Title :
Using particle swarm optimization in training neural network for indoor field strength prediction
Author :
Ivan Vilović;Nikša Burum;Đorđe Milić
Author_Institution :
University of Dubrovnik, Croatia
Abstract :
This paper presents a comparison of results obtained from neural network training by backpropagation and particle swarm optimization (PSO) algorithms. The neural network model has been developed for field strength prediction in indoor environments. It has been already shown for neural networks as powerful tool in RF propagation prediction. It is very important to choose proper algorithm for training a neural network, so we compared BP training algorithms: gradient descent method and Levenberg-Marquardt algorithm with PSO algorithm. PSO algorithm has been shown as powerful method for global optimization in several applications. A floor of university building in Dubrovnik has been used as case for simulation and measurement of signal strength. The results show that the neural network weights converge faster with PSO than with standard BP algorithms.
Keywords :
"Particle swarm optimization","Neural networks","Backpropagation algorithms","Floors","Predictive models","Artificial neural networks","Indoor environments","Optimization methods","Multilayer perceptrons","Testing"
Conference_Titel :
ELMAR, 2009. ELMAR ´09. International Symposium
Print_ISBN :
978-953-7044-10-7