Evolutionary computing in search-based software engineering


Autoria(s): Rela, Leo
Data(s)

23/01/2008

23/01/2008

2004

Resumo

This master’s thesis aims to study and represent from literature how evolutionary algorithms are used to solve different search and optimisation problems in the area of software engineering. Evolutionary algorithms are methods, which imitate the natural evolution process. An artificial evolution process evaluates fitness of each individual, which are solution candidates. The next population of candidate solutions is formed by using the good properties of the current population by applying different mutation and crossover operations. Different kinds of evolutionary algorithm applications related to software engineering were searched in the literature. Applications were classified and represented. Also the necessary basics about evolutionary algorithms were presented. It was concluded, that majority of evolutionary algorithm applications related to software engineering were about software design or testing. For example, there were applications about classifying software production data, project scheduling, static task scheduling related to parallel computing, allocating modules to subsystems, N-version programming, test data generation and generating an integration test order. Many applications were experimental testing rather than ready for real production use. There were also some Computer Aided Software Engineering tools based on evolutionary algorithms.

Identificador

nbnfi-fe20041317.pdf

http://www.doria.fi/handle/10024/35235

URN:NBN:fi-fe20041317

Idioma(s)

en

Palavras-Chave #Evolutionary algorithms #genetic algorithm #search-based software engineering #software production
Tipo

Master's thesis