AI RESEARCH

Fusing Cellular Network Data and Tollbooth Counts for Urban Traffic Flow Estimation

arXiv CS.LG

ArXi:2604.15782v1 Announce Type: new Traffic simulations, essential for planning urban transit infrastructure interventions, require vehicle-category-specific origin-destination (OD) data. Existing data sources are imperfect: sparse tollbooth sensors provide accurate vehicle counts by category, while extensive mobility data from cellular network activity captures aggregated crowd movement, but lack modal disaggregation and have systematic biases. This study develops a machine learning framework to correct and disaggregate cellular network data using sparse tollbooth counts as ground truth.