A Vehicle Conflict Risk Identification Method Based on an Improved Intelligent Driver Model
Abstract
:1. Introduction
2. Methodology
2.1. Experimental Road Sections
2.2. VISSIM Scenario Development
2.3. Improved Intelligent Driver Model
3. Result
4. Discussion
4.1. Enhancement of Model Realism and Robustness
4.2. Integration with Intelligent Systems
4.3. Adaptation to Diverse Traffic Environments
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Improvement Dimension | Reference | Year | Core Methods |
---|---|---|---|
Environmental Adaptability Optimization | Yi et al. [27] | 2020 | Proposed the back-looking distance driver model, which integrates a backward-looking distance optimization module with linear stability theory to enhance the stability of homogeneous CAV queues. |
Alhariqi et al. [28] | 2022 | Developed adaptive IDMs that dynamically adjust parameters based on real-time traffic conditions. | |
Holley et al. [29] | 2023 | Introduced the concept of maximum deceleration competition between main lane and converging vehicles into IDM. | |
Vehicle Performance Coupling Modeling | Zhou et al. [30] | 2024 | Optimized queue cooperative control by dynamically correcting IDM acceleration function based on front vehicle speed and time. |
Xiao et al. [31] | 2018 | Coupled the IDM with a generalized autoregressive conditional heteroskedasticity model to predict sudden changes in acceleration associated with risky driving behavior. | |
Wu et al. [32] | 2024 | Utilized residual dense networks to extract driving state features and made collaborative decisions with IDM through optimal weight assignment. | |
Driver Behavior Integration | Tanveer et al. [33] | 2020 | Quantified the nonlinear inhibitory effect of psychological stress on acceleration by embedding panic level coefficients into IDM safety distance calculations. |
Sharma et al. [34] | 2025 | Introduced a multi-target prognostic logic and a stimulus perception parameter calibration mechanism into IDM to account for bus driver driving characteristics. |
Driving Behavior | Parameters to Be Calibrated Parameter Name | Parameter Threshold |
---|---|---|
Follow-up model | Average parking distance/m | 0.5–3 |
Time headway/s | 0.3–2 | |
Follow-up variables | 2–7 | |
Aggressive following threshold | 2.5–5 | |
Passive following threshold | −5–5 | |
Acceleration/(m/s2) | 1–5 | |
Vehicle lane-change behavior | Acceptable deceleration/(m/s2) | −4–−0.5 |
Minimum headway/m | 0.1–1 | |
Safety distance reduction factor | 0.1–1 | |
Maximum deceleration of coordinated braking/(m/s2) | −5–−2 |
Parameter | Value | Unit |
---|---|---|
a | 2 | m/s2 |
b | 1.4 | m/s2 |
s0 | 1.5 | m |
T | 1.2 | s |
V0 | 70 | km/h |
3 | — |
Risk Level | Indicator | |
---|---|---|
TTC (s) | ITTC (1/s) | |
Potential conflict risk (PC) | >4 | <0.25 |
General conflict risk (GC) | [2.1, 4] | [0.25, 0.48] |
Serious conflict risk (SC) | <2.1 | >0.48 |
Conflict Level | Conflict Situation | ||
---|---|---|---|
Actual Sample | Indicator Sample | Accuracy Rate | |
Potential conflict risk (PC) | 26,161 | 27,138 | 96.63% |
General conflict risk (GC) | 17,997 | 17,587 | 97.72% |
Serious conflict risk (SC) | 7778 | 7211 | 92.71% |
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Qi, S.; Zheng, A. A Vehicle Conflict Risk Identification Method Based on an Improved Intelligent Driver Model. Appl. Sci. 2025, 15, 3240. https://doi.org/10.3390/app15063240
Qi S, Zheng A. A Vehicle Conflict Risk Identification Method Based on an Improved Intelligent Driver Model. Applied Sciences. 2025; 15(6):3240. https://doi.org/10.3390/app15063240
Chicago/Turabian StyleQi, Shouming, and Ao Zheng. 2025. "A Vehicle Conflict Risk Identification Method Based on an Improved Intelligent Driver Model" Applied Sciences 15, no. 6: 3240. https://doi.org/10.3390/app15063240
APA StyleQi, S., & Zheng, A. (2025). A Vehicle Conflict Risk Identification Method Based on an Improved Intelligent Driver Model. Applied Sciences, 15(6), 3240. https://doi.org/10.3390/app15063240