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Systematic Analysis and Integrated Optimization of Traffic Signal Control Systems in a Connected Vehicle Environment.

机译:互联车辆环境中交通信号控制系统的系统分析和集成优化。

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摘要

Traffic signal control systems have been tremendously improved since the first colored traffic signal light was installed in London in December 1868. There are many different types of traffic signal control systems that can be categorized into three major control types: fixed-time, actuated, and adaptive. Choosing a proper traffic signal system is very important since there exists no perfect signal control strategy that fits every traffic network. One example is traffic signal coordination, which is the most widely used traffic signal control system. It is believed that performance measures, such as travel times, vehicle delay, and number of stops, can be enhanced by synchronizing traffic signals over a corridor. However, it is not always true that the coordination will have the same benefits for all the traffic in the network. Most of the research on coordination has focused only on strengthening the major movement along the coordinated routes without considering system-wide impacts on other traffic.;Therefore, before implementing a signal control system to a specific traffic network, a thorough investigation should be conducted to see how the control strategy may impact the entire network in terms of the objectives of each type of traffic control system. This dissertation first considers two different kinds of systematic performance analyses for traffic signal control systems. Then, it presents two types of signal control strategies that account for current issues in coordination and priority control systems, respectively.;First, quantitative analysis of smooth progression for traffic flow is investigated using connected vehicle technology. Many studies have been conducted to measure the quality of progression, but none has directly considered smooth progression as the significant factor of coordination, despite the fact that the definition of coordination states that the goal is to have smooth traffic flow. None of the existing studies concentrated on measuring a continuous smooth driving pattern for each vehicle in terms of speed. In order to quantify the smoothness, this dissertation conducts an analysis of the speed variation of vehicles traveling along a corridor. A new measure is introduced and evaluated for different kinds of traffic control systems. The measure can be used to evaluate how smoothly vehicles flow along a corridor based on the frequency content of vehicle speed. To better understand the impact of vehicle mode, a multi-modal analysis is conducted using the new measure.;Second, a multi-modal system-wide evaluation of traffic signal systems is conducted. This analysis is performed for traffic signal coordination, which is compared with fully actuated control in terms of a systematic assessment. Many optimization models for coordination focus mainly on the objective of the coordinated route and do not account for the impacts on side street movements or other system-wide impacts. In addition, multi-modality is not considered in most optimized coordination plans. Thus, a systematic investigation of traffic signal coordination is conducted to analyze the benefits and impacts on the entire system. The vehicle time spent in the system is measured as the basis of the analysis. The first analysis evaluates the effect of coordination on each route based on a single vehicle mode (regular passenger vehicles). The second analysis reveals that how multi-modality affects the performance of the entire system.;Third, in order to address traffic demand fluctuation and traffic pattern changes during coordination periods, this dissertation presents an adaptive optimization algorithm that integrates coordination with adaptive signal control using data from connected