Evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecks

Abstract Traffic analysis procedures are becoming more robust over time. However, there is still significant room for improvement both in practitioners’ adoption of robust methods and in robustness of the methods themselves. One example of oversimplified practice involves peak hour or 30th highest h...

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Main Authors: David Hale, Georgios Chrysikopoulos, Alexandra Kondyli, Amir Ghiasi
Format: Article
Language:English
Published: Wiley 2021-04-01
Series:IET Intelligent Transport Systems
Online Access:https://doi.org/10.1049/itr2.12040
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spelling doaj-28b1f5b0938a4bd48a3a76f3b8aaac742021-07-14T13:20:53ZengWileyIET Intelligent Transport Systems1751-956X1751-95782021-04-0115450451310.1049/itr2.12040Evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecksDavid Hale0Georgios Chrysikopoulos1Alexandra Kondyli2Amir Ghiasi3Leidos Inc. Reston Virginia USACivil, Environmental, and Architectural Engineering University of Kansas Lawrence Kansas USACivil, Environmental, and Architectural Engineering University of Kansas Lawrence Kansas USALeidos Inc. Reston Virginia USAAbstract Traffic analysis procedures are becoming more robust over time. However, there is still significant room for improvement both in practitioners’ adoption of robust methods and in robustness of the methods themselves. One example of oversimplified practice involves peak hour or 30th highest hour analysis, which fails to capture the impacts of varying demands and operating conditions. To address this limitation, detailed reliability modelling procedures were developed for the Highway Capacity Manual (HCM), but these procedures bring challenging input data and calibration requirements. A new generation of data‐driven tools is capable of real‐time congestion identification, but their performance measures are only beginning to improve and evolve. Finally, comparing and ranking congested locations (i.e. bottlenecks) on the basis of experience and judgment lacks credibility unless backed by quantitative results. This study discusses the development of new and innovative performance measures for congestion measurement. A case study of ranking eight real‐world bottlenecks based on the proposed measures and existing HCM measures produced new insights that could improve both approaches. Ideally, these new insights and methods would be accepted by agencies and/or commercial products for a new level of robustness in congestion measurement.https://doi.org/10.1049/itr2.12040
collection DOAJ
language English
format Article
sources DOAJ
author David Hale
Georgios Chrysikopoulos
Alexandra Kondyli
Amir Ghiasi
spellingShingle David Hale
Georgios Chrysikopoulos
Alexandra Kondyli
Amir Ghiasi
Evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecks
IET Intelligent Transport Systems
author_facet David Hale
Georgios Chrysikopoulos
Alexandra Kondyli
Amir Ghiasi
author_sort David Hale
title Evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecks
title_short Evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecks
title_full Evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecks
title_fullStr Evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecks
title_full_unstemmed Evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecks
title_sort evaluation of data‐driven performance measures for comparing and ranking traffic bottlenecks
publisher Wiley
series IET Intelligent Transport Systems
issn 1751-956X
1751-9578
publishDate 2021-04-01
description Abstract Traffic analysis procedures are becoming more robust over time. However, there is still significant room for improvement both in practitioners’ adoption of robust methods and in robustness of the methods themselves. One example of oversimplified practice involves peak hour or 30th highest hour analysis, which fails to capture the impacts of varying demands and operating conditions. To address this limitation, detailed reliability modelling procedures were developed for the Highway Capacity Manual (HCM), but these procedures bring challenging input data and calibration requirements. A new generation of data‐driven tools is capable of real‐time congestion identification, but their performance measures are only beginning to improve and evolve. Finally, comparing and ranking congested locations (i.e. bottlenecks) on the basis of experience and judgment lacks credibility unless backed by quantitative results. This study discusses the development of new and innovative performance measures for congestion measurement. A case study of ranking eight real‐world bottlenecks based on the proposed measures and existing HCM measures produced new insights that could improve both approaches. Ideally, these new insights and methods would be accepted by agencies and/or commercial products for a new level of robustness in congestion measurement.
url https://doi.org/10.1049/itr2.12040
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