Traffic conflict identification of e-bikes at signalized intersections

The increase of e-bikes has raised traffic conflict concerns over past decade. Numerous conflict indicators are applied to measure traffic conflicts by detecting differences in temporal or spatial proximity between users. However, for traffic environment with plenty of e-bikes, these separate space-...

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Main Authors: Zhaowei Qu, Yuhong Gao, Xianmin Song, Yingji Xia, Lin Ma, Ronghan Yao
Format: Article
Language:English
Published: Vilnius Gediminas Technical University 2021-06-01
Series:Transport
Subjects:
Online Access:https://journals.vgtu.lt/index.php/Transport/article/view/13297
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spelling doaj-5af5034c83c342be83b7c31558922f6c2021-06-23T06:52:12ZengVilnius Gediminas Technical UniversityTransport1648-41421648-34802021-06-0136218519810.3846/transport.2020.1329713297Traffic conflict identification of e-bikes at signalized intersectionsZhaowei Qu0Yuhong Gao1Xianmin Song2Yingji Xia3Lin Ma4Ronghan Yao5School of Transportation, Jilin University, Changchun, ChinaSchool of Transportation, Jilin University, Changchun, ChinaSchool of Transportation, Jilin University, Changchun, ChinaSchool of Transportation, Jilin University, Changchun, ChinaSchool of Transportation, Jilin University, Changchun, ChinaSchool of Transportation and Logistics, Dalian University of Technology, Dalian, ChinaThe increase of e-bikes has raised traffic conflict concerns over past decade. Numerous conflict indicators are applied to measure traffic conflicts by detecting differences in temporal or spatial proximity between users. However, for traffic environment with plenty of e-bikes, these separate space-time approaching indicators may not be applicable. Thus, this study aims to propose a multi-variable conflict indicator and build a conflict identification method for e-bikes moving in the same direction. In particular, by analysing the conflict characteristics from e-bikes trajectories, a multi-variable conflict indicator utilizing change of forecast post encroachment time, change of relative speed and change of distance is derived. Mathematical statistics and cluster discriminant analyses are applied to identify types of conflict, including conflict existence identification and conflict severity identification. The experimental results show: in mixed traffic environments with many e-bikes, compared with time-to-collision and deceleration, accuracy of identifying e-bike conflict types based on proposed method is the highest and can reach more than 90%; that is, multi-variable indicator based on time and space are more suitable for identifying e-bike conflicts than separate space-time approaching indicators. Furthermore, setting of dividing strip between motor vehicle and non-motorized vehicle has significant influence on number and change trend of conflict types. The proposed method can not only provide a theoretical basis and technical support for automated conflict detection in mixed transportation, but also give the safety optimization sequence of e-bikes at different types of intersections. First published online 22 October 2020https://journals.vgtu.lt/index.php/Transport/article/view/13297traffic safetyconflict identificationcluster discriminant analysise-bikestrajectory extractionsignalized intersection
collection DOAJ
language English
format Article
sources DOAJ
author Zhaowei Qu
Yuhong Gao
Xianmin Song
Yingji Xia
Lin Ma
Ronghan Yao
spellingShingle Zhaowei Qu
Yuhong Gao
Xianmin Song
Yingji Xia
Lin Ma
Ronghan Yao
Traffic conflict identification of e-bikes at signalized intersections
Transport
traffic safety
conflict identification
cluster discriminant analysis
e-bikes
trajectory extraction
signalized intersection
author_facet Zhaowei Qu
Yuhong Gao
Xianmin Song
Yingji Xia
Lin Ma
Ronghan Yao
author_sort Zhaowei Qu
title Traffic conflict identification of e-bikes at signalized intersections
title_short Traffic conflict identification of e-bikes at signalized intersections
title_full Traffic conflict identification of e-bikes at signalized intersections
title_fullStr Traffic conflict identification of e-bikes at signalized intersections
title_full_unstemmed Traffic conflict identification of e-bikes at signalized intersections
title_sort traffic conflict identification of e-bikes at signalized intersections
publisher Vilnius Gediminas Technical University
series Transport
issn 1648-4142
1648-3480
publishDate 2021-06-01
description The increase of e-bikes has raised traffic conflict concerns over past decade. Numerous conflict indicators are applied to measure traffic conflicts by detecting differences in temporal or spatial proximity between users. However, for traffic environment with plenty of e-bikes, these separate space-time approaching indicators may not be applicable. Thus, this study aims to propose a multi-variable conflict indicator and build a conflict identification method for e-bikes moving in the same direction. In particular, by analysing the conflict characteristics from e-bikes trajectories, a multi-variable conflict indicator utilizing change of forecast post encroachment time, change of relative speed and change of distance is derived. Mathematical statistics and cluster discriminant analyses are applied to identify types of conflict, including conflict existence identification and conflict severity identification. The experimental results show: in mixed traffic environments with many e-bikes, compared with time-to-collision and deceleration, accuracy of identifying e-bike conflict types based on proposed method is the highest and can reach more than 90%; that is, multi-variable indicator based on time and space are more suitable for identifying e-bike conflicts than separate space-time approaching indicators. Furthermore, setting of dividing strip between motor vehicle and non-motorized vehicle has significant influence on number and change trend of conflict types. The proposed method can not only provide a theoretical basis and technical support for automated conflict detection in mixed transportation, but also give the safety optimization sequence of e-bikes at different types of intersections. First published online 22 October 2020
topic traffic safety
conflict identification
cluster discriminant analysis
e-bikes
trajectory extraction
signalized intersection
url https://journals.vgtu.lt/index.php/Transport/article/view/13297
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