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Deterministic Learning Theory for Identification, Recognition, and Control
Contributor(s): Wang, Cong (Author), Hill, David J. (Author)
ISBN: 0849375533     ISBN-13: 9780849375538
Publisher: CRC Press
OUR PRICE:   $237.50  
Product Type: Hardcover - Other Formats
Published: July 2009
Qty:
Temporarily out of stock - Will ship within 2 to 5 weeks
Annotation: Offering a new perspective on a largely unexplored area of knowledge acquisition, this book provides systematic design approaches for the identification, control, and recognition of nonlinear systems in uncertain environments. It begins with an introduction to the concepts of deterministic learning theory, followed by a discussion of RBF networks. Subsequent chapters describe the conceptual theory of deterministic learning processes and address closed-loop feedback control processes. Deterministic Learning Theory for Identification, Control, and Recognition also presents applications to areas such as fault detection, ECG/EEG pattern recognition, and security analysis.
Additional Information
BISAC Categories:
- Technology & Engineering | Robotics
- Technology & Engineering | Electrical
- Technology & Engineering | Mechanical
Dewey: 629.8
LCCN: 2008038057
Series: Automation and Control Engineering
Physical Information: 0.8" H x 6.2" W x 9.3" (1.10 lbs) 207 pages
 
Descriptions, Reviews, Etc.
Publisher Description:

Deterministic Learning Theory for Identification, Recognition, and Control presents a unified conceptual framework for knowledge acquisition, representation, and knowledge utilization in uncertain dynamic environments. It provides systematic design approaches for identification, recognition, and control of linear uncertain systems. Unlike many books currently available that focus on statistical principles, this book stresses learning through closed-loop neural control, effective representation and recognition of temporal patterns in a deterministic way.

A Deterministic View of Learning in Dynamic Environments

The authors begin with an introduction to the concepts of deterministic learning theory, followed by a discussion of the persistent excitation property of RBF networks. They describe the elements of deterministic learning, and address dynamical pattern recognition and pattern-based control processes. The results are applicable to areas such as detection and isolation of oscillation faults, ECG/EEG pattern recognition, robot learning and control, and security analysis and control of power systems.

A New Model of Information Processing

This book elucidates a learning theory which is developed using concepts and tools from the discipline of systems and control. Fundamental knowledge about system dynamics is obtained from dynamical processes, and is then utilized to achieve rapid recognition of dynamical patterns and pattern-based closed-loop control via the so-called internal and dynamical matching of system dynamics. This actually represents a new model of information processing, i.e. a model of dynamical parallel distributed processing (DPDP).