Predicting Public Transportation Load to Estimate the Probability of Social Distancing Violations

Abstract

Public transit agencies struggle to maintain transit accessibility with reduced resources, unreliable ridership data, reduced vehicle capacities due to social distancing, and reduced services due to driver unavailability. In collaboration with transit agencies from two large metropolitan areas in the USA, we are designing novel approaches for addressing the afore-mentioned challenges by collecting accurate real-time ridership data, providing guidance to commuters, and performing operational optimization for public transit.

Year of Publication
2021
Conference Name
Proceedings of the Workshop on AI for Urban Mobility at the 35th AAAI Conference on Artificial Intelligence
Date Published
01