Analysis of Severe Injuries in Crashes Involving Large Trucks Using K-Prototypes Clustering-Based GBDT Model
Abstract
:1. Introduction
2. Related Work
2.1. Unobserved Heterogeneity in Crash Data
2.2. Severity Modeling
3. Methodologies and Materials
3.1. The K-Prototypes Clustering Method
3.2. Gradient Boosted Decision Trees
- Initialize the model with a constant value ; here, is the observed values, L is the loss function and γ is the prediction of the model, which minimizes the loss function. In a classification task, γ is the value of the log (odds).
- For m = 1,2,3… to M:
- (a)
- Calculate the pseudo residuals, , for i = 1, 2, 3……, n.
- (b)
- Fit a decision tree to the pseudo-residuals and create the terminal regions. Each leaf of the tree represented by for j = 1, 2, 3..., .
- (c)
- For j = 1, 2, 3…, m, calculate .
- (d)
- Update the .
- Output .
3.3. Data Description
3.4. SHAP Method for Feature Analysis
3.5. Predicting Performance Evaluation Metrices
4. Results
4.1. ClusterAnalysis
- CL1: “crashes on two-way divided with positive median barrier and in high posted speed limit zone”;
- CL2: “non-interstate highway crashes involving large trucks weighing over 26,000 (lb)”;
- CL3: “non-interstate highway crashes involving large trucks without trailing unit”.
4.2. Model Performance Evaluation
4.3. Feature Analysis
5. Discussion and Conclusions
Limitations and Future Study
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Codes | Descriptions |
---|---|
60 | Step van (GVWR > 10,000 lb) |
61 | Single-Unit Straight Truck or Cab-Chassis (10,000 lb < GVWR < 19,501 lb) |
62 | Single-Unit Straight Truck or Cab-Chassis (19,501 lb < GVWR < 26,000 lb) |
63 | Single-Unit Straight Truck or Cab-Chassis (GVWR > 26,000 lb) |
64 | Single Unit Straight Truck or Cab-Chassis (GVWR unknown) |
66 | Truck-Tractor (cab only or with any number of trailing units) |
67 | Medium/Heavy Pickup (GVWR > 4536 kg) |
71 | Unknown if Single-Unit or Combination-Unit Medium Truck (10,000 lb < GVWR < 26,000 lb) |
72 | Unknown if Single-Unit or Combination-Unit Heavy Truck (GVWR > 26,000 lb) |
78 | Unknown Medium/Heavy Truck Type |
79 | Unknown Truck Type (Light/Medium/Heavy) |
Level of Injury | Frequency (%) |
---|---|
K = Fatal injury or killed: any injury that results in death of a living person immediately after the crash or within 30 days of a motor vehicle crash. | 323 (3.39%) |
A = Suspected serious injury: any injury (except fatal injury) that prevents the injured person from continuing his/her usual activities like before the crash (e.g., lacerations, broken or distorted limbs, skull or chest injuries). | 865 (9.07%) |
Severe injuries (K + A) | 1188 (12.46%) |
B = Suspected minor injury: any injury that is evident to the observers at the scene (e.g., lump on the head, abrasions, bruises, minor lacerations). | 964 (10.12%) |
C = Possible injury: any injury that was claimed or complained about but was not evident as fatal, serious injury, or minor injury (e.g., momentary unconsciousness, claim of injury but not evident). | 1298 (13.61%) |
O = No injury: No person was injured, and only properties were damaged. | 6084 (63.81%) |
Non-severe injuries (B + C + O) | 8346 (87.54%) |
Feature Names | Frequency (%) | Feature Names | Frequency (%) |
---|---|---|---|
Vehicle Characteristics | Crash Characteristics | ||
1. Cargo body type (cargo_bt) | 15. Pre-crash movement | ||
Van/enclosed box | 3041 (31.90%) | Going straight | 4846 (50.83%) |
Other types | 2459 (25.79%) | Turning left | 765 (8.02%) |
Unknown | 1859 (19.50 %) | Negotiating a curve | 697 (7.31%) |
Flatbed | 864 (9.06%) | Stopped in roadway | 690 (7.24%) |
Dump | 535 (5.61%) | Changing lanes | 660 (6.92%) |
No cargo body | 435 (4.56 %) | Turning right | 580 (6.08%) |
