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Parameter Summary

For easy reference, Table 1 shows the evolution parameters selected as optimum from the previous tests. The resulting genetic algorithm will be compared with a micro-genetic algorithm described in the next section.


 
Table 1: Summary of the optimum evolution parameters for the standard genetic algorithm
Population size 200 Crossover rate 0.6
Mutation rate 0.002 Creep mutation rate 0.02
Elitism Yes Niching No
Selection strategy Tournament Number of children 1


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Stanford Exploration Project
11/11/2002