Abstract:No AccessOther Economic and Sector Work Reports30 Nov 2021Detecting Urban Clues for Road SafetyLeveraging Big Data and Machine LearningAuthors/Editors: Sarah Elizabeth Antos, Luis Miguel Triveno Chan ...No AccessOther Economic and Sector Work Reports30 Nov 2021Detecting Urban Clues for Road SafetyLeveraging Big Data and Machine LearningAuthors/Editors: Sarah Elizabeth Antos, Luis Miguel Triveno Chan Jan, Francis Ghesquiere, Radoslaw Czapski, Bushra Syed Shafat Ali, Sebastian Anapolsky, Jessica Gosling-Goldsmith, and Charles WangSarah Elizabeth Antos, Luis Miguel Triveno Chan Jan, Francis Ghesquiere, Radoslaw Czapski, Bushra Syed Shafat Ali, Sebastian Anapolsky, Jessica Gosling-Goldsmith, and Charles Wanghttps://doi.org/10.1596/37029SectionsAboutPDF (4.9 MB) ToolsAdd to favoritesDownload CitationsTrack Citations ShareFacebookTwitterLinked In Abstract: Transportation services and infrastructure connect people, businesses, and places. They allow citizens to access opportunities, such as jobs, education, health services, recreation, and enable the movement and distribution of goods. As a result, transport services and infrastructure are key to the economic development of cities and regions. The purpose of this guidance note is to provide concrete guidance on how big data and machine learning (ML) can be leveraged in road safety analysis. The document presents opportunities to use these new technologies to improve current methods for data collection and analysis for various road safety assessments. This guidance note provides a practical guide for using new data sources and analytical methods for road safety analysis in different types of projects that may impact road infrastructure or risk-related factors. This document consists of three parts. Part 1 provides an overview of existing approaches and tools for road safety assessment and identifies opportunities to improve these using new technologies such as big data and ML. Part 2 provides an overview of these new technologies and concrete guidance on how they can be integrated into transport projects for road safety analysis. Part 3 presents case studies on two regions of interest – Bogotá, Colombia and Padang, Indonesia to demonstrate how ML can be implemented to evaluate road safety. The document concludes with recommendations for using big data and ML in road safety assessments in the future. Previous bookNext book FiguresreferencesRecommendeddetails View Published: November 2021 Copyright & Permissions PDF DownloadLoading ...Read More