TL;DR
This paper introduces PSODE, a modular hybrid framework combining PSO and DE variants, enabling the creation of 800 new algorithms and demonstrating their effectiveness on benchmark optimization problems.
Contribution
A novel modular hybridization approach that unifies PSO and DE variants, generating numerous new algorithms for improved optimization performance.
Findings
800 hybrid algorithms tested on benchmark problems
Demonstrated superior performance over individual algorithms
Framework enables extensive exploration of algorithm variants
Abstract
In swarm intelligence, Particle Swarm Optimization (PSO) and Differential Evolution (DE) have been successfully applied in many optimization tasks, and a large number of variants, where novel algorithm operators or components are implemented, has been introduced to boost the empirical performance. In this paper, we first propose to combine the variants of PSO or DE by modularizing each algorithm and incorporating the variants thereof as different options of the corresponding modules. Then, considering the similarity between the inner workings of PSO and DE, we hybridize the algorithms by creating two populations with variation operators of PSO and DE respectively, and selecting individuals from those two populations. The resulting novel hybridization, called PSODE, encompasses most up-to-date variants from both sides, and more importantly gives rise to an enormous number of unseen swarm…
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