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Robust-Intelligent Traffic Signal Control within a Vehicle-to-Infrastructure and Vehicle-to-Vehicle Communication Environment

机译:车辆对基础设施和车辆对车辆通信环境中的鲁棒智能交通信号控制

摘要

Modern traffic signal control systems have not changed significantly in the past 40-50 years. The most widely applied traffic signal control systems are still time-of-day, coordinated-actuated system, since many existing advanced adaptive signal control systems are too complicated and fathomless for most of people. Recent advances in communications standards and technologies provide the basis for significant improvements in traffic signal control capabilities. In the United States, the IntelliDriveSM program (originally called Vehicle Infrastructure Integration - VII) has identified 5.9GHz Digital Short Range Communications (DSRC) as the primary communications mode for vehicle-to-vehicle (v2v) and vehicle-to-infrastructure (v2i) safety based applications, denoted as v2x. The ability for vehicles and the infrastructure to communication information is a significant advance over the current system capability of point presence and passage detection that is used in traffic control systems. Given enriched data from IntelliDriveSM, the problem of traffic control can be solved in an innovative data-driven and mathematical way to produce robust and optimal outputs.In this doctoral research, three different problems within a v2x environment- "enhanced pseudo-lane-level vehicle positioning", "robust coordinated-actuated multiple priority control", and "multimodal platoon-based arterial traffic signal control", are addressed with statistical techniques and mathematical programming.First, a pseudo-lane-level GPS positioning system is proposed based on an IntelliDriveSM v2x environment. GPS errors can be categorized into common-mode errors and noncommon-mode errors, where common-mode errors can be mitigated by differential GPS (DGPS) but noncommon-mode cannot. Common-mode GPS errors are cancelled using differential corrections broadcast from the road-side equipment (RSE). With v2i communication, a high fidelity roadway layout map (called MAP in the SAE J2735 standard) and satellite pseudo-range corrections are broadcast by the RSE. To enhance and correct lane level positioning of a vehicle, a statistical process control approach is used to detect significant vehicle driving events such as turning at an intersection or lane-changing. Whenever a turn event is detected, a mathematical program is solved to estimate and update the GPS noncommon-mode errors. Overall the GPS errors are reduced by corrections to both common-mode and noncommon-mode errors.Second, an analytical mathematical model, a mixed-integer linear program (MILP), is developed to provide robust real-time multiple priority control, assuming penetration of IntelliDriveSM is limited to emergency vehicles and transit vehicles. This is believed to be the first mathematical formulation which accommodates advanced features of modern traffic controllers, such as green extension and vehicle actuations, to provide flexibility in implementation of optimal signal plans. Signal coordination between adjacent signals is addressed by virtual coordination requests which behave significantly different than the current coordination control in a coordinated-actuated controller. The proposed new coordination method can handle both priority and coordination together to reduce and balance delays for buses and automobiles with real-time optimized solutions.The robust multiple priority control problem was simplified as a polynomial cut