Development of a Binary Classification Model to Assess Safety in Transportation Systems Using GMDH-Type Neural Network Algorithm
Abstract
:1. Introduction
2. Methods
2.1. Group Method of Data Handling (GMDH) Type of Neural Network
2.2. Correlation Analysis
2.3. Binary Modeling
3. Case Study
3.1. Data Collection and Preparation
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- Road accidents: those that occur in a road open to public traffic, as a result of which, one or more people were injured or killed and in which at least one vehicle was involved;
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- Dead: people who died instantly (within 24 h) or those who died from the second to the thirtieth day, starting with that of the accident included;
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- Injured: people who suffered injuries as a result of the accident. Given the difficulty of defining objective criteria on the level of severity of the injuries suffered, there is no distinction between serious or light injuries.
3.2. Correlation Analysis
3.3. Binary Modeling
4. Results and Discussion
- -
- The correlation analysis showed that input data including Daylight, Weekday, Type of accident, Location, Speed limit and Average speed were correctly considered for the binary classification;
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- Figure 6, Figure 7, Figure 8 and Figure 9 depict that the GMDH algorithm has a high capability to train and develop the model, which can correctly predict 661 data of the first and second classes from 775 data (total). Additionally, on the basis of the acquired results of confusion matrices, the results were assessed by the other three performance indexes and they indicated that the proposed model can provide higher performance capacity in evaluation of safety in transportation system;
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- Consequently, it can be concluded that the proposed binary classification model based on the GMDH algorithm was a reliable and alternative model instead of the classical model with a high appropriate acceptable degree to predict the number of vehicles involved in an accident, which may lead transportation engineers toward a greater accuracy and robustness of design and planning of roads by eventually investigating opportune countermeasures to reduce the safety risk;
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- It is worth mentioning that the binary classification model presented in this study is a model developed for the road network of the Cosenza area, which requires a more in-depth analysis to be transferred to other contexts;
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- In spite of the fact that the developed model was a reliable system model for evaluation of safety in transportation systems of this case study, it does not have capability for investigation of safety in transportation systems with incomplete data.
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Data Field Type | Data Field | Description |
---|---|---|
Human characteristic | Driver gender | Male or female |
Vehicle characteristic | Vehicle type | Car, motorcycle, truck and other |
Road environment | Road type | National rural road, provincial rural road, national and provincial rural road in urban context, urban road |
Geometric element | Straight, curve, crossroad, signalized intersection, traffic light | |
Other environment | Date | Date of the accident |
Light conditions | Daylight and nighttime | |
Day of the week | Weekday and weekend | |
Location environment | Macro area location | Urban and rural |
