Automated Traffic Signal Performance Measures (ATSPMs) in the Loop Simulation: A Digital Twin Approach

Swastik Khadka, P. Wang, Pengfei (Taylor) Li, Stephen P. Mattingly
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引用次数: 2

Abstract

In this paper, we present a digital twin approach to the enhancement of traffic signal performance monitoring and congestion identification using automated traffic signal performance measure (ATSPM) systems. The objective of this effort is to use the high-fidelity microscopic simulation engine to generate simulated traffic signal events and connected vehicle data and allow the ATSPM systems to generate various traffic signal measures of effectiveness (MOEs) for a forensic traffic signal evaluation. Real-world ATSPM systems are driven by the traffic signal logs generated during operations. Therefore, they are primarily applied to traffic signal operations in the field. However, traffic signal design at present still follows the traditional method based on averaged delays, stops, and so forth, while more and more agencies have begun to evaluate the implemented traffic signal systems’ performance using the novel ATSPM MOEs. The proposed ATSPMs-in-the-loop simulation system fills this gap by using the ATSPM systems to evaluate the proposed traffic signal timings at the design stage. The benefits of this system include providing full-spectrum decision support for traffic signal management from design to operation and facilitating agencies to develop new insights on identifying traffic signal problems using the ATSPM MOEs. Another feature of the ATSPMs-in-the-loop simulation system is that it can use the emerging connected vehicle data set to generate new traffic signal MOEs. In the case study, we demonstrate how to use the proposed system to identify the potential issues of detector layouts and bottlenecks. Additional features of this ATSPM digital twin include allowing external components to interact with this platform via standard protocols in traffic control systems and connected vehicles to serve more purposes.
环路模拟中的自动交通信号性能测量 (ATSPM):数字孪生方法
在本文中,我们提出了一种数字孪生方法,利用自动交通信号性能测量(ATSPM)系统来加强交通信号性能监控和拥堵识别。这项工作的目标是利用高保真微观模拟引擎生成模拟交通信号事件和联网车辆数据,并允许 ATSPM 系统生成各种交通信号效果测量值 (MOE),用于交通信号取证评估。现实世界中的 ATSPM 系统由运行期间生成的交通信号日志驱动。因此,它们主要应用于现场的交通信号运行。然而,目前的交通信号设计仍沿用基于平均延迟、停车等的传统方法,而越来越多的机构已开始使用新型 ATSPM MOE 评估已实施的交通信号系统性能。拟议的 ATSPM 在环仿真系统通过在设计阶段使用 ATSPM 系统评估拟议的交通信号定时,填补了这一空白。该系统的优势包括为交通信号管理提供从设计到运行的全方位决策支持,并促进各机构在使用 ATSPM MOEs 识别交通信号问题方面形成新的见解。ATSPMs-in-the-loop 仿真系统的另一个特点是,它可以使用新兴的联网车辆数据集生成新的交通信号 MOE。在案例研究中,我们演示了如何使用所建议的系统来识别探测器布局和瓶颈的潜在问题。该 ATSPM 数字孪生系统的其他功能还包括允许外部组件通过交通控制系统和联网车辆中的标准协议与该平台进行交互,以实现更多目的。
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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