Generalized Differential Evolution for Global Multi-Objective Optimization with Constraints


Autoria(s): Kukkonen, Saku
Data(s)

24/05/2012

24/05/2012

19/05/2012

Resumo

The objective of this thesis work is to develop and study the Differential Evolution Algorithm for multi-objective optimization with constraints. Differential Evolution is an evolutionary algorithm that has gained in popularity because of its simplicity and good observed performance. Multi-objective evolutionary algorithms have become popular since they are able to produce a set of compromise solutions during the search process to approximate the Pareto-optimal front. The starting point for this thesis was an idea how Differential Evolution, with simple changes, could be extended for optimization with multiple constraints and objectives. This approach is implemented, experimentally studied, and further developed in the work. Development and study concentrates on the multi-objective optimization aspect. The main outcomes of the work are versions of a method called Generalized Differential Evolution. The versions aim to improve the performance of the method in multi-objective optimization. A diversity preservation technique that is effective and efficient compared to previous diversity preservation techniques is developed. The thesis also studies the influence of control parameters of Differential Evolution in multi-objective optimization. Proposals for initial control parameter value selection are given. Overall, the work contributes to the diversity preservation of solutions in multi-objective optimization.

Identificador

978-952-265-236-2

1456-4491

http://www.doria.fi/handle/10024/76984

URN:ISBN:978-952-265-236-2

Idioma(s)

en

Publicador

Lappeenranta University of Technology

Relação

978-952-265-235-5

Acta Universitatis Lappeenrantaensis

Palavras-Chave #evolutionary algorithms #Differential Evolution #multi-objective optimization #diversity preservation #constraint handling #influence of control parameters
Tipo

Väitöskirja

Doctoral Dissertation