Title of article
Efficient parallel genetic algorithms: theory and practice Original Research Article
Author/Authors
Erick Cant?-Paz، نويسنده , , David E. Goldberg، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2000
Pages
18
From page
221
To page
238
Abstract
Parallel genetic algorithms (GAs) are complex programs that are controlled by many parameters, which affect their search quality and their efficiency. The goal of this paper is to provide guidelines to choose those parameters rationally. The investigation centers on the sizing of populations, because previous studies show that there is a crucial relation between solution quality and population size. As a first step, the paper shows how to size a simple GA to reach a solution of a desired quality. The simple GA is then parallelized, and its execution time is optimized. The rest of the paper deals with parallel GAs with multiple populations. Two bounding cases of the migration rate and topology are analyzed, and the case that yields good speedups is optimized. Later, the models are specialized to consider sparse topologies and migration rates that are more likely to be used by practitioners. The paper also presents the additional advantages of combining multi- and single-population parallel GAs. The results of this work are simple models that practitioners may use to design efficient and competent parallel GAs.
Journal title
Computer Methods in Applied Mechanics and Engineering
Serial Year
2000
Journal title
Computer Methods in Applied Mechanics and Engineering
Record number
891871
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