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A recurrent neural network for urban long-term traffic flow forecasting

Abstract

This paper investigates the use of recurrent neural network to predict urban long-term traffic flows. A representation of the long-term flows with related weather and contextual information is first introduced. A recurrent neural network approach, named RNN-LF, is then proposed to predict the long-term of flows from multiple data sources. Moreover, a parallel implementation on GPU of the proposed solution is developed (GRNN-LF), which allows to boost the performance of RNN-LF. Several experiments have been carried out on real traffic flow including a small city (Odense, Denmark) and a very big city (Beijing). The results reveal that the sequential version (RNN-LF) is capable of dealing effectively with traffic of small cities. They also confirm the scalability of GRNN-LF compared to the most competitive GPU-based software tools when dealing with big traffic flow such as Beijing urban data.
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Category

Academic article

Language

English

Author(s)

  • Asma Belhadi
  • Youcef Djenouri
  • Djamel Djenouri
  • Jerry Chun-Wei Lin

Affiliation

  • SINTEF Digital / Mathematics and Cybernetics
  • University of the West of England, Bristol
  • Western Norway University of Applied Sciences
  • University of Science and Technology 'Houari Boumediene' Algiers

Year

2020

Published in

Applied intelligence (Boston)

ISSN

0924-669X

Volume

50

Page(s)

3252 - 3265

View this publication at Norwegian Research Information Repository