Abstract
Diploid genetic algorithms (DGAs) promise robustness as against simple genetic algorithms which only work towards optimization. Moreover, these algorithms outperform others in dynamic environments. The work examines the theoretical aspect of the concept by examining the existing literature. The present work takes the example of dynamic TSP to compare greedy approach, genetic algorithms and DGAs. The work also implements a greedy genetic approach for the problem. In the experiments carried out, the three variants of dominance were implemented and 115 runs proved the point that none of them outperforms the other.
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Communicated by S. Deb, T. Hanne and S. Fong.
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Bhasin, H., Behal, G., Aggarwal, N. et al. On the applicability of diploid genetic algorithms in dynamic environments. Soft Comput 20, 3403–3410 (2016). https://doi.org/10.1007/s00500-015-1803-5
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DOI: https://doi.org/10.1007/s00500-015-1803-5