Direct observation of rerouting phenomena in traffic networks

Authors

  • Rafał Kucharski Cracow University of Technology, Department of Transportation Systems, Cracow, Poland Author
  • Guido Gentile DICEA, Sapienza University of Rome, Rome, Italy Author

DOI:

https://doi.org/10.5604/08669546.1146977

Keywords:

dynamic traffic assignment, rerouting phenomena, route choice models, information comply model

Abstract

In this paper we propose how available dataset can be used to estimate rerouting phenomena in traffic networks. We show how to look at set of paths observed during unexpected events to understand the rerouting phenomena. We use the information comply model [1] and propose its estimation method. We propose the likelihood formula and show how the theoretical and observed rerouting probabilities can be obtained. We conclude with illustrative example showing how a single observed path can be processes and what information it provides. Contrary to parallel paper [2] where rerouting phenomena is estimated using real traffic flow measures from Warsaw, here we use only synthetic data. The paper is organized as follows. First we elaborate on rerouting phenomena and define the traffic network, then we summarize the literature behind rerouting phenomena. We follow with a synthetic definition of dynamic traffic assignment needed to introduce ICM model in subsequent section. Based on that introduction we define the observations and propose estimation method based on them followed by illustrative example. Paper is summarized with conclusions and pointing of future directions.

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Published

2014-06-30

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Section

Original articles

How to Cite

Kucharski, R., & Gentile, G. (2014). Direct observation of rerouting phenomena in traffic networks. Archives of Transport, 30(2), 57-66. https://doi.org/10.5604/08669546.1146977

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