vehicles. Through the algorithm, the coordination plan can be updated to accommodate the traffic demand variation and remain optimal over the coordination period. The optimization framework consists of two levels: intersection and corridor. The intersection level handles phase allocation in real time based on connected vehicle trajectory data, while the corridor level deals with the offsets optimization. The corridor level optimization focuses on the performance of the vehicle movement along the coordinated phase, while at the intersection level, all movements are considered to create the optimal signal plan. The two levels of optimizations apply different objective functions and modeling methodologies. The objective function at the intersection level is to minimize individual vehicle delay for both coordinated and non-coordinated phases using dynamic programming (DP). At the corridor level, a mixed integer linear programming (MILP) is formulated to minimize platoon delay for the coordinated phase.;Lastly, a peer priority control strategy, which is a methodology that enhances the multi modal intelligent traffic signal system (MMITSS) priority control model, is presented based on peer-to-peer (P2P) and dedicated short range communication (DSRC) in a connected vehicle environment. The peer priority control strategy makes it possible for a signal controller to have a flexible long-term plan for prioritized vehicles. They can benefit from the long-term plan within a secured flexible region and it can prevent the near-term priority actions from having a negative impact on other traffic by providing more flexibility for phase actuation. The strategy can be applied to all different modes of vehicles such as transit, freight, and emergency vehicles. Consideration for far side bus stops is included for transit vehicles.;The research that is presented in this dissertation is constructed based on Standard DSRC messages from connected vehicles such as Basic Safety Messages (BSMs), Signal Phasing and Timing Messages (SPaTs), Signal Request Messages (SRMs), and MAP Messages, defined by Society of Automotive Engineers (SAE) (SAE International 2016).
机译:自从1868年12月在伦敦安装了第一个彩色交通信号灯以来,交通信号控制系统已经得到了极大的改进。交通信号控制系统有很多不同的类型,可以分为三种主要的控制类型:固定时间,启动和控制。适应性强。选择合适的交通信号系统非常重要,因为不存在适合每个交通网络的完美信号控制策略。交通信号协调就是一个例子,它是使用最广泛的交通信号控制系统。人们认为,可以通过在走廊上同步交通信号来增强性能指标,例如行驶时间,车辆延误和停车次数。但是,对于网络中的所有流量,协调并非总是具有相同的好处。大多数关于协调的研究仅集中于加强沿协调路线的主要运动,而没有考虑整个系统对其他交通的影响。因此,在对特定交通网络实施信号控制系统之前,应该进行彻底调查以了解每种流量控制系统的目标,控制策略如何影响整个网络。本文首先考虑了交通信号控制系统的两种不同的系统性能分析。然后,提出了两种信号控制策略,分别解决了协调和优先控制系统中的当前问题。首先,使用互联车辆技术对交通顺畅进行定量分析。已经进行了许多研究来评估进度的质量,但是,尽管协调的定义指出目标是拥有顺畅的交通流量,但没有研究直接将平稳进行视为协调的重要因素。现有的研究都没有集中于在速度方面测量每辆车的连续平稳驾驶模式。为了量化平滑度,本文对沿走廊行驶的车辆的速度变化进行了分析。针对不同类型的交通控制系统,引入并评估了一种新措施。该度量可用于基于车速的频率内容评估车辆沿着走廊流动的顺畅程度。为了更好地理解车辆模式的影响,使用新方法进行了多模式分析。第二,对交通信号系统进行了多模式系统范围的评估。进行此分析以进行交通信号协调,并根据系统评估将其与完全激活的控制进行比较。许多用于协调的优化模型主要集中在协调路线的目标上,而没有考虑对小巷运动的影响或其他整个系统的影响。另外,在大多数优化的协调计划中不考虑多模式。因此,对交通信号协调进行了系统的调查,以分析对整个系统的好处和影响。测量在系统中花费的车辆时间作为分析的基础。第一个分析基于单个车辆模式(常规乘用车)评估协调对每个路线的影响。第二种分析揭示了多模式如何影响整个系统的性能。第三,为了解决协调期间的交通需求波动和交通模式变化,本文提出了一种自适应优化算法,将协调与自适应信号控制相结合。来自联网车辆的数据。通过该算法,可以更新协调计划以适应交通需求的变化,并在协调期间保持最佳状态。优化框架包括两个层次:相交和走廊。交叉路口级别基于连接的车辆轨迹数据实时处理相位分配,而道路级别处理偏移量优化。走廊水平优化专注于车辆沿协调相位运动的性能,而在交叉路口水平,所有运动都被认为可以创建最佳信号计划。优化的两个级别应用了不同的目标函数和建模方法。交叉路口级别的目标功能是使用动态编程(DP)将协调阶段和非协调阶段的单个车辆延迟最小化。在走廊一级,制定了混合整数线性规划(MILP)以使协调阶段的排延迟最小化;最后,一种对等优先级控制策略,这是一种增强多模式智能交通信号系统(MMITSS)优先级的方法控制模型,基于互联车辆环境中的对等(P2P)和专用短距离通信(DSRC)提出。对等优先级控制策略使信号控制器可以针对优先车辆制定灵活的长期计划。他们可以从安全的灵活区域内的长期计划中受益,并且可以通过为相位驱动提供更大的灵活性来防止近期优先行动对其他流量产生负面影响。该策略可以应用于所有不同模式的车辆,例如运输,货运和应急车辆。本论文介绍的研究是基于来自互联车辆的标准DSRC消息(例如基本安全消息(BSM),信号定相和定时消息(SPaT),信号)构建的。由汽车工程师协会(SAE)定义的请求消息(SRM)和MAP消息(SAE International 2016)。

著录项

  • 作者

    Beak, Byungho.;

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Transportation.;Operations research.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 141 p.
  • 总页数 141
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:54:20

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