ITSC 2024 Paper Abstract

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Paper ThBT8.5

Nicewarner, Tyler (Vanderbilt University), Esser, Alexander (Vanderbilt University), Yu, Alian (Vanderbilt University), Allami, Ali (Vanderbilt University), Lin, Dan (Vanderbilt University)

Advanced Privacy-Preserving Data Aggregation for Accurate Traffic Flow Prediction

Scheduled for presentation during the Regular Session "Transportation Security" (ThBT8), Thursday, September 26, 2024, 15:50−16:10, Salon 16

2024 IEEE 27th International Conference on Intelligent Transportation Systems (ITSC), September 24- 27, 2024, Edmonton, Canada

This information is tentative and subject to change. Compiled on December 26, 2024

Keywords Transportation Security, Other Theories, Applications, and Technologies

Abstract

With advances in autonomous vehicles and Vehicular ad-hoc networks (VANETs) technology, it is envisioned that more and more vehicles will have the capability to communicate with both their peers and roadside units. This technological advance has fostered a series of research in future intelligent transportation systems with the aim to enhance travel efficiency and reduce greenhouse gas emissions. However, for any intelligent transportation system to be widely adopted in the real world, safeguarding the privacy of participating vehicles would be a critical aspect to address. In this paper, we propose an advanced and efficient privacy-preserving data aggregation protocol that facilitates the collection and aggregation of vehicle information to conduct accurate traffic flow prediction. Our experiments have demonstrated both the efficiency and effectiveness of our approach.

 

 

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