Title :
Towards a pro-active model for identifying motorway traffic risks using individual vehicle data from double loop detectors
Author :
Pham, M.-H. ; Bhaskar, Ashish ; Chung, Edward ; Dumont, A.-G.
Author_Institution :
EPFL-ENAC-LAVOC,Switzerland Station 18, 1015 Lausanne, Switzerland
Abstract :
This paper presents a methodology to develop motorway traffic risk identification models using individual vehicle traffic data, meteorological data and crash database for a study site at a two-lane-per-direction section on motorway A1 in Switzerland. We define traffic situations (TSs) representing traffic status for three-minute interval and traffic regimes obtained by clustering TSs. The models are traffic regimes - based and are developed using Regression Trees to identify rear-end collision risks. Interpreting results shows that speed variance on the right lane and speed difference between two lanes are the two main causes of rear-end crashes. We also compare the results obtained from three-minute TSs with the results obtained from five-minute TSs using the same methodology.
Keywords :
Risk-sensitive active traffic management; rear-end crash; traffic regime; traffic situation;
Conference_Titel :
Road Transport Information and Control Conference and the ITS United Kingdom Members' Conference (RTIC 2010) - Better transport through technology, IET
Conference_Location :
London, UK
DOI :
10.1049/cp.2010.0393