Opposition-based learning grey wolf optimizer for global optimization

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摘要

Grey wolf optimizer is a novel swarm intelligent algorithm. It has received lots of interest from the heuristic algorithm community for its superior optimization capacity and few parameters. However, it is also easy to trap into the local optimum when solving complex and multimodal functions. In order to boost the performance of GWO, an opposition-based learning grey wolf optimizer (OGWO) is proposed. The opposition-based learning approach is incorporated into GWO with a jumping rate, which can help the algorithm jump out of the local optimum and not increase the computational complexity. What is more, the coefficient a→ is dynamically adjusted by the nonlinear function to balance exploration and exploitation. The serial experiments have revealed that the proposed algorithm is superior to the conventional heuristic algorithms, it is also better than GWO and its variants.

论文关键词:Heuristic algorithm,Grey wolf optimizer,Opposition-based learning,Optimization

论文评审过程:Received 12 February 2021, Revised 8 April 2021, Accepted 11 May 2021, Available online 13 May 2021, Version of Record 18 May 2021.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.107139