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JOURNALS // Matematicheskoe modelirovanie // Archive

Matem. Mod., 2012 Volume 24, Number 12, Pages 107–112 (Mi mm3231)

Training artificial neural networks with dynamic particle swarm optimisation

A. S. Rakitianskaiaa, A. P. Engelbrechtb

a LIT, JINR
b University of Pretoria

Abstract: Particle swarm optimisation has been successfully applied to train artificial feedforward neural networks before, however, considered problems were assumed to be static. Such assumption does not hold for many real-world problems. This article investigates the applicability of dynamic particle swarm optimisation algorithms as neural network training algorithms for dynamic classification problems. The performance of dynamic particle swarm optimization is compared to back-propagation, and dynamic particle swarm optimisation is shown to be a viable training algorithm for dynamic classification problems.

Keywords: artificial neural networks, particle swarm optimisation, supervised training, dynamic environments.

UDC: 004.855.5, 004.832.23

Received: 01.10.2012



© Steklov Math. Inst. of RAS, 2024