problem with some reasonable assumptions and applied on a real-world intersection at Southern Ave. & 67 Ave. in Phoenix, AZ on February 22, 2010 and March 10, 2010. The roadside equipment (RSE) was installed in the traffic signal control cabinet and connected with a live traffic signal controller via Ethernet. With the support of Maricopa County's Regional Emergency Action Coordinating (REACT) team, three REACT vehicles were equipped with onboard equipments (OBE). Different priority scenarios were tested including concurrent requests, conflicting requests, and mixed requests. The experiments showed that the traffic controller was able to perform desirably under each scenario.Finally, a unified platoon-based mathematical formulation called PAMSCOD is presented to perform online arterial (network) traffic signal control while considering multiple travel modes in the IntelliDriveSM environment with high market penetration, including passenger vehicles. First, a hierarchical platoon recognition algorithm is proposed to identify platoons in real-time. This algorithm can output the number of platoons approaching each intersection. Second, a mixed-integer linear program (MILP) is solved to determine the future optimal signal plans based on the real-time platoon data (and the platoon request for service) and current traffic controller status. Deviating from the traditional common network cycle length, PAMSCOD aims to provide multi-modal dynamical progression (MDP) on the arterial based on the real-time platoon information. The integer feasible solution region is enhanced in order to reduce the solution times by assuming a first-come, first-serve discipline for the platoon requests on the same approach. Microscopic online simulation in VISSIM shows that PAMSCOD can easily handle two traffic modes including buses and automobiles jointly and significantly reduce delays for both modes, compared with SYNCHRO optimized plans.
机译:在过去的40至50年中,现代交通信号控制系统并未发生重大变化。由于许多现有的高级自适应信号控制系统对于大多数人来说过于复杂和难以理解,因此应用最广泛的交通信号控制系统仍然是每日的协调驱动系统。通信标准和技术的最新进展为交通信号控制功能的显着改善提供了基础。在美国,IntelliDriveSM程序(最初称为“车辆基础设施集成-VII”)已将5.9GHz数字短程通信(DSRC)确定为车对车(v2v)和车对基础设施(v2i)的主要通信模式。 )基于安全的应用程序,表示为v2x。与交通控制系统中使用的点存在和通道检测的当前系统功能相比,车辆和基础设施进行通信信息的能力是一项重大进步。给定来自IntelliDriveSM的丰富数据,可以以创新的数据驱动和数学方式解决交通控制问题,以产生可靠且最佳的输出。在此博士研究中,v2x环境中的三个不同问题-“增强的伪车道级”利用统计技术和数学编程解决“车辆定位”,“鲁棒协调致动多优先级控制”和“基于多式联排的交通信号控制”。首先,提出了一种基于车道的伪车道级GPS定位系统。 IntelliDriveSM v2x环境。 GPS错误可以分为共模错误和非共模错误,其中差分GPS(DGPS)可以减轻共模错误,但非共模不能。使用从路边设备(RSE)广播的差分校正来消除共模GPS错误。通过v2i通信,RSE广播高保真巷道布局图(在SAE J2735标准中称为MAP)和卫星伪距校正。为了增强和校正车辆的车道高度定位,使用统计过程控制方法来检测重要的车辆驾驶事件,例如在十字路口转弯或改变车道。每当检测到转弯事件时,都会求解数学程序以估算和更新GPS非共模误差。总体而言,通过校正共模和非共模误差可以减少GPS误差。其次,开发了一种分析数学模型,即混合整数线性程序(MILP),以提供可靠的实时多优先级控制(假设穿透) IntelliDriveSM的功能仅限于应急车辆和运输车辆。据信这是第一个数学公式,它适应了现代交通控制器的先进功能(例如绿色扩展和车辆驱动),为实现最佳信号计划提供了灵活性。相邻信号之间的信号协调是通过虚拟协调请求解决的,虚拟协调请求的行为与协调致动控制器中的当前协调控制明显不同。提出的新协调方法可以通过实时优化解决方案同时处理优先级和协调问题,以减少和平衡公交车和汽车的延误。将鲁棒的多优先级控制问题简化为多项式割问题,并具有一些合理的假设并将其应用于实际于2010年2月22日和2010年3月10日在亚利桑那州凤凰城的南部大道和67大道进行世界交叉。路边设备(RSE)安装在交通信号控制柜中,并通过以太网与实时交通信号控制器连接。在马里科帕县的区域应急行动协调(REACT)团队的支持下,三辆REACT车辆配备了车载设备(OBE)。测试了不同的优先级方案,包括并发请求,冲突请求和混合请求。实验表明,交通控制器在每种情况下都能实现理想的性能。最后,提出了一种基于排的统一数学公式,称为PAMSCOD,以执行在线动脉(网络)交通信号控制,同时在IntelliDriveSM环境中考虑了多种出行模式,并具有较高的效率。市场渗透率,包括乘用车。首先,提出了一种分层排识别算法来实时识别排。该算法可以输出接近每个交叉点的排数。其次,求解混合整数线性程序(MILP),以基于实时排数据(以及排服务要求)和当前交通管制员状态,确定未来的最佳信号计划。偏离传统的公共网络周期长度,PAMSCOD旨在基于实时排信息在动脉上提供多峰动态进展(MDP)。通过在相同方法上针对排请求采用先到先得的原则,增强了整数可行解区域,以减少解决时间。 VISSIM中的微观在线仿真表明,与SYNCHRO优化计划相比,PAMSCOD可以轻松地共同处理包括公交车和汽车在内的两种交通方式,并显着减少两种交通方式的延误。

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    He Qing;

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