Cargo tank | 341 (3.58%) | Backing up | 438 (4.59%) |
2. Gross vehicle weight (gvwr) | Others (e.g., starting in road, entering parking position, merging, etc.) | 383 (4.02%) | |
GVWR > 26,000 (26 k) (lb) | 6024 (63.18%) | Decelerating in road | 377 (3.95%) |
10 k (lb) < GVWR < 26 k (lb) | 3510 (36.82%) | Passing or overtaking another vehicle | 98 (1.03%) |
3. Trailing unit | 16. Manner of collision | ||
Yes | 4962 (52.05%) | Front to rear | 2753 (28.88%) |
No | 4572 (47.95%) | Sideswipe, same direction | 2306 (24.19%) |
4. Hazardous material involvement | No collision with motor vehicle in transport | 1926 (20.20%) | |
No | 9421 (98.81%) | Angle | 1696 (17.79%) |
Yes | 113 (1.19%) | Others | 332 (3.48%) |
5. Speed related | Sideswipe, opposite direction | 302 (3.17%) | |
No | 9156 (96.04%) | Front-to-front | 219 (2.30%) |
Yes | 378 (3.96%) | 17. Most harmful event | |
6. Number of vehicles in crash | Mean = 2, Std = 0.63 | Colliding vehicle in transport | 7529 (78.97%) |
7. Number of occupants | Mean = 1.18, Std = 0.53 | Colliding fixed object | 754 (7.91%) |
Roadway Characteristics | Rollover/overturn | 347 (3.64%) | |
8. Trafficway type | Colliding parked motor vehicle | 261 (2.74%) | |
Two-way, not divided | 3687 (38.67%) | Colliding vehicle outside trafficway | 169 (1.77%) |
Two-way divided with positive median barrier | 3026 (31.74%) | Others | 127 (1.33%) |
Two-way, divided, unprotected median | 1603 (16.81%) | Colliding pedestrian | 107 (1.12%) |
Two-way, not divided with continuous left-turn lane | 419 (4.39%) | Colliding live animal | 101 (1.06%) |
One-way | 280 (2.94%) | Hitting guardrail/face | 97 (1.02%) |
Non-trafficway or driveway access | 267 (2.80%) | Colliding pedal cyclists | 42 (0.44%) |
Entrance/exit ramp | 252 (2.64%) | Temporal Attributes | |
9. Roadway alignment | 18. Day of week | ||
Straight | 8300 (87.06%) | Weekdays | 8338 (87.46%) |
Curve left | 433(4.54%) | Weekends | 1196 (12.54%) |
Others | 406(4.26%) | 19. Time of the day (hour) | |
Curve right | 395(4.14%) | Non-peak (10 a.m.–16 p.m.) | 4238 (44.45%) |
10. Roadway grade | AM peak (5 a.m.–10 a.m.) | 2782 (29.18%) | |
Level | 7573 (79.43%) | Pm Peak (16 p.m.–19 p.m.) | 1162 (12.19%) |
Grade unknown slope | 885 (9.28%) | AM (0 a.m.–5 a.m.) | 732 (7.68%) |
Downhill | 361 (3.79%) | Night (19 p.m.–23:59 p.m.) | 620 (6.50%) |
Uphill | 284 (2.98%) | Environmental Characteristics | |
Non trafficway/driveway access | 267 (2.80%) | 20. Road surface condition | |
Others | 164 (1.72%) | Dry | 7662 (80.37%) |
11. Traffic control device | Wet | 1278 (13.40%) | |
No controls | 7090(74.37%) | Others | 594 (6.23%) |
Traffic control signals | 1601 (16.79%) | 21. Lighting condition | |
Stop sign | 428 (4.49%) | Daylight | 7470 (78.35%) |
Other sign signals | 415 (4.35%) | Dark-not lighted | 1007 (10.56%) |
12. Posted speed limit | Mean = 47.32, Std = 16.68 | Dark-lighted | 734 (7.70%) |
13. Interstate highway | Dark unknown light and others | 323 (3.39%) | |
No | 7242 (75.96%) | 22. Weather condition | |
Yes | 2292 (24.04%) | Clear | 6696 (70.23%) |
14. Location | Cloudy | 1667 (17.48%) | |
Urban | 6583(69.05%) | Rain | 860 (9.02%) |
Rural | 2951 (30.95%) | Snow | 182 (1.91%) |
Others | 129 (1.35%) |
Classes | Positive Prediction | Negative Prediction |
---|---|---|
Positive class | True Positive (TP) | False Negative (FN) |
Negative class | False Positive (FP) | True Negative (TN) |
Cluster Prototypes | EDS 9534 (100%) | CL1 2680 (28.11%) | CL2 3460 (36.29%) | CL3 3394 (35.6%) | |
---|---|---|---|---|---|
Trailing Unit | No | 47.95% | 19.25% | 25.75% | 93.25% |
Yes | 52.05% | 80.75% | 74.25% | 6.75% | |
GVWR | Over 26 k (lb) | 63.18% | 87.05% | 87.83% | 19.21% |
10 k–26 k (lb) | 36.82% | 12.95% | 12.17% | 80.79% | |
Traffic way | Two-way, not divided | 38.67 % | 1.83% | 56.62% | 49.47% |
