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JBE | A Multi-strategy Improved Snake Optimizer Assisted with

引文信息:

Lei Peng, Zhuoming Yuan, Guangming Dai, Maocai Wang, Jian Li, Zhiming Song & Xiaoyu Chen, A Multi-strategy Improved Snake Optimizer Assisted with Population Crowding Analysis for Engineering Design Problems. Journal of Bionic Engineering,2024,21(3),1567- 1591.


A Multi-strategy Improved Snake Optimizer Assisted with Population Crowding Analysis for Engineering Design Problems


Lei Peng, Zhuoming Yuan, Guangming Dai, Maocai Wang, Jian Li, Zhiming Song & Xiaoyu Chen


1 School of Computer Science, China University of Geosciences, Wuhan, 430074, China.


2 Hubei Key Laboratory of Intelligent Geo-Information Processing, China University of Geosciences, Wuhan, 430074, China.


3 China Astronautics Standards Institute, Beijing, 100071, China.


Abstract


Snake Optimizer (SO) is a novel Meta-heuristic Algorithm (MA) inspired by the mating behaviour of snakes, which has achieved success in global numerical optimization problems and practical engineering applications. However, it also has certain drawbacks for the exploration stage and the egg hatch process, resulting in slow convergence speed and inferior solution quality. To address the above issues, a novel multi-strategy improved SO (MISO) with the assistance of population crowding analysis is proposed in this article. In the algorithm, a novel multi-strategy operator is designed for the exploration stage, which not only focuses on using the information of better performing individuals to improve the quality of solution, but also focuses on maintaining population diversity. To boost the efficiency of the egg hatch process, the multi-strategy egg hatch process is proposed to regenerate individuals according to the results of the population crowding analysis. In addition, a local search method is employed to further enhance the convergence speed and the local search capability. MISO is first compared with three sets of algorithms in the CEC2020 benchmark functions, including SO with its two recently discussed variants, ten advanced MAs, and six powerful CEC competition algorithms. The performance of MISO is then verified on five practical engineering design problems. The experimental results show that MISO provides a promising performance for the above optimization cases in terms of convergence speed and solution quality.


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Fig. W1 Fighting and Mating behaviours of snakes.


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Fig. W2 Calculation steps of the modified ”current-to-pbest/1” strategy.


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Fig. W3  The main steps of SQP. 


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Fig. W4 The pseudo-code of MISO.