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Development and Evaluation of Cooperative Intersection Management Algorithm under Connected Vehicles Environment

机译:车联网环境下协同交叉口管理算法的开发与评估

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摘要

Recent technological advancements in the automotive and transportation industry established a firm foundation for development and implementation of various automated and connected vehicle (C/AV) solutions around the globe. Wireless communication technologies such as the dedicated short-range communication (DSRC) protocol are enabling instantaneous information exchange between vehicles and infrastructure. Such information exchange produces tremendous benefits with the possibility to automate conventional traffic streams and enhance existing signal control strategies. While many promising studies in the area of signal control under connected vehicle (CV) environment have been introduced, they mainly offer solutions designed to operate a single isolated intersection or they require high technology penetration rates to operate in a safe and efficient manner. Applications designed to operate on a signalized corridor with imperfect market penetration rates of connected vehicle technology represent a bridge between conventional traffic control paradigm and fully automated corridors of the future.;Assuming utilization of the connected vehicle environment and vehicle to infrastructure (V2I) technology, all vehicular and signal-related parameters are known and can be shared with the control agent to control automated vehicles while improving the mobility of the signalized corridor. This dissertation research introduces an intersection management strategy for a corridor with automated vehicles utilizing vehicular trajectory driven optimization method. The Trajectory-driven Optimization for Automated Driving (TOAD) provides an optimal trajectory for automated vehicles while maintaining safe and uninterrupted movement of general traffic, consisting of regular unequipped vehicles. Signal status parameters such as cycle length and splits are continuously captured. At the same time, vehicles share their position information with the control agent. Both inputs are then used by the control algorithm to provide optimal trajectories for automated vehicles, resulting in the reduction of vehicle delay along the signalized corridor with fixed-time signal control. To determine the most efficient trajectory for automated vehicles, an evolutionary-based optimization is utilized. Influence of the prevailing traffic conditions is incorporated into a control algorithm using conventional data collection methods such as loop detectors, Bluetooth or Wi-Fi sensors to collect vehicle counts, travel time on corridor segments, and spot speed. Moreover, a short-term, artificial intelligence prediction model is developed to achieve reasonable deployment of data collection devices and provide accurate vehicle delay predictions producing realistic and highly-efficient longitudinal vehicle trajectories.;The concept evaluation through microsimulation reveals significant mobility improvements compared to contemporary corridor management approach. The results for selected test-bed locations on signalized arterials in New Jersey reveals up to 19.5 % reduction in overall corridor travel time depending on different market penetration and lane configuration scenario. It is also discovered that operational scenarios with a possibility of utilizing reserved lanes for movement of automated vehicles further increases the effectiveness of the proposed algorithm. In addition, the proposed control algorithm is feasible under imperfect C/AV market penetrations showing mobility improvements even with low market penetration rates.
机译:汽车和运输行业的最新技术进步为全球各种自动和联网汽车(C / AV)解决方案的开发和实施奠定了坚实的基础。诸如专用短距离通信(DSRC)协议之类的无线通信技术使车辆与基础设施之间的即时信息交换成为可能。这样的信息交换产生了巨大的好处,并有可能使常规业务流自动化并增强现有的信号控制策略。虽然已经引入了有关在联网车辆(CV)环境下的信号控制领域的许多有希望的研究,但它们主要提供旨在运行单个隔离交叉路口的解决方案,或者它们需要较高的技术渗透率才能安全有效地运行。设计用于在互联车辆技术市场渗透率不完善的信号灯走廊上运行的应用程序代表了传统交通控制范例与未来的全自动走廊之间的桥梁。假设利用互联车辆环境和车辆到基础设施(V2I)技术,所有与车辆和信号有关的参数都是已知的,并且可以与控制代理共享以控制自动车辆,同时改善信号走廊的移动性。本论文的研究提出了一种利用车辆轨迹驱动的优化方法的自动车辆走廊的交叉口管理策略。轨迹驱动的自动驾驶优化(TOAD)为自动车辆提供了最佳的轨迹,同时保持了由常规无装备车辆组成的一般交通的安全和不间断的行驶。信号状态参数(例如周期长度和分割)被连续捕获。同时,车辆与控制代理共享其位置信息。然后,控制算法使用这两个输入为自动车辆提供最佳轨迹,从而通过固定时间的信号控制减少沿信号化走廊的车辆延迟。为了确定自动车辆的最有效轨迹,利用了基于进化的优化方法。使用常规数据收集方法(例如环路检测器,蓝牙或Wi-Fi传感器)收集主要交通状况的影响并纳入控制算法中,以收集车辆计数,走廊路段上的行驶时间和地点速度。此外,还开发了一个短期的人工智能预测模型,以实现数据采集设备的合理部署并提供准确的车辆延迟预测,从而产生逼真的,高效的纵向车辆轨迹。走廊管理方法。新泽西州信号干线上选定测试台位置的结果表明,根据不同的市场渗透率和车道配置方案,走廊总行驶时间最多可减少19.5%。还发现,有可能利用预留车道来使自动车辆运动的操作场景进一步提高了所提出算法的有效性。另外,在不完善的C / AV市场渗透率下,即使在较低的市场渗透率下也显示出移动性的提高,所提出的控制算法是可行的。

著录项

  • 作者

    Gutesa, Slobodan.;

  • 作者单位

    New Jersey Institute of Technology.;

  • 授予单位 New Jersey Institute of Technology.;
  • 学科 Transportation.;Civil engineering.;Computer science.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 130 p.
  • 总页数 130
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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