Stability Analysis of Mixed Traffic Flow with Connected and Autonomous Vehicles Based on Simplified DSM Model
Publication: CICTP 2023
ABSTRACT
The applications of mobile communication and automatic driving-related technologies in transportation have made a revolution for us in traffic information perception, vehicle cooperative control, and traffic management. Besides, the emergence and development of connected vehicles (CV) and connected and autonomous vehicles (CAV) have gradually changed the traditional traffic flow into a mixed one. In order to investigate their influences and characteristics of mixed traffic flows, this paper constructs an analysis model to derive the linear stability condition of the mixed traffic flow with CV and CAV based on the simplified desired safety margin (SDSM) model. Several numerical experiments are conducted to analyze the string stability of homogeneous and heterogeneous traffic flow, respectively. The results reveal that the presence of CAV could contribute to improving the string stability as well as reducing rear-end crashes. The higher the penetration rate of CAV, the more stable the string. And the time delay in drivers and communications is not conducive to the string stability. Besides, it is also found that controllable vehicles show great potential in preventing shockwave formation and propagation, suggesting a new way in traffic flow management.
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Published online: Dec 14, 2023
ASCE Technical Topics:
- Engineering fundamentals
- Equipment and machinery
- Highway transportation
- Infrastructure
- Intelligent transportation systems
- Models (by type)
- Traffic analysis
- Traffic engineering
- Traffic flow
- Traffic management
- Traffic models
- Traffic safety
- Transportation engineering
- Transportation management
- Unmanned vehicles
- Vehicles
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