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Do road network patterns and points of interest influence bicycle safety? Evidence from dockless bike sharing in China and policy implications for traffic safety planning.

Authors :
Li, Jia
Li, Chengqian
Zhao, Xiaohua
Wang, Xuesong
Source :
Transport Policy. Apr2024, Vol. 149, p21-35. 15p.
Publication Year :
2024

Abstract

Dockless bike sharing, also known as the shared bicycle industry, is booming, especially in China. Since cyclists are more vulnerable than motor vehicle drivers in traffic crashes, it is necessary to investigate shared bicycle traffic safety. Road network patterns and the proportion of different points of interest (POIs) are two critical macro-level factors influencing bicycle crashes. Therefore, it is necessary to consider bicycle traffic safety in road networks and land use policy in road traffic planning. This study investigated risk exposure, demographic data, proportion of different POIs, land use, road network features, and bicycle crashes in 124 census tracts in Beijing's Sixth Ring Road area. The betweenness centrality was calculated for the census tracts to classify the road network patterns. A negative binomial conditional autoregressive (NB-CAR) model was developed for bicycle total crashes, and bivariate negative binomial CAR (BNB-CAR) models were developed for bicycle single-vehicle (SV) and multi-vehicle (MV) crashes, property damage only (PDO) and injury crashes. The results show the following. 1) The BNB-CAR model had a better fit than the NB-CAR model. 2) The census tracts with parallel, mixed, and loops & lollipops patterns were associated with higher bicycle crash frequency than those with a grid pattern. The difference in the bicycle SV crash frequency between the mixed and loop & lollipop patterns was larger than that in the bicycle MV crash frequency. 3) Census tracts with higher proportions of POIs for subway and bus stations (T-POI) were associated with fewer bicycle crashes. 4) Census tracts with higher arterial proportions were associated with more injury crashes. This study provides a theoretical basis for formulating road network and land-use policies to ensure road traffic safety. • The relationship of road network patterns and points of interest to shared bicycle crashes were analyzed. • Betweenness centrality was utilized to classify road network patterns of census tracts. • A bivariate negative binomial CAR model was developed for shared bicycle single-vehicle, multi-vehicle, property damage only, and injury crashes. • Road network of grid pattern was the safest for shared bicycles compared with those of parallel, mixed, and loops & lollipops patterns. • Census tracts with higher proportions of POIs for subway and bus stations were associated with fewer bicycle crashes. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
0967070X
Volume :
149
Database :
Academic Search Index
Journal :
Transport Policy
Publication Type :
Academic Journal
Accession number :
176034272
Full Text :
https://doi.org/10.1016/j.tranpol.2024.01.021