From ants to whales: metaheuristics for all tastes
作者:Fernando Fausto, Adolfo Reyna-Orta, Erik Cuevas, Ángel G. Andrade, Marco Perez-Cisneros
摘要
Nature-inspired metaheuristics comprise a compelling family of optimization techniques. These algorithms are designed with the idea of emulating some kind natural phenomena (such as the theory of evolution, the collective behavior of groups of animals, the laws of physics or the behavior and lifestyle of human beings) and applying them to solve complex problems. Nature-inspired methods have taken the area of mathematical optimization by storm. Only in the last few years, literature related to the development of this kind of techniques and their applications has experienced an unprecedented increase, with hundreds of new papers being published every single year. In this paper, we analyze some of the most popular nature-inspired optimization methods currently reported on the literature, while also discussing their applications for solving real-world problems and their impact on the current literature. Furthermore, we open discussion on several research gaps and areas of opportunity that are yet to be explored within this promising area of science.
论文关键词:Nature-inspired metaheuristics, Bio-inspired algorithms, Optimization, review
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10462-018-09676-2