JOURNAL ARTICLE

An Opposition-Based Chaotic Salp Swarm Algorithm for Global Optimization

Xiaoqiang ZhaoYang FanYazhou HanYanpeng Cui

Year: 2020 Journal:   IEEE Access Vol: 8 Pages: 36485-36501   Publisher: Institute of Electrical and Electronics Engineers

Abstract

The salp swarm algorithm (SSA) is a bio-heuristic optimization algorithm proposed in 2017. It has been proved that SSA has competitive results compared to several other well-known meta-heuristic algorithms on various optimization problem. However, like most meta-heuristic algorithms, SSA is prone to problems such as local optimal solution and a slow convergence rate. To solve these problems, a chaotic salp swarm algorithm based on opposition-based learning (OCSSA) is proposed. The application of opposition-based learning (OBL) guarantees a better convergence speed and better develops the search space. The chaotic local search (CLS) method is also introduced, which can improve the performance of the algorithm to obtain the global optimal solution. The performance of OCSSA is compared with that of the original SSA and some other meta-heuristic algorithms on 28 benchmark functions with unimodal or multimodal characteristics. The experimental results show that the performance of OCSSA, with an appropriate chaotic map, is better than or comparable with the SSA and other meta-heuristic algorithms.

Keywords:
Chaotic Benchmark (surveying) Computer science Mathematical optimization Meta heuristic Swarm behaviour Heuristic Algorithm Convergence (economics) Mathematics Artificial intelligence

Metrics

60
Cited By
5.43
FWCI (Field Weighted Citation Impact)
38
Refs
0.96
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

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