Modelling public transport trips by radial basis function neural networks

Modelling public transport trips by radial basis function neural networks

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Article ID: iaor20071977
Country: Netherlands
Volume: 45
Issue: 3/4
Start Page Number: 480
End Page Number: 489
Publication Date: Feb 2007
Journal: Mathematical and Computer Modelling
Authors: ,
Keywords: neural networks
Abstract:

Artificial neural networks (ANNs) are one of the recently explored advanced technologies, which show promise in the area of transportation engineering. The presented study used two different ANN algorithms, feed forward back-propagation (FFBP) and radial basis function (RBF), for the purpose of daily trip flow forecasting. The ANN predictions were quite close to the observations as reflected in the selected performance criteria. The selected stochastic model performance was quite poor compared with ANN results. It was seen that the RBF neural network did not provide negative forecasts in contrast to FFBP applications. Besides, the local minima problem faced by some FFBP algorithms was not encountered in RBF networks.

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