Abstract:
Mankind has been facing optimization problems throughout history and making the
great efforts to solve them. Optimization problems, in simple terms, are to find the
best or close to the best solutions to the problems. The task of optimization in solving
engineering problems is also crucial and the biologically motivated computing
techniques have waxed and waned over the period of time. Evolutionary approach is a
common technique that uses natural phenomena like biological genes, population,
mating etc., to solve optimization problems. In an evolutionary approach a population
of solution is maintained and tries to improve the solutions for better performance as
better fitted species survive. Among several different methods of evolutionary
approach Genetic Algorithm (GA) is the most popular due to its simplicity.
Genetic Algorithm is a stochastic search and optimization method imitating the
metaphor of natural biological evolution. It works on the population of individuals
instead of single solution. Although GA draws attention for functional optimization, it
may search same point again due to its probabilistic operations that hinder its
performance. Generally, GAs are time-consuming in computing due to the large
number of fitness function evaluations required and the implementation of many
operators and parameters, but sometimes they cannot produce the desired results. it is
always challenging for GA for functional optimization to achieve optimal solution in
acceptable time.
In this thesis, we make a novel approach of standard Genetic Algorithm (sGA) that
minimizes the shortcomings of sGA. The proposed method is called Precise Genetic
Algorithm (PGA). The primary motivation for the proposed PGA is to ensure the
successive convergence in optimization problems to reach optimal solution with a
minimal time. PGA searches the target space efficiently and it shows several potential
advantages over the conventional GA for solving both single and multivariable
functional problems. We have shown that the proposed method reveals the good
performance in the context of the quality and the time needed to reach the optimal
solutions compared to sGA.
Description:
This thesis is submitted to the Department of Computer Science and Engineering , Khulna University of Engineering & Technology in partial fulfillment of the requirements for the degree of Master of Science in Computer Science and Engineering, June, 2011.
Cataloged from PDF Version of Thesis.
Includes bibliographical references (pages 96-108).