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Let Trajectories Speak Out the Traffic Bottlenecks

Published: 29 November 2021 Publication History

Abstract

Traffic bottlenecks are a set of road segments that have an unacceptable level of traffic caused by a poor balance between road capacity and traffic volume. A huge volume of trajectory data which captures realtime traffic conditions in road networks provides promising new opportunities to identify the traffic bottlenecks. In this paper, we define this problem as trajectory-driven traffic bottleneck identification: Given a road network R, a trajectory database T, find a representative set of seed edges of size K of traffic bottlenecks that influence the highest number of road segments not in the seed set. We show that this problem is NP-hard and propose a framework to find the traffic bottlenecks as follows. First, a traffic spread model is defined which represents changes in traffic volume for each road segment over time. Then, the traffic diffusion probability between two connected segments and the residual ratio of traffic volume for each segment can be computed using historical trajectory data. We then propose two different algorithmic approaches to solve the problem. The first one is a best-first algorithm BF, with an approximation ratio of 1-1/e. To further accelerate the identification process in larger datasets, we also propose a sampling-based greedy algorithm SG. Finally, comprehensive experiments using three different datasets compare and contrast various solutions, and provide insights into important efficiency and effectiveness trade-offs among the respective methods.

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Published In

cover image ACM Transactions on Intelligent Systems and Technology
ACM Transactions on Intelligent Systems and Technology  Volume 13, Issue 1
February 2022
349 pages
ISSN:2157-6904
EISSN:2157-6912
DOI:10.1145/3502429
  • Editor:
  • Huan Liu
Issue’s Table of Contents

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Association for Computing Machinery

New York, NY, United States

Publication History

Published: 29 November 2021
Accepted: 01 May 2021
Revised: 01 March 2021
Received: 01 January 2021
Published in TIST Volume 13, Issue 1

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Author Tags

  1. Traffic spread
  2. traffic bottleneck
  3. road segments influence

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  • Research-article
  • Refereed

Funding Sources

  • ARC
  • Singtel Cognitive and Artificial Intelligence Lab for Enterprises (SCALE@NTU)
  • Singapore Government through the Industry Alignment Fund - Industry Collaboration Projects Grant, and a Tier-1 project

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