Please use this identifier to cite or link to this item: https://doi.org/10.1155/2020/3594963
Title: Analysis of Crossing Behavior and Violations of Electric Bikers at Signalized Intersections
Authors: Tang, T.
Wang, H. 
Ma, J.
Zhou, X.
Issue Date: 20-Jan-2020
Publisher: Hindawi Limited
Citation: Tang, T., Wang, H., Ma, J., Zhou, X. (2020-01-20). Analysis of Crossing Behavior and Violations of Electric Bikers at Signalized Intersections. Journal of Advanced Transportation 2020 : 3594963. ScholarBank@NUS Repository. https://doi.org/10.1155/2020/3594963
Rights: Attribution 4.0 International
Abstract: This paper focuses on investigating electric bikers' (e-bikers) crossing behavior and violations based on survey data of 3, 126 e-bikers collected at signalized intersections in Nantong, China. We first explore e-bikers' characteristics of late crossing, incomplete crossing, and violating crossing behaviors by frequency analysis and duration distribution, and examine a few influential factors for e-bikers' red-light running (RLR) behavior, including site type, crossing length and traffic signal countdown timers (TSCTs). E-bikers' RLR behavior is further divided into three categories, namely GR near-violations, RR violations, and RG violations. Second, we use a binary logistic regression model to identify the relationship between e-bikers' RLR behavior and potential influential factors, including demographic attributes, movement information, and infrastructure conditions. We not only make regression analysis for respective violation type, but also carry out an integrated regression of a census of all three types of violations. Some insightful findings are revealed: (i) the green signal time and site type are the most significant factors to GR near-violations, but with little impact on the other two violation types; (ii) the waiting time, waiting position, passing cars and crossing length exert considerable impact on RR violations; (iii) for RG violations, TSCTs, leading violators and gender are the most significant factors; (iv) it is also unveiled that site type, green signal time and TSCTs have negligible impact on the whole violations regardless of the violation types. Thus, it is more meaningful to investigate the impacts of these variables on e-bikers' RLR behavior according to different violation types; otherwise, the potential relationship between some crucial factors and e-bikers' RLR behavior might be ignored. These findings would help to improve intersection crossing safety for traffic management. © 2020 Tianpei Tang et al.
Source Title: Journal of Advanced Transportation
URI: https://scholarbank.nus.edu.sg/handle/10635/198631
ISSN: 01976729
DOI: 10.1155/2020/3594963
Rights: Attribution 4.0 International
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