3 research outputs found

    Heuristic-based fireļ¬‚y algorithm for bound constrained nonlinear binary optimization

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    Fireļ¬‚y algorithm (FA) is a metaheuristic for global optimization. In this paper,we address the practical testing of aheuristic-based FA (HBFA) for computing optimaof discrete nonlinear optimization problems,where the discrete variables are of binary type. An important issue in FA is the formulation of attractiveness of each ļ¬reļ¬‚y which in turn affects its movement in the search space. Dynamic updating schemes are proposed for two parameters, one from the attractiveness term and the other from the randomization term. Three simple heuristics capable of transforming real continuous variables into binary ones are analyzed. A new sigmoid ā€˜erfā€™ function is proposed. In the context of FA, three different implementations to incorporate the heuristics for binary variables into the algorithm are proposed. Based on a set of benchmark problems, a comparison is carried out with other binary dealing metaheuristics. The results demonstrate that the proposed HBFA is efļ¬cient and outperforms binary versions of differential evolution (DE) and particle swarm optimization (PSO). The HBFA also compares very favorably with angle modulated version of DE and PSO. It is shown that the variant of HBFA based on the sigmoid ā€˜erfā€™ function with ā€˜movements in continuous spaceā€™ is the best, both in terms of computational requirements and accuracy.FundaĆ§Ć£o para a CiĆŖncia e a Tecnologia (FCT
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