Hybridised differential evolution and equilibrium optimiser with learning parameters for mechanical and aircraft wing design
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摘要
Metaheuristics (MHs) have been widely used for aeroelastic optimisation of aircraft wings and other types of aircraft structures. Using such methods offers some advantages e.g. flexibility for coding, robustness, global optimisation capability, and a derivative-free feature. Moreover, unconventional design problems can be posed when using metaheuristics. This paper proposes a new hybrid algorithm, named HDEEO-LP, with a learning control parameter for aeroelastic optimisation. The new optimiser is obtained from hybridising differential evolution and the recently invented equilibrium optimisation, while a learning scheme for control parameter tuning is integrated. The new method is tested against a number of established and recently invented MHs, such as a grey wolf optimiser (GWO), a salp swarm algorithm (SSA), an equilibrium optimiser (EO), an artificial bee colony (ABC), teaching–learning based optimisation (TLBO), water cycle algorithm (WCA), self-adaptive spherical search algorithm (SASS) using the CEC-RW-2020 test suite and the Goland wing aeroelastic optimisation. The results reveal that the proposed hybrid algorithm is among the top performers.
论文关键词:Self-adaptive optimisation algorithm,Optimisation algorithm,Aeroelastic optimisation,Goland wing,Flutter speed,Metaheuristics
论文评审过程:Received 9 April 2021, Revised 7 December 2021, Accepted 11 December 2021, Available online 17 December 2021, Version of Record 10 January 2022.
论文官网地址:https://doi.org/10.1016/j.knosys.2021.107955