Particle swarm stability : a theoretical extension using the non-stagnate distribution assumption

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Authors

Cleghorn, Christopher Wesley
Engelbrecht, Andries P.

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Publisher

Springer

Abstract

This paper presents an extension of the state of the art theoretical model utilized for understanding the stability criteria of the particles in particle swarm optimization algorithms. Conditions for order-1 and order-2 stability are derived by modeling, in the simplest case, the expected value and variance of a particle’s personal and neighborhood best positions as convergent sequences of random variables. Furthermore, the condition that the expected value and variance of a particle’s personal and neighborhood best positions are convergent sequences is shown to be a necessary condition for order-1 and order-2 stability. The theoretical analysis presented is applicable to a large class of particle swarm optimization variants.

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Keywords

Stability analysis, Stability criteria, Particle swarm optimization (PSO)

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Citation

Cleghorn, C.W. & Engelbrecht, A.P. Particle swarm stability : a theoretical extension using the non-stagnate distribution assumption. Swarm Intelligence (2018) 12: 1-22. https://doi.org/10.1007/s11721-017-0141-x.