RC Chakraborty, www.myreaders.info
Genetic Algorithms & Modeling : Soft Computing Course Lecture 37 – 40, notes, slides
www.myreaders.info/ , RC Chakrabort y, e-mail
[email protected] , Dec. 01, 2010
http://www.myreader s.info/html/soft_computing.html
Genetic Algorithms & Modeling
Soft Computing
www.myreaders.info
Return to Website
Genetic algorithms & Modeling, topics : Introduction, why genetic
algorithm? search optimization methods, evolutionary algorithms
(EAs), genetic algorithms (GAs) - biological background, working
principles; basic genetic algorithm, flow chart for Genetic
Programming. Encoding : binary encoding, value encoding,
permutation encoding, tree encoding. Operators of genetic
algorithm : random population, reproduction or selection -
roulette wheel selection, Boltzmann selection; Fitness function;
Crossover - one-point crossover, two-point crossover, uniform
crossover, arithmetic, heuristic; Mutation - flip bit, boundary,
Gaussian, non-uniform, and uniform; Basic genetic algorithm :
examples - maximize function f(x) = x
2
and two bar pendulum.