An optimization algorithm inspired by musical composition in constrained optimization problems
Many real-world problems can be expressed as an instance of the constrained nonlinear optimization problem (CNOP). This problem has a set of constraints specifies the feasible solution space. In the last years several algorithms have been proposed and developed for tackling CNOP. In this paper, we p...
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Veröffentlicht in: | Revista de Matemática Teoría y Aplicaciones 2013-12, Vol.20 (2), p.183-202 |
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Sprache: | eng |
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Zusammenfassung: | Many real-world problems can be expressed as an instance of the constrained nonlinear optimization problem (CNOP). This problem has a set of constraints specifies the feasible solution space. In the last years several algorithms have been proposed and developed for tackling CNOP. In this paper, we present a cultural algorithm for constrained optimization, which is an adaptation of “Musical Composition Method” or MCM, which was proposed in [33] by Mora et al. We evaluated and analyzed the performance of MCM on five test cases benchmark of the CNOP. Numerical results were compared to evolutionary algorithm based on homomorphous mapping [23], Artificial Immune System [9] and anti-culture population algorithm [39]. The experimental results demonstrate that MCM significantly improves the global performances of the other tested metaheuristics on same of benchmark functions. |
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ISSN: | 1409-2433 2215-3373 2215-3373 |
DOI: | 10.15517/rmta.v20i2.11658 |