Skip to content
MLSM – Machine Learning for Smart Mobility
  • Research
    • Research Topics
    • Research Projects
    • Publications
    • Software
    • Data
  • Education
    • Courses
    • MSc Thesis Topics
    • Previous MSc Thesis
  • Blog
  • Positions
  • Team
  • About
    • About
    • Contact Us

99th Transportation Research Board Annual Meeting (TRB 2020) was held in Washington, D.C. from 12-16 January 2020. Our group contributed with five interesting papers. Check out below for more details.

Gammelli, D., Rodrigues, F., Pacino, D., Kurtaran, H. A., Pereira, F. C.
A Machine Learning Approach to Censored Bike-Sharing Demand Modeling
in Proceedings of the 99th Annual Meeting of the Transportation Research Board, 2020

Sfeir, G., Abou-Zeid, M., Rodrigues, F., Pereira, F. C.
Gaussian Mixture Models Meet Econometric Models
in Proceedings of the 99th Annual Meeting of the Transportation Research Board, 2020

Seshadri, S. G. R., Atasoy, B., Akkinepally, A., Pereira, F. C., Tan, G., Ben-Akiva, M.
Real-Time Predictive Control Strategy Optimization
in Proceedings of the 99th Annual Meeting of the Transportation Research Board, 2020

Nahmias Biran, B. H., Oke, J., Kumar, N., Akkinepally, A., Lima Azevedo, C., Ferreira, J., Zegras, C., Ben-Akiva, M.
Who Benefits from Autonomous Vehicles (AVs)?: Equity Aspects of AV Policies in a Full-Scale Prototype Cities
in Proceedings of the 99th Annual Meeting of the Transportation Research Board, 2020

Oke, J., Akkinepally, A., Chen, S., Aboutaleb, Y., Xie, Y., Nahmias Biran., B. H., Lima Azevedo, C., Zegras, C., Ferreira, J., Ben-Akiva, M.
Simulation and Evaluation of Automated Mobility On-Demand Strategies in Dense Transit-Oriented Cities
in Proceedings of the 99th Annual Meeting of the Transportation Research Board, 2020

Share this:

  • Click to share on Twitter (Opens in new window)
  • Click to share on Facebook (Opens in new window)
  • Click to share on LinkedIn (Opens in new window)

Related

Our team is ready for the 20/21 season! :-)
MLSM visited San Francisco and Silicon Valley!

Contact

mlsm@man.dtu.dk
Transportation Science Division
DTU Management
Akademivej Bygning 358
DK-2800 Kgs. Lyngby

Links

Transportation Science Division
DTU Management
Intelligent Transportation Systems

Follow us

Twitter
LinkedIn

© MLSM group | Design based on Colorlib
Theme by Colorlib Powered by WordPress
  • Twitter
  • LinkedIn
  • GitHub