MATLAB and Simulink Based Books

Neural Network Design 2730

Neural Network Design

This text provides a clear and detailed survey of basic neural network architectures and learning rules. The authors emphasize mathematical analysis of networks, methods for training networks, and application of networks to practical engineering problems in pattern recognition, signal processing, and control systems. Background material, such as linear algebra, optimization, and stability, is provided. Simple building blocks are used to explain associative and competitive networks. They include feature maps, learning vector quantization, and adaptive resonance theory. Examples and solved problems are included with optional exercises incorporating the use of MATLAB.  An instructor's manual is available for adopters of this text.

To obtain a copy of the Neural Network Design text or the Instructors Manual contact John Stovall at the University of Colorado Bookstore, phone 303-492-3648. Ask specifically for an instructor's manual if you are instructing a class and want one.

Companion software available In addition, a set of MATLAB code files, transparency masters, and a set of video lectures are available. Retrieve companion software

MATLAB Courseware

Teaching materials based on MATLAB and Simulink

Find full courses & labs

Trials Available

Try the latest version of algorithm development products.

Get trial software

About This Book

Martin T. Hagan, Oklahoma State University
Howard B. Demuth, University of Idaho
Mark Hudson Beale, MHB, Inc

Martin/Hagan (Distributed by the University of Colorado), 1996

ISBN: 0-9717321-0-8
Language: English