DocumentCode :
1762921
Title :
Utilizing Microscopic Traffic and Weather Data to Analyze Real-Time Crash Patterns in the Context of Active Traffic Management
Author :
Rongjie Yu ; Abdel-Aty, Mohamed A. ; Ahmed, M.M. ; Xuesong Wang
Author_Institution :
Sch. of Transp. Eng., Tongji Univ., Shanghai, China
Volume :
15
Issue :
1
fYear :
2014
fDate :
Feb. 2014
Firstpage :
205
Lastpage :
213
Abstract :
This paper investigates the effects of microscopic traffic, weather, and roadway geometric factors on the occurrence of specific crash types for a freeway. The I-70 Freeway was chosen for this paper since automatic vehicle identification (AVI) and weather detection systems are implemented along this corridor. A main objective of this paper is to expand the purpose of the existing intelligent transportation system to incorporate traffic safety improvement and suggest active traffic management (ATM) strategies by identifying the real-time crash patterns. Crashes have been categorized as rear-end, sideswipe, and single-vehicle crashes. AVI segment average speed, real-time weather data, and roadway geometric characteristic data were utilized as explanatory variables in this paper. First, binary logistic regression models were estimated to compare single- with multivehicle crashes and sideswipe with rear-end crashes. Then, a hierarchical logistic regression model that simultaneously fits two conditional logistic regression models for the three crash types has been developed. Results from the models indicate that single-vehicle crashes are more likely to occur in snowy seasons, at moderate slopes, three-lane segments, and under free-flow conditions, whereas the sideswipe crash occurrence differs from rear-end crashes with the visibility situation, segment number of lanes, grades, and their directions (up or down). Furthermore, the innovative way of estimating two conditional logistic regression models simultaneously in the Bayesian framework fits the correlated data structure well. Conclusions from this paper imply that different ATM strategies should be designed for three- and two-lane roadway sections and are also considering the seasonal effects.
Keywords :
Bayes methods; data analysis; intelligent transportation systems; regression analysis; road accidents; road safety; traffic engineering computing; ATM strategies; AVI; Bayesian framework; I-70 Freeway; active traffic management; automatic vehicle identification; binary logistic regression models; correlated data structure; explanatory variables; hierarchical logistic regression model; intelligent transportation system; microscopic traffic data; realtime crash patterns analysis; rear-end crash; roadway geometric factors; sideswipe crash; single-vehicle crash; traffic safety improvement; weather data; weather detection systems; Analytical models; Bayes methods; Computer crashes; Logistics; Meteorology; Real-time systems; Vehicle crash testing; Active traffic management (ATM); crash-type analysis; intelligent transportation system (ITS); microscopic crash analysis; random effect logistic regression; real-time data;
fLanguage :
English
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1524-9050
Type :
jour
DOI :
10.1109/TITS.2013.2276089
Filename :
6587078
Link To Document :
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