Predicting reduced visibility related crashes on freeways using real-time traffic flow data |
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Affiliation: | 1. University of Central Florida, Department of Civil, Environmental and Construction Engineering, Orlando, FL 32816-2450, United States;2. King Saud University, Prince Mohamed Bin Naif Chair for Traffic Safety Research, P.O. Box 800, Riyadh 11421, Saudi Arabia;1. University of Central Florida, 4000 Central Florida Blvd, Orlando, FL 32816, USA |
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Abstract: | ObjectivesThe main objective of this paper is to investigate whether real-time traffic flow data, collected from loop detectors and radar sensors on freeways, can be used to predict crashes occurring at reduced visibility conditions. In addition, it examines the difference between significant factors associated with reduced visibility related crashes to those factors correlated with crashes occurring at clear visibility conditions.MethodRandom Forests and matched case-control logistic regression models were estimated.ResultsThe findings indicated that real-time traffic variables can be used to predict visibility related crashes on freeways. The results showed that about 69% of reduced visibility related crashes were correctly identified. The results also indicated that traffic flow variables leading to visibility related crashes are slightly different from those variables leading to clear visibility crashes.Impact on IndustryUsing time slices 5–15 minutes before crashes might provide an opportunity for the appropriate traffic management centers for a proactive intervention to reduce crash risk in real-time. |
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