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Comparing traffic state estimators for mixed human and automated traffic flows
Institution:1. Electrical Engineering Department, King Abdullah University of Science and Technology, Thuwal, Saudi Arabia;2. Department of Civil, Architectural and Environmental Engineering, University of Texas Austin, USA;1. The Department of Production Engineering & Management, Technical University of Crete, Chania, 73100, Greece;2. The Department of Built Environment, School of Engineering, Aalto University, Espoo, PLXOP02150, Finland
Abstract:This article addresses the problem of modeling and estimating traffic streams with mixed human operated and automated vehicles. A connection between the generalized Aw Rascle Zhang model and two class traffic flow motivates the choice to model mixed traffic streams with a second order traffic flow model. The traffic state is estimated via a fully nonlinear particle filtering approach, and results are compared to estimates obtained from a particle filter applied to a scalar conservation law. Numerical studies are conducted using the Aimsun micro simulation software to generate the true state to be estimated. The experiments indicate that when the penetration rate of automated vehicles in the traffic stream is variable, the second order model based estimator offers improved accuracy compared to a scalar modeling abstraction. When the variability of the penetration rate decreases, the first order model based filters offer similar performance.
Keywords:Traffic state estimation  Automated vehicles  Second order traffic flow model
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