A Walk into Metaheuristics for Engineering Optimization: Principles, Methods and Recent Trends
Metadatos
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Atlantis Press; Taylor & Francis
Materia
Metaheuristics Optimization methods Trajectory-based optimization Population-based optimization Multimodal optimization Multi-objective optimization Parallel metaheuristics
Fecha
2015-08-01Referencia bibliográfica
Xiong, N., Molina, D., Ortiz, M. L., & Herrera, F. (2015). A Walk into Metaheuristics for Engineering Optimization: Principles, Methods and Recent Trends. International Journal of Computational Intelligence Systems, 8(4), 606-636. [https://doi.org/10.1080/18756891.2015.1046324]
Patrocinador
Swedish Knowledge Foundation 16317; ABB FACTS; Prevas; VG Power; Spanish Government TIN2011-28488 TIN 2012-37930-C02-01; Andalusian Government P10-TIC-6858Resumen
Metaheuristics has attained increasing interest for solving complex real-world problems. This paper studies the principles and the state-of-the-art of metaheuristic methods for engineering optimization. Both the classic and emerging approaches to optimization using metaheuristics are reviewed and analyzed. All the methods are discussed in three basic types: trajectory-based, in which in each step a new solution is created from the previous one; multi-trajectory-based, in which a multi-start mechanism is used; and population-based, where multiple new solutions are created considering a population of approximate solutions. We further discuss algorithms and strategies to handle multi-modal and multi-objective optimization tasks as well as methods for parallel implementation of metaheuristic algorithms. Then, different software frameworks for metaheuristics are introduced. Finally, several interesting directions are pointed out as future research trends.
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