Abstract
Traffic congestion often occurs at recurrent bottleneck areas on freeways, which would result in propagation and dissipation of kinematic waves and is more likely to cause rear-end traffic collisions afterwards. Thus, exploring surrogate safety measures for traffic collisions in the vicinity of recurrent bottlenecks would be beneficial for developing dynamic traffic control methods for preventing collisions. The primary objective of this study is to investigate the relationships between real-time traffic flow rate parameters and the traffic collisions risk at recurrent bottleneck areas on freeways. A three-year crash data and relevant real-time traffic flow rate information which was obtained from loop detectors implemented on a 10-km corridor of I-880 freeways in California were used to fit these relationships by using a Logistic regression modeling technique. After testing a series of real-time traffic flow rate parameters that aggregated into 5-min prior to the occurrence of each collision and comparing the different combinations of candidate traffic flow rate parameters, the combination of the average of upstream flow rate and the sum of standard deviation of upstream and downstream speed were selected as the optimal model. This model can be used as a surrogate safety measure for evaluating the real-time collision risk of rear-ends crashes at recurrent bottleneck areas on freeways.
Published Version
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