Traffic Flow State Analysis Considering Driver Response Time and V2V Communication Delay in Heterogeneous Traffic Environment
Abstract
:1. Introduction
- Most of the existing studies use different models to describe the car-following behavior characteristics of different vehicles. Due to the large differences between the models, it will affect the human-driven vehicles in reality. At the same time, the proportion of ACC vehicles degraded from CACC vehicles in the car-following environment has not been divided and explained in detail.
- The existing research on the characteristics of heterogeneous traffic flow is not comprehensive enough. At the same time, the characteristics of heterogeneous traffic flow are not deeply studied from the aspects of driver response time and V2V communication delay. At the same time, the rationality and accuracy of the improved car-following model for studying the two are not determined.
2. Car-Following Model in Heterogeneous Traffic Environment
2.1. Analysis of Vehicle Composition in Heterogeneous Traffic Environment
- Scenario 1: HDV vehicle following HDV vehicle.
- 2.
- Scenario 2: HDV vehicle following CACC vehicle.
- 3.
- Scenario 3: ACC vehicle following HDV vehicle.
- 4.
- Scenario 4: CACC vehicle following CACC vehicle.
- 5.
- Scenario 5: CACC vehicle following ACC vehicle.
- 6.
- Scenario 6: HDV vehicle following ACC vehicle.
2.2. HDV/ACC/CACC Car-Following Model
- HDV car-following model
- 2.
- ACC car-following model
- 3.
- CACC car-following model
2.3. Fundamental Diagram Analysis under Heterogeneous Traffic Environment
3. Traffic Flow State Analysis Considering Multi-Delay Factors
3.1. Considering Driver Response Time Car-Following Model Update
- Driver’s physiological attributes such as gender and age;
- Considering that driving experience is the knowledge accumulation of the driver’s long-term driving conditions, the driving age, driving mileage, and driving frequency are selected as the main evaluation indexes to measure the knowledge accumulation;
- The improved driving load assessment method in Reference [24] is used to quantify the driving load of each subject as an indicator of driving load;
- The driver’s expectation is divided into speed expectation, distance expectation, and comfort expectation to reflect the driver’s driving style and driving expectation.
3.2. Considering CACC and ACC Vehicles’ Communication Delay Time Car-Following Model Update
3.3. Traffic State Analysis
4. Model Illustration
4.1. Simulation Environment Settings
4.2. Analysis of Simulation Results
5. Conclusions
- When the permeability of CAVs is greater than 0.6, it has a positive impact on the maximum flow of traffic flow in a heterogeneous environment. With the increase in the proportion of connected automated vehicles, the maximum flow and optimal density of mixed traffic flow gradually increase, which can effectively improve road capacity and help solve traffic congestion.
- Driver response time and vehicle-to-vehicle communication delay have a negative impact on the maximum flow of a heterogeneous traffic flow. As the delay increases, the maximum flow and optimal density of a heterogeneous traffic flow gradually decrease. However, when the permeability is lower than 0.4, the impact on CAVs is small.
- Based on the data collected from the simulation experiment, the flow-density scatter plot obtained after the traffic flow reaches the equilibrium state is on both sides of the corresponding theoretical curve, which is highly consistent with the theoretical curve. It proves the rationality and accuracy of using the updated car-following model to deal with driver response time and vehicle-to-vehicle communication delay.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Scenario | Front Car | Rear Car | Probability |
---|---|---|---|
1 | HDV | HDV | |
2 | CACC | HDV | |
3 | HDV | ACC | |
4 | CACC | CACC | |
5 | ACC | CACC | |
6 | ACC | HDV |
Permeability | Critical Density | |||
---|---|---|---|---|
1841.59 | 27.04 | - | - | |
1960.41 | 27.66 | 6.45% | 2.29% | |
2150.60 | 28.88 | 16.78% | 6.81% | |
2457.25 | 30.98 | 33.43% | 14.57% | |
2993.80 | 34.11 | 62.57% | 25.92% | |
4430.00 | 37.07 | 140.55% | 37.09% |
Parameter Name | Parameter Value |
---|---|
Lane length | 10 1 km |
Vehicle length | 5 m |
HDV headway | 1.5 s |
ACC headway | 1.1 s |
CACC headway | 0.6 s |
Maximum vehicle speed | 33.3 m/s (120 km/h) |
Total simulation time | 18,000 s |
Simulation time step | 0.1 s |
Vehicle input | 3600 veh/h |
Detector frequency | 120 s |
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Guan, S.; Ma, C.; Wang, J. Traffic Flow State Analysis Considering Driver Response Time and V2V Communication Delay in Heterogeneous Traffic Environment. Sustainability 2023, 15, 8459. https://doi.org/10.3390/su15118459
Guan S, Ma C, Wang J. Traffic Flow State Analysis Considering Driver Response Time and V2V Communication Delay in Heterogeneous Traffic Environment. Sustainability. 2023; 15(11):8459. https://doi.org/10.3390/su15118459
Chicago/Turabian StyleGuan, Shan, Chicheng Ma, and Jianjun Wang. 2023. "Traffic Flow State Analysis Considering Driver Response Time and V2V Communication Delay in Heterogeneous Traffic Environment" Sustainability 15, no. 11: 8459. https://doi.org/10.3390/su15118459
APA StyleGuan, S., Ma, C., & Wang, J. (2023). Traffic Flow State Analysis Considering Driver Response Time and V2V Communication Delay in Heterogeneous Traffic Environment. Sustainability, 15(11), 8459. https://doi.org/10.3390/su15118459