On extended compact genetic algorithm
12 July 2000Sastry, K., Goldberg, D. E. (2000). Late Breaking Paper in Genetic and Evolutionary Computation Conference, 352—359. [Full paper - PDF] [Full paper - PS] [Presentation slides]
Abstract:
In this study we present a detailed analysis of the extended compact genetic algorithm (ECGA). Based on the analysis, empirical relations for population sizing and convergence time have been derived and are compared with the existing relations. We then apply ECGA to a non-azeotropic binary working fluid power cycle optimization problem. The optimal power cycle obtained improved the cycle efficiency by 2.5% over that existing cycles, thus illustrating the capabilities of ECGA in solving real-world problems.
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