Highway Travel Time Estimation With Captured In-Vehicle Wi-Fi Mac Addresses: Mechanism, Challenges, Solutions and Applications

This report is based on the research initiated by co-principal investigators Pengfei (Taylor) Li, Mississippi State University (formerly at Arizona State University) and Pitu B. Mirchandani, and was partially supported by a subcontract from University of Nevada, Reno, to Arizona State University entitled Measuring Traffic Performance Using Passive Sensing Technologies on Signalized Arterials (Task C), under NDOT Agreement No: UNR-14-60.

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