Indirect observation of rerouting phenomena in traffic networks – case study of Warsaw bridges

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/10.5604/08669546.1146996

Keywords:

traffic events, dynamic traffic, transportation network, rerouting phenomena, traffic management, real-time traffic

Abstract

In this paper we propose estimation procedure in which traffic flows resulting from rerouting model are matched with traffic flows observed during unexpected events. We show practical value of observing a entire cut-set of the transportation network and propose theoretical closed-form formulation of estimation problem for the rerouting model. We apply proposed framework on field-data from Warsaw bridges to observe rerouting phenomena. Most importantly we observed that: a) around 20% of affected traffic flow reroutes, b) rerouting flows are increasing in time, c) drivers show strategic capabilities, d) and maximize their utility while rerouting. All of the which were hypothesized in Information Comply Model (Kucharski et. al., 2014) and are now supported with field observations.

References

Kucharski, R., Gentile, G., Direct observation of rerouting phenomena in traffic networks. Archives of Transport, vol. 30/Issue 2, pp.57-66, 2014.

Kucharski, R., Gentile, G. & Meschini, L. 2014, Information Comply Model – new model to represent rerouting phenomena in Dynamic Traffic Assignment, 5th International Symposium on Dynamic Traffic Assignment, pages 1-32, Salerno, 2014.

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Gentile G. (2010) The General Link Transmission Model for Dynamic Network Loading and a comparison with the DUE algorithm. (selected papers from the DTA 2008 Conference, Leuven), ed.s L.G.H. Immers, C.M.J. Tampere, F. Viti, Transport Economics, Management and Policy Series, Edward Elgar Publishing, MA, USA.

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Published

2014-12-31

Issue

Section

Original articles

How to Cite

Kucharski, R., & Gentile, G. (2014). Indirect observation of rerouting phenomena in traffic networks – case study of Warsaw bridges. Archives of Transport, 32(4), 29-41. https://doi.org/10.5604/08669546.1146996

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