| Literature DB >> 32987554 |
Guo Zhou1, Jie Li2,3, Zhong Hua Tang2,3, Qi Fang Luo2,3, Yong Quan Zhou2,3,4.
Abstract
In this paper, an improved spotted hyena optimizer (ISHO) with a nonlinear convergence factor is proposed for proportional integral derivative (PID) parameter optimization in an automatic voltage regulator (AVR). In the proposed ISHO, an opposition-based learning strategy is used to initialize the spotted hyena individual's position in the search space, which strengthens the diversity of individuals in the global searching process. A novel nonlinear update equation for the convergence factor is used to enhance the SHO's exploration and exploitation abilities. The experimental results show that the proposed ISHO algorithm performed better than other algorithms in terms of the solution precision and convergence rate.Entities:
Keywords: PID parameter optimization ; metaheuristic ; nonlinear convergence factor ; opposition-based learning ; spotted hyena optimizer
Mesh:
Year: 2020 PMID: 32987554 DOI: 10.3934/mbe.2020211
Source DB: PubMed Journal: Math Biosci Eng ISSN: 1547-1063 Impact factor: 2.080