Bee-inspired metaheuristics for global optimization: a performance comparison

被引:0
作者
Ryan Solgi
Hugo A. Loáiciga
机构
[1] University of California Santa Barbara (UCSB),Department of Geography
[2] University of California Santa Barbara (UCSB),undefined
来源
Artificial Intelligence Review | 2021年 / 54卷
关键词
Metaheuristics; Swarm intelligence; Evolutionary algorithms; Optimization; Bee inspired algorithms;
D O I
暂无
中图分类号
学科分类号
摘要
Metaheuristics are widely applied to solve optimization problems. Numerous metaheuristic algorithms inspired by natural processes have been introduced in the past years. Studying and comparing the convergence of metaheuristics is helpful in future algorithmic development and applications. This study focuses on bee-inspired metaheuristics and identifies seven basic or root algorithms applied to solve continuous optimization problems. They are the bee system, mating bee optimization (MBO), bee colony optimization, bee evolution for genetic algorithms (BEGA), bee algorithm, artificial bee colony (ABC), and bee swarm optimization. The algorithms’ performances are evaluated with several benchmark problems. This study’s results rank the cited algorithms according to their convergence efficiency. The strengths and shortcomings of each algorithm are discussed. The ABC, BEGA, and MBO are the most efficient algorithms. This study’s results show the convergence rate among different algorithms varies, and evaluates the causes of such variation.
引用
收藏
页码:4967 / 4996
页数:29
相关论文
共 164 条
[1]  
Abbass H(2003)A true annealing approach to the marriage in honey-bees optimization algorithm Int J Comput Intell Appl 3 199-211
[2]  
Teo J(2020)Multi-verse optimizer algorithm: a comprehensive survey of its results, variants, and applications Neural Comput Appl 32 12381-12401
[3]  
Abualigah L(2020)A novel hybrid antlion optimization algorithm for multi-objective task scheduling problems in cloud computing environments Clust Comput 5 19-466
[4]  
Abualigah L(2015)Applying genetic algorithms to information retrieval using vector space model Int J Comput Sci Eng Appl 25 456-4071
[5]  
Diabat A(2017)A new feature selection method to improve the document clustering using particle swarm optimization algorithm J Comput Sci 48 4047-125
[6]  
Abualigah LMQ(2018)Hybrid clustering analysis using improved krill herd algorithm Appl Intell 73 111-3155
[7]  
Hanandeh ES(2018)A combination of objective functions and hybrid krill herd algorithm for text document clustering analysis Eng Appl Artif Intell 10 3827-142
[8]  
Abualigah LM(2020)A comprehensive survey of the harmony search algorithm in clustering applications Appl. Sci. 15 3142-13182
[9]  
Khader AT(2020)Ant lion optimizer: a comprehensive survey of its variants and applications Arch Comput Methods Eng 13 257-2901
[10]  
Hanandeh ES(2010)A novel bee swarm optimization algorithm for numerical function optimization Commun Nonlinear Sci Number Simulat 12 129-612