Article ID: | iaor201111768 |
Volume: | 46 |
Issue: | 1 |
Start Page Number: | 235 |
End Page Number: | 252 |
Publication Date: | Jan 2012 |
Journal: | Transportation Research Part B |
Authors: | Peeta Srinivas, Du Lili, Kim Yong Hoon |
Keywords: | programming: nonlinear, simulation: applications |
As intelligent transportation systems (ITS) approach the realm of widespread deployment, there is an increasing need to robustly capture the variability of link travel time in real‐time to generate reliable predictions of real‐time traffic conditions. This study proposes an adaptive information fusion model to predict the short‐term link travel time distribution by iteratively combining past information on link travel time on the current day with the real‐time link travel time information available at discrete time points. The past link travel time information is represented as a discrete distribution. The real‐time link travel time is represented as a range, and is characterized using information quality in terms of information accuracy and time delay. A nonlinear programming formulation is used to specify the adaptive information fusion model to update the short‐term link travel time distribution by focusing on information quality. The model adapts good information by weighing it higher while shielding the effects of bad information by reducing its weight. Numerical experiments suggest that the proposed model adequately represents the short‐term link travel time distribution in terms of accuracy and robustness, while ensuring consistency with ambient traffic flow conditions. Further, they illustrate that the mean of a representative short‐term travel time distribution is not necessarily a good tracking indicator of the actual (ground truth) time‐dependent travel time on that link. Parametric sensitivity analysis illustrates that information accuracy significantly influences the model, and dominates the effects of time delay and the consistency constraint parameter. The proposed information fusion model bridges key methodological gaps in the ITS deployment context related to information fusion and the need for short‐term travel time distributions.