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A bayesian network approach to traffic flow forecasting

Published: 01 March 2006 Publication History
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  • Abstract

    A new approach based on Bayesian networks for traffic flow forecasting is proposed. In this paper, traffic flows among adjacent road links in a transportation network are modeled as a Bayesian network. The joint probability distribution between the cause nodes (data utilized for forecasting) and the effect node (data to be forecasted) in a constructed Bayesian network is described as a Gaussian mixture model (GMM) whose parameters are estimated via the competitive expectation maximization (CEM) algorithm. Finally, traffic flow forecasting is performed under the criterion of minimum mean square error (mmse). The approach departs from many existing traffic flow forecasting models in that it explicitly includes information from adjacent road links to analyze the trends of the current link statistically. Furthermore, it also encompasses the issue of traffic flow forecasting when incomplete data exist. Comprehensive experiments on urban vehicular traffic flow data of Beijing and comparisons with several other methods show that the Bayesian network is a very promising and effective approach for traffic flow modeling and forecasting, both for complete data and incomplete data

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    cover image IEEE Transactions on Intelligent Transportation Systems
    IEEE Transactions on Intelligent Transportation Systems  Volume 7, Issue 1
    March 2006
    132 pages

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    IEEE Press

    Publication History

    Published: 01 March 2006

    Author Tags

    1. Bayesian network
    2. Gaussian mixture model
    3. expectation maximization algorithm
    4. traffic flow forecasting

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