Uncertainty Quantification of the Traffic Assignment Model

Authors

  • Mundher Seger
    Affiliation

    Department of Highway and Railway Engineering, Faculty of Civil Engineering, Budapest University of Technology and Economics, 1111 Budapest, Műegyetem rkp. 3. Hungary

    Civil Engineering Department, University of Technology, Sana’a Street,19006 Baghdad, Iraq

  • Lajos Kisgyörgy
    Affiliation

    Department of Highway and Railway Engineering, Faculty of Civil Engineering, Budapest University of Technology and Economics, 1111 Budapest, Műegyetem rkp. 3. Hungary

https://doi.org/10.3311/PPci.16396

Abstract

Forecasting of traffic flow in the traffic assignment model suffered to a wide range of uncertainties arising from different sources and exacerbating through sequential-stages of the travel demand model. Uncertainty quantification can provide insights into the level of confidence on the traffic assignment model outputs, and also identify the uncertainties of the input Origin-Destination matrix for enhancing the forecasting robustness of the travel demand model.
In this paper, a systematic framework is proposed to quantify the uncertainties that lie in the Origin-Destination input matrix. Hence, this study mainly focuses on predicting the posterior distributions of uncertainty Origin-Destination pairs and correcting the biases of Origin-Destination pairs by using the inverse uncertainty quantification formulated through Least Squares Adjustment method. The posterior distributions are further used in the forward uncertainty quantification to quantify the forecast uncertainty of the traffic flow on a transport network. The results show the effectiveness of implementing the inverse uncertainty quantification framework in the traffic assignment model. And demonstrate the necessity of including uncertainty quantification of the input Origin-Destination matrix in future work of travel demand modelling.

Keywords:

traffic assignment model, origin-destination, forward uncertainty quantification, inverse uncertainty quantification, least-squares adjustment

Citation data from Crossref and Scopus

Published Online

2020-09-16

How to Cite

Seger, M., Kisgyörgy , L. “Uncertainty Quantification of the Traffic Assignment Model”, Periodica Polytechnica Civil Engineering, 64(4), pp. 1181–1201, 2020. https://doi.org/10.3311/PPci.16396

Issue

Section

Research Article