Deep learning for short-term traffic flow prediction

•A deep learning architecture that captures nonlinear spatio-temporal flow effects.•Traffic predictions during special events, a Chicago Bears football game and a snowstorm•Our approacch outperforms linear and one-layer neural network models. We develop a deep learning model to predict traffic flows...

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Bibliographic Details
Published inTransportation research. Part C, Emerging technologies Vol. 79; pp. 1 - 17
Main Authors Polson, Nicholas G., Sokolov, Vadim O.
Format Journal Article
LanguageEnglish
Published Elsevier India Pvt Ltd 01.06.2017
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Summary:•A deep learning architecture that captures nonlinear spatio-temporal flow effects.•Traffic predictions during special events, a Chicago Bears football game and a snowstorm•Our approacch outperforms linear and one-layer neural network models. We develop a deep learning model to predict traffic flows. The main contribution is development of an architecture that combines a linear model that is fitted using ℓ1 regularization and a sequence of tanh layers. The challenge of predicting traffic flows are the sharp nonlinearities due to transitions between free flow, breakdown, recovery and congestion. We show that deep learning architectures can capture these nonlinear spatio-temporal effects. The first layer identifies spatio-temporal relations among predictors and other layers model nonlinear relations. We illustrate our methodology on road sensor data from Interstate I-55 and predict traffic flows during two special events; a Chicago Bears football game and an extreme snowstorm event. Both cases have sharp traffic flow regime changes, occurring very suddenly, and we show how deep learning provides precise short term traffic flow predictions.
ISSN:0968-090X
1879-2359
DOI:10.1016/j.trc.2017.02.024