算法
计算机科学
一套
水准点(测量)
球(数学)
测试套件
控制理论(社会学)
数学
人工智能
机器学习
测试用例
控制(管理)
数学分析
回归分析
考古
大地测量学
历史
地理
作者
Davut Izci,Serdar Ekinci,Erdal Eker,Murat Kayri
标识
DOI:10.1016/j.jksues.2022.03.001
摘要
This paper explains the construction of a novel augmented hunger games search algorithm using a logarithmic spiral opposition-based learning technique. The proposed algorithm (LsOBL-HGS) is used as an efficient tool for both function optimization and controller design. To assess the performance of the algorithm for function optimization, benchmark functions from the CEC2017 test suite were employed and comparisons were made with available and good performing algorithms. In terms of controller design, the proposed LsOBL-HGS algorithm was utilized to design a FOPID controlled magnetic ball suspension system. Comparative assessments were also performed for FOPID controller design, as well using other state-of-the-art methods reported for the magnetic ball suspension system. The results showed that the proposed LsOBL-HGS algorithm has good capability for FOPID controller design employed in a magnetic ball suspension system as it provided an improvement of more than 13% in terms of the transient response-related parameters and more than 34% in terms of bandwidth compared to the best-reported approach used for comparisons.
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