Accident characteristic | Number of vehicles | Number of vehicles involved |
Accident nature | Way out, collision with an accidental obstacle, side collision, front-side collision, rear-end collision, head-on collision, pedestrian collision, impact with parked vehicle, impact with stopped vehicle, fall from vehicle, sudden braking | |
Accident severity | Injuries and deaths |
Daylight | Type of Accident | Weekday | Location | Speed Limit | Average Speed | |
---|---|---|---|---|---|---|
Daylight | 1 | |||||
Type of accident | −0.03 | 1 | ||||
Weekday | −0.12 | −0.01 | 1 | |||
Location | 0.05 | −0.16 | 0.01 | 1 | ||
Speed Limit | 0.01 | −0.21 | 0.01 | 0.29 | 1 | |
Average Speed | 0.01 | −0.15 | 0.03 | 0.16 | 0.85 | 1 |
Model No. | SP | MNL | MNNL | Accuracy of Training (%) | Accuracy of Testing (%) |
---|---|---|---|---|---|
1 | 0.6 | 5 | 5 | 81.2 | 76.2 |
2 | 0.6 | 5 | 10 | 80.6 | 76.8 |
3 | 0.6 | 5 | 20 | 81.9 | 78.9 |
4 | 0.6 | 5 | 30 | 81.1 | 77.8 |
5 | 0.6 | 10 | 5 | 81.6 | 76.8 |
6 | 0.6 | 10 | 10 | 81.4 | 77.5 |
7 | 0.6 | 10 | 20 | 82.6 | 80.9 |
8 | 0.6 | 10 | 30 | 82.8 | 77.8 |
9 | 0.6 | 15 | 5 | 81.4 | 81.2 |
10 | 0.6 | 15 | 10 | 82.8 | 82 |
11 | 0.6 | 15 | 20 | 82.6 | 78.5 |
12 | 0.6 | 15 | 30 | 81.6 | 80.9 |
13 | 0.6 | 20 | 5 | 80.4 | 80.2 |
14 | 0.6 | 20 | 10 | 82.5 | 81.9 |
15 | 0.6 | 20 | 20 | 81.1 | 79.9 |
16 | 0.6 | 20 | 30 | 85.7 | 83.5 |
17 | 0.6 | 30 | 5 | 81.6 | 80.9 |
18 | 0.6 | 30 | 10 | 79.4 | 78.8 |
19 | 0.6 | 30 | 20 | 81.1 | 75.3 |
20 | 0.6 | 30 | 30 | 83.5 | 80.9 |
Model No. | SP | MNL | MNNL | Ranking for Accuracy of Training | Ranking for Accuracy of Testing | Total Rank |
---|---|---|---|---|---|---|
1 | 0.6 | 5 | 5 | 12 | 10 | 22 |
2 | 0.6 | 5 | 10 | 10 | 11 | 21 |
3 | 0.6 | 5 | 20 | 15 | 16 | 31 |
4 | 0.6 | 5 | 30 | 11 | 13 | 24 |
5 | 0.6 | 10 | 5 | 14 | 11 | 25 |
6 | 0.6 | 10 | 10 | 13 | 12 | 25 |
7 | 0.6 | 10 | 20 | 17 | 18 | 35 |
8 | 0.6 | 10 | 30 | 18 | 13 | 31 |
9 | 0.6 | 15 | 5 | 13 | 12 | 25 |
10 | 0.6 | 15 | 10 | 18 | 13 | 31 |
11 | 0.6 | 15 | 20 | 17 | 14 | 31 |
12 | 0.6 | 15 | 30 | 14 | 18 | 32 |
13 | 0.6 | 20 | 5 | 9 | 17 | 26 |
14 | 0.6 | 20 | 10 | 16 | 19 | 35 |
15 | 0.6 | 20 | 20 | 11 | 16 | 27 |
16 | 0.6 | 20 | 30 | 20 | 20 | 40 |
17 | 0.6 | 30 | 5 | 14 | 18 | 32 |
18 | 0.6 | 30 | 10 | 8 | 15 | 23 |
19 | 0.6 | 30 | 20 | 11 | 9 | 20 |
20 | 0.6 | 30 | 30 | 19 | 18 | 37 |
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Guido, G.; Haghshenas, S.S.; Haghshenas, S.S.; Vitale, A.; Gallelli, V.; Astarita, V. Development of a Binary Classification Model to Assess Safety in Transportation Systems Using GMDH-Type Neural Network Algorithm. Sustainability 2020, 12, 6735. https://doi.org/10.3390/su12176735
Guido G, Haghshenas SS, Haghshenas SS, Vitale A, Gallelli V, Astarita V. Development of a Binary Classification Model to Assess Safety in Transportation Systems Using GMDH-Type Neural Network Algorithm. Sustainability. 2020; 12(17):6735. https://doi.org/10.3390/su12176735
Chicago/Turabian StyleGuido, Giuseppe, Sina Shaffiee Haghshenas, Sami Shaffiee Haghshenas, Alessandro Vitale, Vincenzo Gallelli, and Vittorio Astarita. 2020. "Development of a Binary Classification Model to Assess Safety in Transportation Systems Using GMDH-Type Neural Network Algorithm" Sustainability 12, no. 17: 6735. https://doi.org/10.3390/su12176735
APA StyleGuido, G., Haghshenas, S. S., Haghshenas, S. S., Vitale, A., Gallelli, V., & Astarita, V. (2020). Development of a Binary Classification Model to Assess Safety in Transportation Systems Using GMDH-Type Neural Network Algorithm. Sustainability, 12(17), 6735. https://doi.org/10.3390/su12176735