A Hybrid Algorithm Framework with Learning and Complementary Fusion Features for Whale Optimization Algorithm

It has been observed that the structure of whale optimization algorithm (WOA) is good at exploiting capability, but it easily suffers from premature convergence. Hybrid metaheuristics are of the most interesting recent trends for improving the performance of WOA. In this paper, a hybrid algorithm fr...

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Main Author: Wangyu Tong
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2020/5684939
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spelling doaj-1035b946349b4e2b9dc6e8ead46150152021-07-02T12:03:47ZengHindawi LimitedScientific Programming1058-92441875-919X2020-01-01202010.1155/2020/56849395684939A Hybrid Algorithm Framework with Learning and Complementary Fusion Features for Whale Optimization AlgorithmWangyu Tong0School of Computer Science and Technology, Wuhan University of Technology, Wuhan 430070, Hubei, ChinaIt has been observed that the structure of whale optimization algorithm (WOA) is good at exploiting capability, but it easily suffers from premature convergence. Hybrid metaheuristics are of the most interesting recent trends for improving the performance of WOA. In this paper, a hybrid algorithm framework with learning and complementary fusion features for WOA is designed, called hWOAlf. First, WOA is integrated with complementary feature operators to enhance exploration capability. Second, the proposed algorithm framework adopts a learning parameter lp according to adaptive adjustment operator to replace the random parameter p. To further verify the efficiency of the hWOAlf, the DE/rand/1 operator of differential evolution (DE) and the mutate operator of backtracking search optimization algorithm (BSA) are embedded into WOA, respectively, to form two new algorithms called WOA-DE and WOA-BSA under the proposed framework. Twenty-three benchmark functions and six engineering design problems are employed to test the performance of WOA-DE and WOA-BSA. Experimental results show that WOA-DE and WOA-BSA are competitive compared with some state-of-the-art algorithms.http://dx.doi.org/10.1155/2020/5684939
collection DOAJ
language English
format Article
sources DOAJ
author Wangyu Tong
spellingShingle Wangyu Tong
A Hybrid Algorithm Framework with Learning and Complementary Fusion Features for Whale Optimization Algorithm
Scientific Programming
author_facet Wangyu Tong
author_sort Wangyu Tong
title A Hybrid Algorithm Framework with Learning and Complementary Fusion Features for Whale Optimization Algorithm
title_short A Hybrid Algorithm Framework with Learning and Complementary Fusion Features for Whale Optimization Algorithm
title_full A Hybrid Algorithm Framework with Learning and Complementary Fusion Features for Whale Optimization Algorithm
title_fullStr A Hybrid Algorithm Framework with Learning and Complementary Fusion Features for Whale Optimization Algorithm
title_full_unstemmed A Hybrid Algorithm Framework with Learning and Complementary Fusion Features for Whale Optimization Algorithm
title_sort hybrid algorithm framework with learning and complementary fusion features for whale optimization algorithm
publisher Hindawi Limited
series Scientific Programming
issn 1058-9244
1875-919X
publishDate 2020-01-01
description It has been observed that the structure of whale optimization algorithm (WOA) is good at exploiting capability, but it easily suffers from premature convergence. Hybrid metaheuristics are of the most interesting recent trends for improving the performance of WOA. In this paper, a hybrid algorithm framework with learning and complementary fusion features for WOA is designed, called hWOAlf. First, WOA is integrated with complementary feature operators to enhance exploration capability. Second, the proposed algorithm framework adopts a learning parameter lp according to adaptive adjustment operator to replace the random parameter p. To further verify the efficiency of the hWOAlf, the DE/rand/1 operator of differential evolution (DE) and the mutate operator of backtracking search optimization algorithm (BSA) are embedded into WOA, respectively, to form two new algorithms called WOA-DE and WOA-BSA under the proposed framework. Twenty-three benchmark functions and six engineering design problems are employed to test the performance of WOA-DE and WOA-BSA. Experimental results show that WOA-DE and WOA-BSA are competitive compared with some state-of-the-art algorithms.
url http://dx.doi.org/10.1155/2020/5684939
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