An Automated Detection Framework for Multiple Highway Bottleneck Activations

Journal Article (2021)
Authors

Tin T. Nguyen (Transport and Planning)

SC Calvert (Transport and Planning)

Hai L. Vu (Swinburne University of Technology, Monash University)

J. W.C. Lint (Transport and Planning)

Affiliation
Transport and Planning
Copyright
© 2021 T.T. Nguyen, S.C. Calvert, Hai L. Vu, J.W.C. van Lint
To reference this document use:
https://doi.org/10.1109/TITS.2021.3055640
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 T.T. Nguyen, S.C. Calvert, Hai L. Vu, J.W.C. van Lint
Affiliation
Transport and Planning
Issue number
6
Volume number
23
Pages (from-to)
5678-5692
DOI:
https://doi.org/10.1109/TITS.2021.3055640
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Abstract

Highway bottlenecks are responsible for the majority of traffic congestion. Although the problem of bottleneck detection is not new, contemporary methods have not solved the problem thoroughly with regards to bottleneck locations, activation time, and related congestion tracking. These elements are essential for identifying and characterizing a bottleneck. This paper proposes a comprehensive framework for detecting and extracting these features of highway bottlenecks from traffic data. We particularly focus on questions (i) whether a bottleneck is the primary source of congestion or (ii) whether it is activated due to congestion caused by another downstream bottleneck. The underlying principles of the proposed method include the detection of congestion (in spatio-temporal patterns of traffic congestion), and the detection of speed discontinuities in traffic data (since this is an important indicator of a bottleneck activation). The method is data-driven and automatic therefore can be easily applied to different highways and used to obtain meaningful statistics of existing bottlenecks. We have tested the method on simulated data and also demonstrated it on real data from a busy highway section in the Netherlands. The results suggest that the method is robust to different implementations, i.e. locations, of loop-detectors which measure traffic at discrete locations.

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