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Proper Choice of Control Parameters for CoDE Algorithm

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Optimization of Complex Systems: Theory, Models, Algorithms and Applications (WCGO 2019)

Part of the book series: Advances in Intelligent Systems and Computing ((AISC,volume 991))

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Abstract

An adaptive variant of CoDE algorithm uses three couples of settings of two control parameters. These combinations provide well performance when solving a various type of optimisation problems. The aim of the paper is to replace original values of control parameters in CoDE to achieve better efficiency in real-world problems. Two different variants of enhanced CoDE algorithm are proposed and compared with the original CoDE variant. The new combinations of F and CR parameters are selected from results provided in a preliminary study where 441 various combinations of these parameters were evaluated. The results show that newly proposed CoDE variants (CoDE\(_\mathrm {FCR1}\) and CoDE\(_\mathrm {FCR2}\)) perform better than the original CoDE in most of 22 real-world problems.

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Correspondence to Petr Bujok .

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Bujok, P., Einšpiglová, D., Zámečníková, H. (2020). Proper Choice of Control Parameters for CoDE Algorithm. In: Le Thi, H., Le, H., Pham Dinh, T. (eds) Optimization of Complex Systems: Theory, Models, Algorithms and Applications. WCGO 2019. Advances in Intelligent Systems and Computing, vol 991. Springer, Cham. https://doi.org/10.1007/978-3-030-21803-4_21

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