Traffic Accident Prediction Based on Multivariable Grey Model
Abstract
:1. Introduction
2. Related Work
3. Methodology
3.1. Correlation Analysis for Accident Impact Factors
3.2. Multivariable Grey Model MGM(1,N) for Accident Prediction
3.3. Variables Selection for Model Optimization
Algorithm 1. Variables Selection for Model Optimization. |
Input: W: The sequence of grey correlation degree of impact factors. Output: S: The set of selected impact factors which optimize the performance of the prediction model. Preliminary: W is represented by , which wi is the grey correlation degree of the ith impact factor. 1. begin 2. Rank the sequence W in descending order; 3. Set a threshold ; 4. for each wi in W do 5. Find the max number k, which meets ; 6. end for 7. Construct the sequence W’ = ; 8. for each wj in W’ do 9. Measure MGM(1, j) model by metric MAPE; 10. Update the MAPE minimum of MGM(1,N) model; 11. end for 12. return s = ; 13. Retrieve the corresponding impact factor from the sequence and return S. 14.end |
3.4. Model Evaluation
4. Experiment
4.1. Dataset
4.2. Results of Grey Correlation Analysis
4.3. Results of Model Selection
4.4. Results of Traffic Accident Prediction
4.5. Results of Trend Prediction
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Year | Private Car (Million) | Taxi | Road Operating Car (Million) | Population (Million) | Traffic Accidents |
---|---|---|---|---|---|
2004 | 14.8166 | 903,734 | 10.6718 | 1299.88 | 517,889 |
2005 | 18.4807 | 936,973 | 7.3322 | 1307.56 | 450,254 |
2006 | 23.3332 | 928,647 | 8.0258 | 1314.48 | 378,781 |
2007 | 28.7622 | 959,668 | 8.4922 | 1321.29 | 327,209 |
2008 | 35.0139 | 968,811 | 9.3061 | 1328.02 | 265,204 |
2009 | 45.7491 | 971,579 | 10.8735 | 1334.50 | 238,351 |
2010 | 59.3871 | 986,000 | 11.3332 | 1340.91 | 219,521 |
2011 | 73.2679 | 1,002,306 | 12.6375 | 1347.35 | 210,812 |
2012 | 88.3860 | 1,026,678 | 13.3989 | 1354.04 | 204,196 |
2013 | 105.0168 | 1,053,580 | 15.0473 | 1360.72 | 198,394 |
2014 | 123.3936 | 1,074,386 | 15.3793 | 1367.82 | 196,812 |
2015 | 140.9910 | 1,092,083 | 14.7312 | 1374.62 | 187,781 |
2016 | 163.3020 | 1,102,563 | 14.3577 | 1382.71 | 212,846 |
Impact Factor | Degree of Correlation |
---|---|
Private car | 0.6216 |
Taxi | 0.8623 |
Road operating car Population | 0.8837 0.8739 |
Model Independent Variables | MGM(1,2) Road Operating Car | MGM(1,3) Road Operating Car and Population | MGM(1,4) Road Operating Car, Population and Taxi |
---|---|---|---|
MAPE | 1.48% | 1.52% | 3.79% |
Year | Ground Truth | GM(1,1) Model | MGM(1,5) Model | Linear Regression | BP Neural Network | Our Model |
---|---|---|---|---|---|---|
Fitted Value | Fitted Value | Fitted Value | Fitted Value | Fitted Value | ||
2013 | 198,394 | 152,680 | 192,351 | 204,321 | 203,372 | 199,773 |
2014 | 196,812 | 134,123 | 186,158 | 204,317 | 203,188 | 202,247 |
2015 | 187,781 | 117,822 | 180,781 | 206,867 | 202,976 | 208,406 |
2016 | 212,846 | 103,502 | 175,094 | 208,365 | 202,952 | 217,798 |
MAPE | 35.88 | 7.48 | 4.77 | 4.62 | 4.19 | |
MAE | 71,925.50 | 15,362.25 | 9294.67 | 9110.77 | 8097.75 | |
RMSE | 75,614.24 | 20,150.92 | 10,906.59 | 9927.52 | 10,969.89 |
Region | Chong Qing City | Zhe Jiang Province | ||||
---|---|---|---|---|---|---|
MAPE (%) | MAE | RMSE | MAPE (%) | MAE | RMSE | |
GM (1,1) | 23.55 | 1191.58 | 1196.59 | 26.30 | 4310.30 | 4343.10 |
MGM (1,5) | 87.00 | 4223.76 | 5166.16 | 37.06 | 5867.46 | 6739.37 |
LR | 11.62 | 566.93 | 659.01 | 8.79 | 1383.98 | 1634.24 |
BPNN | 16.26 | 798.28 | 894.36 | 20.08 | 3139.53 | 3882.37 |
Our Model | 5.76 | 286.19 | 322.09 | 8.20 | 1279.53 | 1595.61 |
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Li, W.; Zhao, X.; Liu, S. Traffic Accident Prediction Based on Multivariable Grey Model. Information 2020, 11, 184. https://doi.org/10.3390/info11040184
Li W, Zhao X, Liu S. Traffic Accident Prediction Based on Multivariable Grey Model. Information. 2020; 11(4):184. https://doi.org/10.3390/info11040184
Chicago/Turabian StyleLi, Wei, Xujian Zhao, and Shiyu Liu. 2020. "Traffic Accident Prediction Based on Multivariable Grey Model" Information 11, no. 4: 184. https://doi.org/10.3390/info11040184
APA StyleLi, W., Zhao, X., & Liu, S. (2020). Traffic Accident Prediction Based on Multivariable Grey Model. Information, 11(4), 184. https://doi.org/10.3390/info11040184