Two-way divided with positive median barrier | 31.74% | 77.76% | 8.82% | 18.77% | |
Two-way, divided, unprotected median | 16.81% | 15.49% | 18.01% | 16.65% | |
Two-way, not divided with continuous left-turn lane | 4.39% | 0.37% | 5.49% | 6.45% | |
One-way trafficway | 2.94% | 1.38% | 3.73% | 3.36% | |
Non-trafficway or driveway access | 2.80% | 0% | 4.80% | 2.98% | |
Entrance/exit ramp | 2.64% | 3.17% | 2.54% | 2.33% | |
Posted speed limit | 25th percentile | 35 (mph) | 60 (mph) | 35 (mph) | 35 (mph) |
50th percentile | 45 (mph) | 65 (mph) | 40 (mph) | 45 (mph) | |
75th percentile | 55 (mph) | 70 (mph) | 55 (mph) | 55 (mph) | |
Interstate highway | Yes | 75.96% | 76.42% | 1.45% | 5.72% |
No | 24.04% | 23.58% | 98.55% | 94.28% | |
Injury Severity | Non-severe | 87.54% | 85.11% | 87.2% | 89.81% |
Severe | 12.46% | 14.89% | 12.8% | 10.19% |
Dataset | Validation | Accuracy | Precision | Sensitivity | Specificity | PR-AUC Score |
---|---|---|---|---|---|---|
EDS | Train | 88.73% | 70% | 16.83% | 98.97% | 49.53% |
Test | 87.63% | 51.06% | 13.48% | 98.16% | 40.12% | |
CL1 | Train | 87.69% | 78.57% | 23.66% | 98.87% | 58.40% |
Test | 87.19% | 74.29% | 21.67% | 98.68% | 45.82% | |
CL2 | Train | 89.68% | 78.3% | 26.77% | 98.91% | 61.88% |
Test | 88.34% | 62% | 23.31% | 97.90% | 45.40% | |
CL3 | Train | 91.03% | 78.43% | 16.53% | 99.48% | 52.60% |
Test | 90.09% | 56.52% | 12.50% | 98.91% | 34.23% |
Injury Outcome | Input Feature Names | EDS | CL1 | CL2 | CL3 |
---|---|---|---|---|---|
Severe injuries | Number of vehicles | √ | √ | √ | √ |
Posted speed limit | √ | √ | √ | √ | |
Manner of collision: angle | √ | √ | √ | √ | |
Manner of collision: front-to-rear | √ | √ | |||
Manner of collision: front-to-front | √ | √ | √ | ||
Hour: am | √ | √ | √ | √ | |
Pre-crash movements: stopped in roadway | √ | √ | √ | √ | |
Pre-crash movements: going straight | √ | √ | √ | ||
Most harmful event: colliding pedestrian | √ | √ | √ | ||
Most harmful event: colliding vehicle in transport | √ | √ | √ | ||
Most harmful event: rollover/overturn | √ | ||||
Weather: clear | √ | ||||
Trafficway type: two-way divided unprotected median | √ | ||||
Cargo body type: van/enclosed | √ | ||||
Cargo body type: others | √ | ||||
Cargo body type: dump | √ | ||||
Roadway alignment: curve left | √ | ||||
Lighting condition: dark not lighted | √ | √ | |||
Road surface condition: dry | √ | ||||
GVWR: over 26 k (lb) | √ | ||||
Urban/rural: rural | √ | ||||
Non-severe injuries | Manner of collision: sideswipe same direction | √ | √ | √ | √ |
Manner of collision: no collision with vehicle in transport | √ | ||||
Urban/rural: urban | √ | ||||
Day of week: weekdays | √ | ||||
Cargo body type: unknown | √ | ||||
Lighting condition: daylight | √ | √ | |||
Traffic control device: traffic control signals | √ | ||||
GVWR: 10 k–26 k (lb) | √ | ||||
Hour: pm peak | √ | ||||
Roadway grade: unknown slope | √ |
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Tahfim, S.A.-S.; Yan, C. Analysis of Severe Injuries in Crashes Involving Large Trucks Using K-Prototypes Clustering-Based GBDT Model. Safety 2021, 7, 32. https://doi.org/10.3390/safety7020032
Tahfim SA-S, Yan C. Analysis of Severe Injuries in Crashes Involving Large Trucks Using K-Prototypes Clustering-Based GBDT Model. Safety. 2021; 7(2):32. https://doi.org/10.3390/safety7020032
Chicago/Turabian StyleTahfim, Syed As-Sadeq, and Chen Yan. 2021. "Analysis of Severe Injuries in Crashes Involving Large Trucks Using K-Prototypes Clustering-Based GBDT Model" Safety 7, no. 2: 32. https://doi.org/10.3390/safety7020032
APA StyleTahfim, S. A. -S., & Yan, C. (2021). Analysis of Severe Injuries in Crashes Involving Large Trucks Using K-Prototypes Clustering-Based GBDT Model. Safety, 7(2), 32. https://doi.org/10.3390/safety7020032