An Enhanced Slime Mould Algorithm Combines Multiple Strategies

Author:

Xiong Wenqing1,Li Dahai1,Zhu Donglin2,Li Rui2,Lin Zhang3

Affiliation:

1. Information Engineering School, Jiangxi University of Science and Technology, Ganzhou 341000, China

2. College of Computer Science and Technology, Zhejiang Normal University, Jinhua 321004, China

3. School of Software Engineering, Jiangxi University of Science and Technology, Nanchang 330013, China

Abstract

In recent years, due to the growing complexity of real-world problems, researchers have been favoring stochastic search algorithms as their preferred method for problem solving. The slime mould algorithm is a high-performance, stochastic search algorithm inspired by the foraging behavior of slime moulds. However, it faces challenges such as low population diversity, high randomness, and susceptibility to falling into local optima. Therefore, this paper presents an enhanced slime mould algorithm that combines multiple strategies, called the ESMA. The incorporation of selective average position and Lévy flights with jumps in the global exploration phase improves the flexibility of the search approach. A dynamic lens learning approach is employed to adjust the position of the optimal slime mould individual, guiding the entire population to move towards the correct position within the given search space. In the updating method, an improved crisscross strategy is adopted to reorganize the slime mould individuals, which makes the search method of the slime mould population more refined. Finally, the performance of the ESMA is evaluated using 40 well-known benchmark functions, including those from CEC2017 and CEC2013 test suites. It is also recognized by Friedman’s test as statistically significant. The analysis of the results on two real-world engineering problems demonstrates that the ESMA presents a substantial advantage in terms of search capability.

Publisher

MDPI AG

Subject

Geometry and Topology,Logic,Mathematical Physics,Algebra and Number Theory,Analysis

Reference67 articles.

1. Breast DCE-MRI segmentation for lesion detection using Chimp Optimization Algorithm;Si;Expert Syst. Appl.,2022

2. Parameters identification of photovoltaic cells and modules using diversification-enriched Harris hawks optimization with chaotic drifts;Huiling;J. Clean. Prod.,2020

3. Improved Bare Bones Particle Swarm Optimization for DNA Sequence Design;Zhu;IEEE Trans. NanoBiosci.,2023

4. A collective neurodynamic optimization approach to bound-constrained nonconvex optimization;Yan;Neural Netw. Off. J. Int. Neural Netw. Soc.,2014

5. A Hybrid Moth Flame Optimization Algorithm for Global Optimization;Sahoo;J. Bionic Eng.,2022

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