Traffic Flow Optimization at Toll Plaza Using Proactive Deep Learning Strategies

Habib Talha Hashmi, Sameer Ud-Din, Muhammad Asif Khan, Jamal Ahmed Khan, Muhammad Arshad, M. Hassan
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Abstract

Global urbanization and increasing traffic volume have intensified traffic congestion throughout transportation infrastructure, particularly at toll plazas, highlighting the critical need to implement proactive transportation infrastructure solutions. Traditional toll plaza management approaches, often relying on manual interventions, suffer from inefficiencies that fail to adapt to dynamic traffic flow and are unable to produce preemptive control strategies, resulting in prolonged queues, extended travel times, and adverse environmental effects. This study proposes a proactive traffic control strategy using advanced technologies to combat toll plaza congestion and optimize traffic management. The approach involves deep learning convolutional neural network models (YOLOv7–Deep SORT) for vehicle counting and an extended short-term memory model for short-term arrival rate prediction. When projected arrival rates exceed a threshold, the strategy proactively activates variable speed limits (VSLs) and ramp metering (RM) strategies during peak hours. The novelty of this study lies in its predictive and adaptive capabilities, ensuring efficient traffic flow management. Validated through a case study at Ravi Toll Plaza Lahore using PTV VISSIMv7, the proposed method reduces queue length by 57% and vehicle delays by 47% while cutting fuel consumption and pollutant emissions by 28.4% and 34%, respectively. Additionally, by identifying the limitations of conventional approaches, this study presents a novel framework alongside the proposed strategy to bridge the gap between theory and practice, making it easier for toll plaza operators and transportation authorities to adopt and benefit from advanced traffic management techniques. Ultimately, this study underscores the importance of integrated and proactive traffic control strategies in enhancing traffic management, minimizing congestion, and fostering a more sustainable transportation system.
利用前瞻性深度学习策略优化收费广场的交通流量
全球城市化和日益增长的交通流量加剧了整个交通基础设施的交通拥堵,尤其是在收费站,这凸显了实施前瞻性交通基础设施解决方案的迫切需要。传统的收费广场管理方法通常依赖人工干预,效率低下,无法适应动态交通流,也无法制定先发制人的控制策略,导致排队时间延长、出行时间延长,并对环境造成不利影响。本研究提出了一种采用先进技术的前瞻性交通控制策略,以解决收费广场拥堵问题并优化交通管理。该方法包括用于车辆计数的深度学习卷积神经网络模型(YOLOv7-Deep SORT)和用于短期到达率预测的扩展短期记忆模型。当预测到达率超过阈值时,该策略会在高峰时段主动启动可变限速(VSL)和匝道计量(RM)策略。这项研究的新颖之处在于其预测和自适应能力,可确保高效的交通流量管理。通过使用 PTV VISSIMv7 在拉合尔拉维收费广场进行的案例研究验证,所提出的方法可将队列长度减少 57%,车辆延误减少 47%,同时将燃料消耗和污染物排放分别减少 28.4% 和 34%。此外,通过识别传统方法的局限性,本研究提出了一个新颖的框架,并同时提出了缩小理论与实践差距的策略,使收费广场运营商和交通管理部门更容易采用先进的交通管理技术并从中受益。最终,本研究强调了综合、积极的交通控制策略在加强交通管理、减少拥堵和促进更可持续的交通系统方面的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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