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Revealing the impact of stochastic driving characteristics on car-following behavior with locally collected vehicle trajectory data

Linheng Li, Shuo Li, Jing Gan, Xu Qu, Bin Ran

2024Transportmetrica B Transport Dynamics13 citationsDOI

Abstract

This study investigates the impact of Chinese drivers’ stochastic behaviour on local car-following situations using localized trajectory data. An extended stochastic car-following model (S-IDM) is established, which considers both internal and external stochasticity. External stochasticity is characterized by different driver types, while internal stochasticity is characterized by the standard deviation of acceleration under different headway and velocity differences for the same driver. The proposed model shows advantages in terms of single-vehicle simulation accuracy and traffic shock reproduction ability, compared to traditional and existing car-following models. The model can also be extended to the evolution analysis of mixed traffic flow models, where reducing the stochasticity of human-driven vehicles is critical for optimizing and controlling traffic flow.

Topics & Concepts

HeadwayTrajectoryAccelerationTraffic flow (computer networking)Stochastic modellingComputer scienceMicroscopic traffic flow modelShock (circulatory)Flow (mathematics)Standard deviationSimulationControl theory (sociology)MathematicsStatisticsTraffic generation modelReal-time computingPhysicsControl (management)Artificial intelligenceAstronomyComputer securityMedicineInternal medicineClassical mechanicsGeometryTraffic control and managementTransportation Planning and OptimizationTraffic and Road Safety
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