A Global Commuting Origin-Destination Flow Dataset for Urban Sustainable Development
By: Can Rong , Jingtao Ding , Meng Li and more
Potential Business Impact:
Maps how people travel to work.
Commuting Origin-Destination (OD) flows capture movements of people from residences to workplaces, representing the predominant form of intra-city mobility and serving as a critical reference for understanding urban dynamics and supporting sustainable policies. However, acquiring such data requires costly, time-consuming censuses. In this study, we introduce a commuting OD flow dataset for cities around the world, spanning 6 continents, 179 countries, and 1,625 cities, providing unprecedented coverage of dynamics under diverse urban environments. Specifically, we collected fine-grained demographic data, satellite imagery, and points of interest~(POIs) for each city as foundational inputs to characterize the functional roles of urban regions. Leveraging these, a deep generative model is employed to capture the complex relationships between urban geospatial features and human mobility, enabling the generation of commuting OD flows between urban regions. Comprehensively, validation shows that the spatial distributions of the generated flows closely align with real-world observations. We believe this dataset offers a valuable resource for advancing sustainable urban development research in urban science, data science, transportation engineering, and related fields.
Similar Papers
MoveOD: Synthesizing Origin-Destination Commute Distribution from U.S. Census Data
Computers and Society
Maps where everyone goes to work.
Urn Modeling of Random Graphs Across Granularity Scales: A Framework for Origin-Destination Human Mobility Networks
Physics and Society
Predicts how people move in cities.
WorldMove, a global open data for human mobility
Social and Information Networks
Creates fake travel maps for cities worldwide.