Demand Forecasting and Activity-based Mobility Modeling from Cell Phone Data

Abstract: 

This project develops machine learning algorithms and methods for processing of cell phone location logs to generate travel behavior data. The project initially focuses on bias correction and activity inference for generating activity-based travel demand models. Inferred activity chains are used to calibrate an agent-based traffic micro-simulation for the SF Bay Area, and validated on loop detector counts.

Author: 
Pozdnukhov, Alexey
Publication date: 
March 31, 2016
Publication type: 
Research Report
Citation: 
Pozdnukhov, A. (2016). Demand Forecasting and Activity-based Mobility Modeling from Cell Phone Data (Nos. 2016 –TO 012 –65A0529). https://escholarship.org/uc/item/4hc9r218