- Gazi University Journal of Science
- Volume:35 Issue:2
- An Efficient Hybrid Algorithm with Particle Swarm Optimization and Nelder-Mead Algorithm for Paramet...
An Efficient Hybrid Algorithm with Particle Swarm Optimization and Nelder-Mead Algorithm for Parameter Estimation of Nonlinear Regression Modeling
Authors : Aynur YONAR, Harun YONAR
Pages : 716-729
Doi:10.35378/gujs.864980
View : 20 | Download : 7
Publication Date : 2022-06-01
Article Type : Research Paper
Abstract :Nonlinear regression analysis is an important statistical method widely used in many fields of science to model the complex relationships between variables. Therefore, many studies have been conducted to estimate the parameters of nonlinear regression models using various iterative techniques. In this study, an efficient hybrid algorithm, namely PSONM, by combining the exploration capability of Particle Swarm Optimization insert ignore into journalissuearticles values(PSO); and the exploitation capability of the Nelder-Mead insert ignore into journalissuearticles values(NM); algorithm is proposed to obtain parameter estimates of nonlinear regression models. To show the performance of the proposed hybrid algorithm, 20 nonlinear regression tasks with various levels of difficulty, and real data sets in the agriculture field have been tested. The experimental results indicated that the suggested hybrid algorithm provides accurate estimates, and its performance is much superior to those of NM and PSO algorithms.Keywords : Nelder Mead algorithm, Particle swarm optimization, Nonlinear regression, Parameter estimation, Particle swarm optimization