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Calibration and Validation of Microscopic Traffic Flow Models

In: Traffic and Granular Flow ’03

Author

Listed:
  • E. Brockfeld

    (German Aerospace Center, Institute of Transport Research)

  • P. Wagner

    (German Aerospace Center, Institute of Transport Research)

Abstract

Summary The aim of this paper is to present recent progress in calibrating ten microscopic traffic flow models. The models have been tested using data collected via DGPS-equipped cars (Differential Global Positioning System) on a test track in Japan. To calibrate the models, the data of a leading car are fed into the model under consideration and the model is used to compute the headway time series of the following car. The deviations between the measured and the simulated headways are then used to calibrate and validate the models. The calibration results agree with earlier studies as there are errors of 12 % to 17 % for all models and no model can be denoted to be the best. The differences between individual drivers are larger than the differences between different models. The validation process leads to errors from 17 % to 22 %. But for special data sets with validation errors up to 60 % the calibration process has reached what is known as “overfitting”: because of the adaptation to a particular situation, the models are not capable of generalizing to other situations.

Suggested Citation

  • E. Brockfeld & P. Wagner, 2005. "Calibration and Validation of Microscopic Traffic Flow Models," Springer Books, in: Serge P. Hoogendoorn & Stefan Luding & Piet H. L. Bovy & Michael Schreckenberg & Dietrich E. Wolf (ed.), Traffic and Granular Flow ’03, pages 67-72, Springer.
  • Handle: RePEc:spr:sprchp:978-3-540-28091-0_6
    DOI: 10.1007/3-540-28091-X_6
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