Loading [MathJax]/extensions/TeX/mhchem.js
Hovering Swarm Particle Swarm Optimization | IEEE Journals & Magazine | IEEE Xplore

Hovering Swarm Particle Swarm Optimization


The velocity of main swarm members is shown by red arrows and the velocity of hover swarm is shown by blue arrows. A thick color at the bottom and no color at the end sho...

Abstract:

PSO is a simple and yet powerful metaheuristic search algorithm widely used to solve various optimization problems. Nevertheless, conventional PSO tends to lose its popul...Show More

Abstract:

PSO is a simple and yet powerful metaheuristic search algorithm widely used to solve various optimization problems. Nevertheless, conventional PSO tends to lose its population diversity drastically and suffer with compromised performance when encountering the optimization problems with complex fitness landscapes. Extensive studies suggest the needs of preserving high population diversity for PSO to escape from the local optima in order to solve complex optimization problems effectively. Inspired by these ideas, a hovering swarm PSO (HSPSO) is proposed in this paper, where a computationally efficient diversity preservation scheme is first introduced to divide the population of HSPSO into a main swarm and a hovering swarm. An exemplar construction scheme is subsequently proposed in the main swarm of HSPSO to generate a universal exemplar by considering the promising directional information contributed by the other non-fittest particles. The proposed universal exemplar is envisioned to suppress the negative impacts of global best particle, while remain effective to guide all particles of main swarm converging towards the promising solution regions. While hovering around the main swarm, an intelligent scheme is introduced to dynamically adjust inertia weights of all hovering swarm members to achieve proper balancing of exploration and exploitation searches at swarm levels. Extensive performance analyses are conducted by using the proposed HSPSO to solve 30 benchmark functions of CEC 2014 and five real-world engineering applications. Simulation results reveal that the HSPSO is able outperform the state-of-art optimizers when solving most tested functions due to its excellent diversity preservation capability.
The velocity of main swarm members is shown by red arrows and the velocity of hover swarm is shown by blue arrows. A thick color at the bottom and no color at the end sho...
Published in: IEEE Access ( Volume: 9)
Page(s): 115719 - 115749
Date of Publication: 19 August 2021
Electronic ISSN: 2169-3536

Funding Agency:


References

References is not available for this document.