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Publications

Publications

  • Next generation traffic management for proactive multimodal network optimization
  • Regulatory schemes for CAV-inclusive multimodal traffic management: opportunities, threats and next steps
  • Risk Assessment of Autonomous Vehicles across Diverse Driving Contexts

  • The State of the Art of Cooperative and Connected Autonomous Vehicles from the Future Mobility Management Perspective: A Systematic Review

  • Towards Efficient Incident Detection in Real-time Traffic Management

  • Integrated optimal control for multi-lane motorway networks

  • Automated Approach for Generating and Evaluating Traffic Inciden Response Plans

  • AI-Driven Real-time Incident Detection for Intelligent Transportation Systems

  • Real-Life Synchromodality Challenges: A Qualitative Study in Flanders

  • An AutoML-based approach for automatic traffic incident detection in smart cities

This project has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement N°955317

Disclaimer: The content of this website reflects only the author’s view. Neither the European Commission nor the CINEA is responsible for any use that may be made of the information it contains.

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