Simulation-Oriented Analysis and Modeling of Distracted Driving
Abstract
:1. Introduction
2. Data
2.1. Shanghai Naturalistic Driving Study (SH-NDS)
2.2. Participants
2.3. Distracted Car-Following Event
3. Characteristics of Distracted Car-Following Events
3.1. Interval between Events
3.2. Duration of the Events
3.3. Distracted Car-Following Pattern
4. Distracted Car-Following Model
4.1. Driver Attributes Affected by Distraction
4.2. Distracted Car-Following Model
5. Model Calibration
5.1. Model Calibration Results
5.2. Model Performance at the Population Level
5.3. Model Performance at the Individual Level
6. Micro-Simulation Implementation
6.1. Distracted Driving Simulation in Traffic Flow
6.2. Impact of Distraction on Traffic Flow
6.2.1. Impact of Distraction Fractions on Traffic Flow
6.2.2. Impact of Distraction Fractions on Intersections and Segments on Surface Road
6.3. Pre-Crash Scenario Simulation
7. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Possible Distributions | Distraction Event Interval | Distribution Diagram | |
---|---|---|---|
K–S Test Statistic | Chi-Squared Test Statistic | ||
Normal distribution | <0.001 | <0.001 | |
Exponential distribution | 0.003 | 0.002 | |
Extreme value distribution | <0.001 | <0.001 | |
Burr distribution | <0.001 | 0.015 | |
α-Stable distribution | 0.005 | 0.017 | |
Gamma distribution | 0.542 | 0.220 |
Possible Distributions | Distraction Event Duration | Distribution Diagram | |
---|---|---|---|
K–S Test Statistic | Chi-Squared Test Statistic | ||
Normal distribution | <0.001 | <0.001 | |
Exponential distribution | 0.012 | 0.045 | |
Extreme Value distribution | <0.001 | <0.001 | |
Burr distribution | 0.443 | 0.086 | |
a-Stable distribution | 0.005 | 0.017 | |
Gamma distribution | 0.032 | 0.057 |
Parameter | Value |
---|---|
Population size | 300 |
Number of generations | 1000 |
Number of stall generations | 100 |
Parameter | Description of Parameter | Boundary | Initial Searching Value |
---|---|---|---|
Maximum acceleration | [0.1, 5] | 2 | |
Desired speed | [1, 50] | 30 | |
Comfortable deceleration | [0.1, 5] | 2 | |
Distance at standstill | [0.5, 10] | 5 | |
Desired time headway | [0.1, 5] | 1.5 |
Scenarios | Expressway with High Traffic Volume | Expressway with Low Traffic Volume | SURFACE ROAD | ||||||
---|---|---|---|---|---|---|---|---|---|
Pattern | Excessive | Moderate | Mild | Excessive | Moderate | Mild | Excessive | Moderate | Mild |
3.614 | 3.745 | 2.663 | 2.974 | 0.911 | 3.854 | 2.103 | 6.074 | 6.840 | |
0.671 | 0.437 | 1.223 | 0.814 | 0.875 | 0.621 | 0.886 | 0.140 | 1.032 | |
0.917 | 0.585 | 0.275 | 1.080 | 0.494 | 0.144 | 0.822 | 0.237 | 0.658 | |
0.906 | 1.828 | 0.716 | 5.000 | 0.840 | 2.966 | 1.311 | 2.000 | 0.973 | |
30.638 | 25.467 | 23.795 | 32.016 | 29.605 | 27.007 | 25.292 | 23.115 | 18.793 | |
GMM μ = [4.09, 1.58], σ = [0.18, 1.13], α = [0.50, 0.50] | Normal μ = 2.77, σ = 1.53 | GMM μ = [4.62, 0.94], σ = [0.04, 0.48], α = [0.17, 0.83] | Normal μ = 2.46, σ = 1.53 | GMM μ = [1.68, 4.11], σ = [0.73, 0.33], α = [0.65, 0.35] | GMM μ = [3.93, 1.42], σ = [0.39, 0.71], α = [0.56, 0.44] | Normal μ = 3.28, σ = 1.66 | α_stable α = 0.40, β = –0.99, γ = 0.76, δ = 4.49 | Normal μ = 3.28, σ = 1.66 | |
Normal μ = 0.11, σ = 13.53 | GMM μ = [8.33, −14.39], σ = [24.98, 22.18], α = [0.64, 0.36] | Normal μ = −1.43, σ = 10.57 | GMM μ = [15.32, −6.51], σ = [49.69, 22.57], α = [59.62, 12.11] | GMM μ = [8.10, −11.03], σ = [22.57, 49.69], α = [0.43, 0.57] | GMM μ = [12.72, −5.71], σ = [62.08, 18.17], α = [0.32, 0.68] | α_stable α = 1.41, β = −0.74, γ = 3.80, δ = 0.42 | α_stable α = 1.58, β = −0.67, γ = 4.21, δ = –2.09 | α_stable α = 2, β = 0.94, γ = 8.01, δ = −2.00 | |
α_stable α = 0.40, β = 0.47, γ = 0.04, δ = −0.09 | GMM μ = [3.75, −3.68], σ = [0.08, 0.04], α = [0.64, 0.36] | α_stable α = 0.4, β = 0.96, γ = 1.01, δ = −3.14 | GMM μ = [3.17, −3.15], σ = [0.14, 0.20], α = [0.45, 0.55] | GMM μ = [−0.86, 0.32], σ = [0.01, 3.34], α = [0.63, 0.37] | GMM μ = [0.49, −5], σ = [2.27, 0.01], α = [0.95, 0.05] | GMM μ = [5, −2.16, 3.67], σ = [0, 4.67, 1.17], α = [0.26, 0.42, 0.32] | α_stable α = 2, β = −0.97, γ = 2.59, δ = 0.75 | α_stable α = 0.4, β = −0.38, γ = 0.46, δ = 2.22 |
Distraction Fractions | p-Value |
---|---|
15% | <0.001 |
20% | <0.001 |
25% | <0.001 |
Distraction Fraction | Dangerous (TTC < 1 s) | Serious Conflict (1 s ≤ TTC< 1.5 s) | Mild Conflict (1 s ≤ TTC < 2 s) | Safe (TTC ≥ 2 s) |
---|---|---|---|---|
15% | 4.52% | 3.75% | 4.59% | 87.14% |
20% | 7.24% | 3.56% | 5.25% | 83.95% |
25% | 8.60% | 4.42% | 5.07% | 81.91% |
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Zhu, Y.; Yue, L. Simulation-Oriented Analysis and Modeling of Distracted Driving. Appl. Sci. 2024, 14, 5636. https://doi.org/10.3390/app14135636
Zhu Y, Yue L. Simulation-Oriented Analysis and Modeling of Distracted Driving. Applied Sciences. 2024; 14(13):5636. https://doi.org/10.3390/app14135636
Chicago/Turabian StyleZhu, Yixin, and Lishengsa Yue. 2024. "Simulation-Oriented Analysis and Modeling of Distracted Driving" Applied Sciences 14, no. 13: 5636. https://doi.org/10.3390/app14135636
APA StyleZhu, Y., & Yue, L. (2024). Simulation-Oriented Analysis and Modeling of Distracted Driving. Applied Sciences, 14(13), 5636. https://doi.org/10.3390/app14135636