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Including heavy vehicles in a car‐following model: modelling,calibrating and validating
Authors:Kayvan Aghabayk  Majid Sarvi  William Young
Institution:1. School of Civil Engineering, College of Engineering, University of Tehran, Tehran, Iran;2. Department of Infrastructure Engineering, University of Melbourne, Parkville, Vic, Australia;3. Institute of Transport Studies, Department of Civil Engineering, Monash University, Clayton, Vic, Australia
Abstract:Heavy vehicles influence general traffic in many different ways compared with passenger vehicles, and this may result in different levels of traffic instability. Increases in the number and proportion of heavy vehicles in the traffic stream will therefore result in different traffic flow conditions. This research initially outlines the different car‐following behaviour of drivers in congested heterogeneous traffic conditions indicating the necessity for developing a car‐following model, which includes these differences. A psychophysical car‐following model, similar in form to Weideman's car‐following model, was developed. Due to the complexity of the developed model, the calibration of the model was undertaken using a particle swarm optimisation algorithm with the data recorded under congested traffic conditions. This was then incorporated into a traffic microsimulation model. The results showed that the car‐following perceptual thresholds and thus action points of drivers differ based on their vehicle and the lead vehicle types. The inclusion of the heavy vehicles in the model showed significant impacts on the traffic dynamic and interactions amongst different vehicles. Copyright © 2016 John Wiley & Sons, Ltd.
Keywords:heavy vehicle car‐following  heterogeneous traffic  traffic microsimulation  auto calibration  evolutionary algorithm  particle swarm optimisation algorithm
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