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Controlling traffic flow to mitigate congestion on motorways

Controlling traffic flow to mitigate congestion on motorways
Controlling traffic flow to mitigate congestion on motorways
Traffic congestion inflicted by shockwaves has developed into a substantial universal issue, incurring critical impacts worldwide. This research concentrates on exploring the potential of employing Connected Autonomous Vehicles (CAVs) to alleviate these shockwaves. Consequently, an integrated system is proposed, merging early shockwave detection with optimization based CAVs control for enhanced traffic flow. The system incorporates real-time shockwave identification using motorway detector data, an automated CAV speed regulation strategy, and shockwave endpoint prediction models. A novel algorithm accurately detects shockwaves by tracking individual vehicle speeds and headways from inductive loops. The algorithm introduces an “Events Count” parameter allowing configuration for larger, high-impact shockwaves. The control strategy assumes command of CAVs approaching the shockwave to smooth traffic flow by optimizing speed based on the shockwave endpoint predictions. The prediction models leverage vehicle trajectories within shockwaves to reliably estimate future time, position, and speed values. The system is implemented and thoroughly evaluated using the PTV VISSIM microsimulation platform. Various motorway environments are simulated to rigorously test functionality across diverse traffic conditions. Results exhibit the system’s effectiveness in enhancing traffic flow, significantly improving vehicle speeds, acceleration patterns, safety, fuel consumption without disrupting travel times. This research advances knowledge on leveraging CAVs for proactive traffic management and congestion relief. The integrated system contributes a promising solution toward smarter, smoother transportation systems by automatically detecting and mitigating shockwaves before broader congestion materializes. Further validation through field data is recommended. Broader implementation could yield substantial community benefits.
University of Southampton
Abu Saq, Hassan Fahad H
e63969f3-4873-4a63-96fe-e76098949b4b
Abu Saq, Hassan Fahad H
e63969f3-4873-4a63-96fe-e76098949b4b
Kaparias, Ioannis
e7767c57-7ac8-48f2-a4c6-6e3cb546a0b7
Waterson, Ben
60a59616-54f7-4c31-920d-975583953286

Abu Saq, Hassan Fahad H (2024) Controlling traffic flow to mitigate congestion on motorways. University of Southampton, Doctoral Thesis, 223pp.

Record type: Thesis (Doctoral)

Abstract

Traffic congestion inflicted by shockwaves has developed into a substantial universal issue, incurring critical impacts worldwide. This research concentrates on exploring the potential of employing Connected Autonomous Vehicles (CAVs) to alleviate these shockwaves. Consequently, an integrated system is proposed, merging early shockwave detection with optimization based CAVs control for enhanced traffic flow. The system incorporates real-time shockwave identification using motorway detector data, an automated CAV speed regulation strategy, and shockwave endpoint prediction models. A novel algorithm accurately detects shockwaves by tracking individual vehicle speeds and headways from inductive loops. The algorithm introduces an “Events Count” parameter allowing configuration for larger, high-impact shockwaves. The control strategy assumes command of CAVs approaching the shockwave to smooth traffic flow by optimizing speed based on the shockwave endpoint predictions. The prediction models leverage vehicle trajectories within shockwaves to reliably estimate future time, position, and speed values. The system is implemented and thoroughly evaluated using the PTV VISSIM microsimulation platform. Various motorway environments are simulated to rigorously test functionality across diverse traffic conditions. Results exhibit the system’s effectiveness in enhancing traffic flow, significantly improving vehicle speeds, acceleration patterns, safety, fuel consumption without disrupting travel times. This research advances knowledge on leveraging CAVs for proactive traffic management and congestion relief. The integrated system contributes a promising solution toward smarter, smoother transportation systems by automatically detecting and mitigating shockwaves before broader congestion materializes. Further validation through field data is recommended. Broader implementation could yield substantial community benefits.

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More information

Published date: June 2024

Identifiers

Local EPrints ID: 490800
URI: http://eprints.soton.ac.uk/id/eprint/490800
PURE UUID: 13cf5483-c36e-409d-8b03-14827521ebae
ORCID for Hassan Fahad H Abu Saq: ORCID iD orcid.org/0009-0003-8266-9532
ORCID for Ioannis Kaparias: ORCID iD orcid.org/0000-0002-8857-1865
ORCID for Ben Waterson: ORCID iD orcid.org/0000-0001-9817-7119

Catalogue record

Date deposited: 06 Jun 2024 16:54
Last modified: 14 Aug 2024 01:57

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Contributors

Author: Hassan Fahad H Abu Saq ORCID iD
Thesis advisor: Ioannis Kaparias ORCID iD
Thesis advisor: Ben Waterson ORCID iD

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