The online computer book shop for UK & Europe                                   

   Books Home | About Us | Index | Next Record | Browse

 
  

Tel: 0121 706 6000 

Static Book Details Page - Computer Manuals Website

 Applied Evolutionary Algorithms in Java
  

  Applied Evolutionary Algorithms in Java by Robert Ghanea-Hercock

  • Published by: SPRINGER
  • Author: Robert Ghanea-Hercock
  • Page Count: 240
  • Group: JAVA 1.2/JAVA 2 PLATFORM
  • ISBN: 0387955682/9780387955681
  • Published: Apr 2003

Our Price: 34.50
Discount: 25%
RRP: 46.00 

For Latest Pricing and Availability Click Here
 

The online computer book shop for UK & Europe

Book store with some thing for everyone

Book Information and Description:

Applied Evolutionary Algorithms in Java
Genetic algorithms provide a powerful range of methods for solving complex engineering search and optimization algorithms. Their power can also lead to difficulty for new researchers and students who wish to apply such evolution-based methods. Applied Evolutionary Algorithms in JAVA offers a practical, hands-on guide to applying such algorithms to engineering and scientific problems. The concepts are illustrated through clear examples, ranging from simple to more complex problems domains; all based on real-world industrial problems. Examples are taken from image processing, fuzzy-logic control systems, mobile robots, and telecommunication network optimization problems. The JAVA-based toolkit provides an easy-to-use and essential visual interface, with integrated graphing and analysis tools. Topics and features: inclusion of a complete JAVA toolkit for exploring evolutionary algorithms; strong use of visualization techniques, to increase understanding; coverage of all major evolutionary algorithms in common usage; broad range of industrially based example applications; includes examples and an appendix based on fuzzy logic.


Contents:

Introduction to evolutionary computation.- Principles of evolutionary algorithms.- Genetic algorithms.- Genetic programming.- Engineering examples using genetic algorithms.- Future directions in evolutionary algorithms.- Future of artificial evolution.