编号:
CDUT-2023-26
标题:Surrogate-assisted hierarchical learning water cycle algorithm for high-dimensional expensive optimization
入藏号:WOS:000859448000004
中国科学院文献情报中心期刊分区:计算机科学1区/TOP(2022)
本校作者:陈才华
来源出版物:SWARM AND EVOLUTIONARY COMPUTATION 卷: 75 文献号: 101169
出版年:2022
第一地址: 成都理工大学
关键词:Surrogate -assisted metaheuristic;Radial basis function;Hierarchical learning water cycle algorithm;High -dimensional expensive optimization
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摘要:Excessive function evaluations are the main obstacle preventing the application of metaheuristic algorithms to expensive real-world problems. Although many surrogate-assisted metaheuristic algorithms have been proposed to tackle this challenge, most of them still suffer from low prediction accuracy on high-dimensional problems. This article presents a surrogate-assisted hierarchical learning water cycle algorithm (SA-HLWCA) for high-dimensional expensive optimization problems. SA-HLWCA utilizes two searching modes, namely, global search and local search, to cooperatively search for the optimal solution. A global search is conducted by a surrogate using a global diverse subset and aims to locate promising optimal areas. A local search is conducted by a surrogate built in the neighboring region of the current best and aims to refine the optimal solution. To validate the performance, comprehensive studies of the impacts of major components of SA-HLWCA are conducted. The proposed algorithm is then compared with three state-of-the-art algorithms on a series of tests on problems that range from 20 dimensions to 100 dimensions, and the results show that SA-HLWCA performs better in terms of both effectiveness and robustness. In addition, SA-HLWCA is applied to the shape optimization of a blended-wing-body underwater glider (BWBUG), and the lift-drag ratio of the optimized shape is improved by 7.66% compared with that of the initial shape.
文章链接地址: https://www.sciencedirect.com/science/article/pii/S2210650222001365?via%3Dihub