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From sky to road: Incorporating the satellite imagery into analysis of freight truck-related crash factors.
Yu, Chengcheng; Hua, Wei; Yang, Chao; Fang, Shen; Li, Yuanhe; Yuan, Quan.
Afiliação
  • Yu C; Urban Mobility Institute, Tongji University, 200092 Shanghai, China; Intelligent Transportation Research Center, Zhejiang Lab, 311121 Hangzhou, China; The Key Laboratory of Road and Traffic Engineering Ministry of Education at Tongji University, Tongji University, 201804 Shanghai, China. Electronic
  • Hua W; Intelligent Transportation Research Center, Zhejiang Lab, 311121 Hangzhou, China. Electronic address: huawei@zhejianglab.com.
  • Yang C; Urban Mobility Institute, Tongji University, 200092 Shanghai, China; The Key Laboratory of Road and Traffic Engineering Ministry of Education at Tongji University, Tongji University, 201804 Shanghai, China. Electronic address: tongjiyc@tongji.edu.cn.
  • Fang S; Intelligent Transportation Research Center, Zhejiang Lab, 311121 Hangzhou, China. Electronic address: fangshen@zhejianglab.com.
  • Li Y; The Key Laboratory of Road and Traffic Engineering Ministry of Education at Tongji University, Tongji University, 201804 Shanghai, China. Electronic address: 2131349@tongji.edu.cn.
  • Yuan Q; Urban Mobility Institute, Tongji University, 200092 Shanghai, China; The Key Laboratory of Road and Traffic Engineering Ministry of Education at Tongji University, Tongji University, 201804 Shanghai, China. Electronic address: quanyuan@tongji.edu.cn.
Accid Anal Prev ; 200: 107491, 2024 Jun.
Article em En | MEDLINE | ID: mdl-38489941
ABSTRACT
Freight truck-related crashes in urban contexts have caused significant economic losses and casualties, making it increasingly essential to understand the spatial patterns of such crashes. Limitations regarding data availability have greatly undermined the generalizability and applicability of certain prior research findings. This study explores the potential of emerging geospatial data to delve deeply into the determinants of these incidents with a more generalizable research design. By synergizing high-resolution satellite imagery with refined GIS map data and geospatial tabular data, a rich tapestry of the road environment and freight truck operations emerges. To navigate the challenges of zero-inflated issues of the crash datasets, the Tweedie Gradient Boosting model is adopted. Results reveal a pronounced spatial heterogeneity between highway and urban non-highway road networks in crash determinants. Factors such as freight truck activity, intricate road network patterns, and vehicular densities rise to prominence, albeit with varying degrees of influence across highways and urban non-highway terrains. Results emphasize the need for context-specific interventions for policymakers, encompassing optimized urban planning, infrastructural overhauls, and refined traffic management protocols. This endeavor may not only elevate the academic discourse around freight truck-related crashes but also champion a data-driven approach towards safer road ecosystems for all.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Acidentes de Trânsito / Ecossistema Limite: Humans Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Acidentes de Trânsito / Ecossistema Limite: Humans Idioma: En Ano de publicação: 2024 Tipo de documento: Article