Crash Frequency Analysis Using Hurdle Models with Random Effects Considering Short-Term Panel Data
Abstract
:1. Introduction
2. Materials and Methods
3. Results and Discussion
3.1. Traffic Characteristics
3.2. Weather/Surface Characteristics
3.3. Road Characteristics
4. Conclusions
- 1.
- In addition to site-varying factors (e.g., inside shoulder width indicator and the indexed value of the international roughness index), time-varying factors (e.g., daily traffic volume and road surface conditions) also have a significant influence on the crash frequency on interstate highway I-70. It is worth noting that many different types of road surface conditions can considerably influence the crash frequency.
- 2.
- The results of several different statistical tests show that over-dispersion exists in the short-term data. In addition, the preference of the REHNB models indicated that the over-dispersion arises because of both unobserved heterogeneity and excess zeroes. Vuong’s test is conducted for two pairs of candidate models: REHNB versus REP and REHNB versus RENB. The test results also confirm the above finding and the REHNB model is found to be the most suitable model for I-70 according to Vuong’s test and AIC. These findings highlight the importance of handling both unobserved heterogeneity and excess zero issues in short-term data, as well as the appropriateness of the random effect hurdle negative binomial model for this type of data.
- 3.
- This paper explores developing new short-term crash frequency models (e.g., daily) using real-time traffic flow, weather and road surface condition data. Such a study has some potential for further traffic safety improvements. The models and the findings in this paper may open a door toward consequence-based highway design, active traffic management strategies, and intelligence-based law enforcement interventions in the future.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Variable | Mean | Standard Deviation | Minimum | Maximum |
---|---|---|---|---|
Daily crash frequency | 0.0266 | 0.1908 | 0.0000 | 10.0000 |
Daily average speed gap (measured as the difference between the speed limit and daily average traffic speed, in miles per hour) | 59.3222 | 5.2399 | 30.7746 | 65.0000 |
Daily traffic volume (in 1000 vehicles per day) | 15.4120 | 6.7411 | 0.7200 | 57.9568 |
Roadway segment length (in miles) | 1.0725 | 0.7123 | 0.3680 | 3.6840 |
Inside shoulder width indicator (one if inside shoulder width is larger than five feet, zero otherwise) | 0.1551 | 0.3620 | 0.0000 | 1.0000 |
Long remaining service life of rut indicator (one if the value of RUTI is higher than 99, zero otherwise) | 0.2043 | 0.4032 | 0.0000 | 1.0000 |
The indexed value of the international roughness index (lower values equal rougher roads) | 93.9606 | 5.2653 | 80.0000 | 100.0000 |
Daily minimum visibility (in miles) | 0.8243 | 0.3679 | 0.0000 | 1.1000 |
Ratio of snowing status in the day | 0.0994 | 0.2183 | 0.0000 | 1.0000 |
Ratio of wet road surface in the day | 0.0946 | 0.1916 | 0.0000 | 1.0000 |
Ratio of chemical wet road surface in the day | 0.0589 | 0.1772 | 0.0000 | 1.0000 |
Ratio of icy warning road surface in the day | 0.1055 | 0.2443 | 0.0000 | 1.0000 |
Variable | Estimate Coefficients | t-Statistic | p Value |
---|---|---|---|
Count state as negative binomial model | |||
Constant | −9.681 | −20.08 | <0.0001 |
Roadway Characteristics | |||
Segment length (in miles) | 0.533 | 2.63 | 0.0099 |
Inside shoulder width indicator (1 if inside shoulder width is larger than 5 feet, 0 otherwise) | 1.099 | 2.50 | 0.0139 |
Long remaining service life of rut indicator (1 if the value of RUTI is higher than 99, 0 otherwise) | 1.599 | 3.79 | 0.0003 |
Weather/surface Characteristics | |||
Ratio of snowing status in the day | 1.253 | 2.98 | 0.0037 |
Zero state as logistic model | |||
Roadway Characteristics | |||
Segment length (in miles) | −0.625 | −4.98 | <0.0001 |
The indexed value of the international roughness index (lower values equal rougher roads) | 0.063 | 23.71 | <0.0001 |
Weather/surface Characteristics | |||
Ratio of wet road surface in the day | −0.951 | −4.95 | <0.0001 |
Ratio of chemical wet road surface in the day | −0.973 | −5.32 | <0.0001 |
Ratio of icy warning road surface in the day | −0.726 | −4.46 | <0.0001 |
Daily minimum visibility | 0.231 | 1.81 | 0.0731 |
Traffic Characteristics | |||
Daily average speed gap (measured as the difference between the speed limit and daily average traffic speed, in miles per hour) | −0.103 | −12.11 | <0.0001 |
Daily traffic volume (in 1000 vehicles per day) | −0. 030 | −4.58 | <0.0001 |
σi | 0.554 | 2.23 | 0.0281 |
0.763 | 8.89 | <0.0001 | |
α | 662.87 | 912556 | <0.0001 |
Summary Statistics | |||
Number of observations | 29462 | ||
Log-likelihood at convergence | −3144.443 | ||
AIC | 6320.9 |
© 2016 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC-BY) license (http://creativecommons.org/licenses/by/4.0/).
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Chen, F.; Ma, X.; Chen, S.; Yang, L. Crash Frequency Analysis Using Hurdle Models with Random Effects Considering Short-Term Panel Data. Int. J. Environ. Res. Public Health 2016, 13, 1043. https://doi.org/10.3390/ijerph13111043
Chen F, Ma X, Chen S, Yang L. Crash Frequency Analysis Using Hurdle Models with Random Effects Considering Short-Term Panel Data. International Journal of Environmental Research and Public Health. 2016; 13(11):1043. https://doi.org/10.3390/ijerph13111043
Chicago/Turabian StyleChen, Feng, Xiaoxiang Ma, Suren Chen, and Lin Yang. 2016. "Crash Frequency Analysis Using Hurdle Models with Random Effects Considering Short-Term Panel Data" International Journal of Environmental Research and Public Health 13, no. 11: 1043. https://doi.org/10.3390/ijerph13111043
APA StyleChen, F., Ma, X., Chen, S., & Yang, L. (2016). Crash Frequency Analysis Using Hurdle Models with Random Effects Considering Short-Term Panel Data. International Journal of Environmental Research and Public Health, 13(11), 1043. https://doi.org/10.3390/ijerph13111043