Improved Particle Swarm Optimization for Global Optimization with Decaying Adaptive Velocity Limit

Autori

  • Huzaifa Aliyu Babando Modibbo Adama University, Yola Autore
  • Mathew Remilekun Odekunle Modibbo Adama University Autore
  • Nasiru Salihu Autore
  • Walye Nyubo Kurwizi Autore

Parole chiave:

Particle Swarm Optimization, IPSO, Adaptive Velocity Limit, IPSO-AVL, Metaheuristics

Abstract

This paper introduces an innovative enhanced Particle Swarm Optimization (PSO) technique known as IPSO-AVL. It features a time-adaptive velocity limit and a fitness-weighted personal best centroid. To test how effective this new method is, we conducted a comparative analysis against the traditional PSO and an intermediate IPSO approach using five different test functions: the Sphere function, the Rosenbrock function, the Rastrigin function, the Griewank function, and the Ackley function. The experiments were set up with parameters of D=30, N=30, and T=5000 over 30 runs. The findings indicate that the IPSO-AVL method significantly outperforms the traditional models, particularly for the Sphere and Rastrigin functions.

Biografie autore

  • Mathew Remilekun Odekunle, Modibbo Adama University

    Department of Mathematics, Faculty of Physical Sciences, Modibbo Adama University, Yola

  • Nasiru Salihu

    Department of Mathematics, MAU, Yola

  • Walye Nyubo Kurwizi

    Department of Mathematics, MAU Yola

Riferimenti bibliografici

Convergence curve for Griewank function

Pubblicato

2026-05-08

Come citare

Improved Particle Swarm Optimization for Global Optimization with Decaying Adaptive Velocity Limit. (2026). Nigerian Journal of Operations Research, 3(2), 120-130. https://nijor.org.ng/index.php/nijor/article/view/9

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