Study on genetic algorithm improvement and application
Abstract (Summary)
Genetic Algorithms (GAs) are powerful tools to solve large scale design
optimization problems. The research interests in GAs lie in both its theory and
application. On one hand, various modifications have been made on early GAs to allow
them to solve problems faster, more accurately and more reliably. On the other hand, GA
is used to solve complicated design optimization problems in different applications.
The study in this thesis is both theoretical and applied in nature. On the theoretical
side, an improved GA—Evolution Direction Guided GA (EDG-GA) is proposed based
on the analysis of Schema Theory and Building Block Hypothesis. In addition, a method
is developed to study the structure of GA solution space by characterizing interactions
between genes. This method is further used to determine crossover points for selective
crossover. On the application side, GA is applied to generate optimal tolerance
assignment plans for a series of manufacturing processes. It is shown that the optimal
tolerance assignment plan achieved by GA is better than that achieved by other
optimization methods such as sensitivity analysis, given comparable computation time.
i
Bibliographical Information:
Advisor:
School:Worcester Polytechnic Institute
School Location:USA - Massachusetts
Source Type:Master's Thesis
Keywords:genetic algorithms multidisciplinary design optimization
ISBN:
Date of Publication: