Examination of the Factors Influencing the Electric Vehicle Accident Size in Norway (2020–2021)
Abstract
:1. Introduction
2. Materials
2.1. Collision Features
2.2. Time Features
2.3. Roadway Features
2.4. Environment Features
3. Models
- is the accident number;
- is the size of the accident, i.e., 1, 2, 3, or 4;
- is the hidden continuous dependent variable of the accident;
- , , and , are the constant cut-off points, ;
- is the independent variable vector of the accident;
- is the regression coefficient vector;
- is the random error of the accident, and follows a Logistic distribution.
4. Results
4.1. Time Factors
4.2. Roadway Factors
4.3. Environment Factors
5. Conclusions and Discussion
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Definition | Proportion |
---|---|---|
Accident size | Number of involved units—1 | 9.6% |
Number of involved units—2 | 72.8% | |
Number of involved units—3 | 13.1% | |
Number of involved units—≥4 | 4.5% | |
Collision type | Rear-end | 34.6% |
Angle | 34.2% | |
Head-on | 13.5% | |
Hit pedestrian | 12.3% | |
Unknown * | 5.4% | |
Accident category | Car | 68.5% |
Pedestrian | 11.9% | |
Bicycle | 16.5% | |
Motorcycle | 2.8% | |
Unknown * | 0.3% | |
Speed limit | Low (<50 km/h) | 26.2% |
Medium (50~80 km/h) | 49.9% | |
High (≥80 km/h) | 23.9% | |
Road location | Junctions | 42.0% |
Segments | 55.4% | |
Unknown * | 2.6% | |
Presence of medians | Yes | 22.7% |
No | 70.6% | |
Unknown * | 6.7% | |
Visibility | Good visibility | 73.8% |
Good visibility—rainfall/snowfall | 13.8% | |
Poor visibility | 5.2% | |
Unknown * | 7.2% | |
Road surface conditions | Dry | 56.7% |
Wet | 26.8% | |
Snowy/icy | 9.7% | |
Unknown * | 6.8% |
Variable | Definition | Proportion |
Dependent | ||
Accident size | Number of involved units—1 | 9.2% |
Number of involved units—2 | 73.2% | |
Number of involved units—3 | 13.1% | |
Number of involved units—≥4 | 4.5% | |
Independent | ||
Weekend | 0 if it occurred on weekdays | 80.4% |
1 if it occurred on weekends | 19.6% | |
Time of day | AM peak (7:00 a.m.–8:00 a.m.) | 11.8% |
Daytime (9:00 a.m.–2:00 p.m.) (Baseline) | 32.3% | |
PM peak (3:00 p.m.–5:00 p.m.) | 32.1% | |
Nighttime (6:00 p.m.–6:00 a.m.) | 23.8% | |
Speed limit | Low (<50 km/h) | 24.9% |
Medium (50~80 km/h) (Baseline) | 50.3% | |
High (≥80 km/h) | 24.8% | |
Road location | Junction | 43.7% |
Segment (Baseline) | 56.3% | |
Presence of medians | Yes | 24.0% |
No (Baseline) | 76.0% | |
Visibility | Good visibility (Baseline) | 78.9% |
Good visibility-rainfall/snowfall | 15.0% | |
Poor visibility | 6.1% | |
Road surface conditions | Dry (Baseline) | 61.0% |
Wet | 28.3% | |
Snowy/icy | 10.7% |
Variable | Value | Std. Error | t Value | 95% Confidence Interval | Odds Ratio |
---|---|---|---|---|---|
Weekend | −0.367 | 0.218 | −1.686 | (−0.797, 0.057) | 0.693 |
a.m. peak | −0.268 | 0.293 | −0.914 | (−0.845, 0.304) | 0.765 |
p.m. peak | 0.380 | 0.206 | 1.841 | (−0.024, 0.786) | 1.462 |
Nighttime | −0.489 | 0.237 | −2.066 | (−0.955, −0.027) * | 0.614 |
Speed limit—Low | 0.116 | 0.205 | 0.565 | (−0.286, 0.517) | 1.123 |
Speed limit—High | 0.485 | 0.220 | 2.201 | (0.053, 0.918) * | 1.624 |
Junction | −0.128 | 0.180 | −0.714 | (−0.482, 0.224) | 0.879 |
Presence of medians | 0.809 | 0.207 | 3.901 | (0.403, 1.216) * | 2.246 |
Good visibility-Rainfall/Snowfall | 0.188 | 0.299 | 0.630 | (−0.397, 0.774) | 1.207 |
Poor visibility | 0.116 | 0.399 | 0.291 | (−0.668, 0.893) | 1.123 |
Road surface condition—Wet | −0.099 | 0.253 | −0.391 | (−0.596, 0.394) | 0.906 |
Road surface condition—Snowy/Icy | −0.423 | 0.316 | −1.340 | (−1.041, 0.194) | 0.655 |
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Hou, X.; Su, M.; Liu, C.; Li, Y.; Ma, Q. Examination of the Factors Influencing the Electric Vehicle Accident Size in Norway (2020–2021). World Electr. Veh. J. 2024, 15, 3. https://doi.org/10.3390/wevj15010003
Hou X, Su M, Liu C, Li Y, Ma Q. Examination of the Factors Influencing the Electric Vehicle Accident Size in Norway (2020–2021). World Electric Vehicle Journal. 2024; 15(1):3. https://doi.org/10.3390/wevj15010003
Chicago/Turabian StyleHou, Xuerui, Meiling Su, Chenhui Liu, Ying Li, and Qinglu Ma. 2024. "Examination of the Factors Influencing the Electric Vehicle Accident Size in Norway (2020–2021)" World Electric Vehicle Journal 15, no. 1: 3. https://doi.org/10.3390/wevj15010003