A Novel Modified Tree-Seed Algorithm for High-Dimensional Optimization Problems

To efficiently handle high-dimensional continuous optimization problems, a Modified tree-seed algorithm(MTSA) is proposed by coupling a newly introduced control parameter named as Seed domain shrinkable coefficient(SDSC) and Local reinforcement strategy(LRS) based on gradient information of adjacent...

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Bibliographic Details
Published inChinese Journal of Electronics Vol. 29; no. 2; pp. 337 - 343
Main Authors Zhao, Shijie, Gao, Leifu, Tu, Jun, Yu, Dongmei
Format Journal Article
LanguageEnglish
Published Published by the IET on behalf of the CIE 01.03.2020
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ISSN1022-4653
2075-5597
2075-5597
DOI10.1049/cje.2020.01.012

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Summary:To efficiently handle high-dimensional continuous optimization problems, a Modified tree-seed algorithm(MTSA) is proposed by coupling a newly introduced control parameter named as Seed domain shrinkable coefficient(SDSC) and Local reinforcement strategy(LRS) based on gradient information of adjacentgeneration best trees. SDSC is dynamically decreased with iterations to adjust the produced domain of offspring seeds, for achieving the tradeoff between the global exploration and local exploitation. LRS strategy is to execute local exploitation process by employing gradient information of two best trees, for enhancing convergence efficiency and local optima avoidance with probabilities. The compared experimental results show the different effects of differenttype SDSC on MTSA, the faster convergence efficiency and the stronger robustness of the proposed MTSA.
ISSN:1022-4653
2075-5597
2075-5597
DOI:10.1049/cje.2020.01.012