DocumentCode :
1343603
Title :
Maintaining Healthy Population Diversity Using Adaptive Crossover, Mutation, and Selection
Author :
Ginley, Brian Mc ; Maher, John ; O´Riordan, Colm ; Morgan, Fearghal
Author_Institution :
Bio-Inspired & Reconfigurable Comput. Res. Group, Nat. Univ. of Ireland (NUI), Galway, Ireland
Volume :
15
Issue :
5
fYear :
2011
Firstpage :
692
Lastpage :
714
Abstract :
This paper presents ACROMUSE, a novel genetic algorithm (GA) which adapts crossover, mutation, and selection parameters. ACROMUSEs objective is to create and maintain a diverse population of highly-fit (healthy) individuals, capable of adapting quickly to fitness landscape change and well-suited to the efficient optimization of multimodal fitness landscapes. A new methodology is introduced for determining standard population diversity (SPD) and an original measure of healthy population diversity (HPD) is proposed. The SPD measure is employed to adapt crossover and mutation, while selection pressure is controlled by adapting tournament size according to HPD. In addition to selection pressure control, ACROMUSE tournament selection selects individuals according to healthy diversity contribution rather than fitness. This proposed selection mechanism simultaneously promotes diversity and fitness within the population. The performance of ACROMUSE is evaluated using various multimodal benchmark functions. Statistically significant results are presented comparing ACROMUSEs fitness and diversity performance to that of several other GAs. By maintaining a diverse population of healthy individuals, ACROMUSE responds to fitness landscape change by restoring better fitness scores faster than other GAs. Analysis of the adaptive operators illustrates that the key benefit of ACROMUSE is the synergy of the operators working together to achieve an effective balance between exploration and exploitation.
Keywords :
genetic algorithms; ACROMUSE fitness landscape change; ACROMUSE tournament selection; HPD; SPD measure; adapting tournament size; adaptive crossover; adaptive mutation; adaptive operator; adaptive selection pressure control; diverse population; genetic algorithm; healthy population diversity; multimodal benchmark function; multimodal fitness landscape; standard population diversity performance; Algorithm design and analysis; Convergence; Genetic algorithms; Genetics; Optimization; Pressure measurement; Size measurement; Genetic algorithm parameter adaptation; healthy population diversity;
fLanguage :
English
Journal_Title :
Evolutionary Computation, IEEE Transactions on
Publisher :
ieee
ISSN :
1089-778X
Type :
jour
DOI :
10.1109/TEVC.2010.2046173
Filename :
6036171
Link To Document :
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