Buscar

Estamos realizando la búsqueda. Por favor, espere...

New memetic self-adaptive firefly algorithm for continuous optimisation

Abstract: The firefly algorithm is a recent nature-inspired algorithm that is receiving increasing attention from the scientific community during the last few years. One of its most promising variants is given by the memetic self-adaptive firefly algorithm (MSA-FFA), recently introduced to solve combinatorial problems. In this paper we propose a modification of the original MSA-FFA for continuous optimisation problems. The most important features of our method are: the problem-dependent selection of control parameters for self-adaptation, a simple population model providing an adequate trade-off between exploration and exploitation, and the use of an adaptive-size Luus-Jaakola random local search. This new method is applied to solve a very difficult real-world continuous optimisation problem arising in geometric modelling and manufacturing. The paper also provides the first reliable, standardised benchmark for this optimisation problem. This benchmark is used for a comparative analysis of our method with respect to some of the most popular nature-inspired algorithms. Our results show that the proposed method outperforms previous approaches (including the standard firefly algorithm) for most of the instances in the benchmark.

 Fuente: International Journal of Bio-Inspired Computation - Volume 8 Issue 5, January 2016 Pages 300-317

 Editorial: Inderscience

 Fecha de publicación: 01/01/2016

 Tipo de publicación: Artículo de Revista

 DOI: 10.1504/IJBIC.2016.079570

 ISSN: 1758-0366,1758-0374