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Investigation of Analyzable Solutions for Left-Turn-Centered Congestion Problems in Urban Grid Networks

Author

Listed:
  • Taraneh Ardalan

    (Department of Civil & Environmental Engineering, University of Pittsburgh, 341A Benedum Hall, 3700 O’Hara Street Pittsburgh, Pittsburgh, PA 15261, USA)

  • Denis Sarazhinsky

    (Department of Transport Systems and Technologies, Belarusian National Technical University, 220013 Minsk, Belarus)

  • Nemanja Dobrota

    (Kittelson and Associates, Inc., 100 M Street SE, Suite 910, Washington, DC 20003, USA)

  • Aleksandar Stevanovic

    (Department of Civil & Environmental Engineering, University of Pittsburgh, 341A Benedum Hall, 3700 O’Hara Street Pittsburgh, Pittsburgh, PA 15261, USA)

Abstract

Traffic congestion caused by left-turning vehicles in a coordinated corridor is a multifaceted problem requiring tailored solutions. This study explores the impact of shared left-turn lanes within one-way couplets, particularly during peak hours, where high left-turn volumes, limited side street storage, and the overlapped green time between pedestrians and left-turners contribute to queue spillbacks, coordination interruption, and network congestion. The focus of this paper is on the solutions that can be easily analyzed by practitioners, here called “analyzable solutions”. This approach stands in contrast to solutions derived from “non-transparent” optimization tools, which do not allow for a clear assessment of the solution’s adequacy or the ability to predict its impact in real-world applications. This paper investigates the effects of employing two analyzable signal timing strategies: Lagging Pedestrian (LagPed) phasing and Left-Turn Progression (LTP) offsets. Using high-fidelity microsimulation, the authors evaluated different scenarios, assessing pedestrian delays, queue lengths, travel time index, area average travel time index, and environmental impacts such as Fuel Consumption (FC) and CO 2 emissions. The effectiveness of the proposed strategies was comprehensively evaluated against the base case scenario, demonstrating considerable improvements in various performance measures, including approximately a 5% reduction in FC and CO 2 emissions. Implementation of the LTP strategy alone yields substantial reductions in delays, the number of stops, the queue length for left-turning vehicles, travel times for all road users, and ultimately FC and CO 2 emissions. This study offers innovative approach to addressing the complex and multifaceted problem of left-turn-centered congestion in urban grid networks using efficient and down-to-earth analyzable solutions.

Suggested Citation

  • Taraneh Ardalan & Denis Sarazhinsky & Nemanja Dobrota & Aleksandar Stevanovic, 2024. "Investigation of Analyzable Solutions for Left-Turn-Centered Congestion Problems in Urban Grid Networks," Sustainability, MDPI, vol. 16(11), pages 1-24, June.
  • Handle: RePEc:gam:jsusta:v:16:y:2024:i:11:p:4777-:d:1408417
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    References listed on IDEAS

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