Nature inspired optimization algorithms: a comprehensive overview

被引:0
作者
Ankur Kumar
Mohammad Nadeem
Haider Banka
机构
[1] Aligarh Muslim University,Department of Computer Science
[2] Indian Institute of Technology (ISM),Department of Computer Science and Engineering
来源
Evolving Systems | 2023年 / 14卷
关键词
Soft computing; Evolutionary computation; Optimization; Nature inspired algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
Nature performs complex tasks in a simple yet efficient way. Natural processes may seem straightforward from outside but are composed of several inherently complicated sub-processes. Inspired from nature, several Nature Inspired Optimization Algorithms (NIOAs) have been developed in recent years. The family of NIOAs is expanding rapidly. Therefore, the set of NIOAs became quite large and selecting an appropriate NIOA is a tedious job. Since each one of the algorithms offers something novel, the similarities and differences among them are necessary to be established so that the selection of an algorithm for a particular problem becomes relatively easy. Moreover, a problem needs to be mapped in a NIOA, requiring understanding of fundamental components of NIOAs. Tuning parameters and algorithm operators another important concern in NIOAs that need be addressed carefully for better performance of the algorithm. Our work distinguishes NIOAs on the basis of various criteria and discusses the building blocks of various algorithms to achieve aforementioned objectives. The purpose of present study is to analyze major concepts related to NIOAs such as fundamentals of NIOAs, comparison among them, advancements, etc. In order to explain the usage of components of NIOA, an illustrative example is also presented.
引用
收藏
页码:141 / 156
页数:15
相关论文
共 120 条
  • [11] Behdad M(2016)Smart grid data analytics framework for increasing energy savings in residential buildings Autom Constr 72 95-108
  • [12] Barone L(2015)A nature-inspired approach to speed up optimum-path forest clustering and its application to intrusion detection in computer networks Inf Sci 294 1213-1219
  • [13] Bennamoun M(2013)A comparison of nature inspired algorithms for multi-threshold image segmentation Expert Syst Appl 40 3187-3196
  • [14] French T(2018)Detection of malicious code variants based on deep learning IEEE Trans Industr Inf 14 466-495
  • [15] Bello-Orgaz G(2019)Bioinspired computational intelligence and transportation systems: a long road ahead IEEE Trans Intell Transp Syst 21 1185-1194
  • [16] Hernandez-Castro J(2019)Optimization tools based on metaheuristics for performance enhancement in a gaussian adaptive pid controller IEEE Trans Cybern 50 73-81
  • [17] Camacho D(1997)Ant colonies for the travelling salesman problem Biosystems 43 1239-1251
  • [18] Boussaïd I(2006)Improving image segmentation quality through effective region merging using a hierarchical social metaheuristic Pattern Recogn Lett 27 129-154
  • [19] Lepagnot J(2006)Shuffled frog-leaping algorithm: a memetic meta-heuristic for discrete optimization Eng Optim 38 104-125
  • [20] Siarry P(2016)Performance analysis of stopping criteria of population-based metaheuristics for global optimization in phase equilibrium calculations and modeling Fluid Phase Equilib 427 160-170