Research on the Impacts of Generalized Preceding Vehicle Information on Traffic Flow in V2X Environment
Abstract
:1. Introduction
2. Simulation Framework
3. Simulation
3.1. Setting of the Simulation Scenario
3.2. The Simulation of Traffic Flow
3.3. Simulation on the Impacts of Disturbance on Traffic Flow
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Abbreviations | Full Name |
---|---|
V2X | vehicles to everything |
GPV | generalized preceding vehicles |
CA | cellular automata |
OV | optimal velocity |
GF | generalized force |
FVD | full velocity difference |
TFSF | traffic flow simulation framework |
CACC | cooperative adaptive cruise control |
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Parameters | V1 | V2 | C1 | C2 | lc |
---|---|---|---|---|---|
6.75 | 7.91 | 0.13 | 1.57 | 5 |
Parameters | Generalized Preceding Vehicles (GPV) Model | Full Velocity Difference (FVD) Model |
---|---|---|
α | 0.767 | 0.852 |
λ | 0.301 | 0.389 |
p | 0.769 | -- |
Maximum Volume | Rate A of the Increase | Rate B of the Increase | |
---|---|---|---|
0.9 | veh∙h−1 | 52.40% | 0% |
0.8 | veh∙h−1 | 70.39% | 11.80% |
0.7 | veh∙h−1 | 82.03% | 6.83% |
0.6 | veh∙h−1 | 88.73% | 3.68% |
Breaking Value | Rate A of the Increase | Rate B of the Increase | |
---|---|---|---|
0.9 | veh/km | 52.30% | 0% |
0.8 | veh/km | 70.28% | 34.37% |
0.7 | veh/km | 81.91% | 16.55% |
0.6 | veh/km | 88.63% | 8.20% |
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Wang, X.; Han, J.; Bai, C.; Shi, H.; Zhang, J.; Wang, G. Research on the Impacts of Generalized Preceding Vehicle Information on Traffic Flow in V2X Environment. Future Internet 2021, 13, 88. https://doi.org/10.3390/fi13040088
Wang X, Han J, Bai C, Shi H, Zhang J, Wang G. Research on the Impacts of Generalized Preceding Vehicle Information on Traffic Flow in V2X Environment. Future Internet. 2021; 13(4):88. https://doi.org/10.3390/fi13040088
Chicago/Turabian StyleWang, Xiaoyuan, Junyan Han, Chenglin Bai, Huili Shi, Jinglei Zhang, and Gang Wang. 2021. "Research on the Impacts of Generalized Preceding Vehicle Information on Traffic Flow in V2X Environment" Future Internet 13, no. 4: 88. https://doi.org/10.3390/fi13040088