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轨道交通弹性PNT体系及其关键技术

王佰亮 马征 刘林 梁先明 刘刚

王佰亮, 马征, 刘林, 梁先明, 刘刚. 轨道交通弹性PNT体系及其关键技术[J]. 西南交通大学学报. doi: 10.3969/j.issn.0258-2724.20240124
引用本文: 王佰亮, 马征, 刘林, 梁先明, 刘刚. 轨道交通弹性PNT体系及其关键技术[J]. 西南交通大学学报. doi: 10.3969/j.issn.0258-2724.20240124
WANG Bailiang, MA Zheng, LIU Lin, LIANG Xianming, LIU Gang. Resilient Positioning Navigation and Timing System and Key Technologies for Rail Transit[J]. Journal of Southwest Jiaotong University. doi: 10.3969/j.issn.0258-2724.20240124
Citation: WANG Bailiang, MA Zheng, LIU Lin, LIANG Xianming, LIU Gang. Resilient Positioning Navigation and Timing System and Key Technologies for Rail Transit[J]. Journal of Southwest Jiaotong University. doi: 10.3969/j.issn.0258-2724.20240124

轨道交通弹性PNT体系及其关键技术

doi: 10.3969/j.issn.0258-2724.20240124
基金项目: 国家自然科学基金铁路基础研究基金重点项目,面向高速铁路的5G专用移动通信理论与关键技术研究(U2268201)
详细信息
    作者简介:

    王佰亮 (1976—),男,博士研究生,研究方向为定位与导航系统,E-mail:blwang@my.swjtu.edu.cn

    通讯作者:

    马征(1977—),男,教授,研究方向为无线通信、定位与导航系统,E-mail: zma@swjtu.edu.cn

  • 中图分类号: U239.5

Resilient Positioning Navigation and Timing System and Key Technologies for Rail Transit

  • 摘要:

    精确、连续的位置信息是保障轨道交通列车安全、高效运营的关键. 然而,在隧道、高架、城市峡谷及郊区等构成的复杂运营环境中,实现无缝的精确定位仍是当前列车定位系统面临的严峻挑战. 弹性导航、定位与授时(Positioning Navigation and Timing,PNT)通过融合多种PNT信息源,能够生成连续可用、可靠、稳健的位置信息,具备抵御危害、适应风险和干扰的能力,为解决上述难题提供了可行路径,并已在军事国防、航空航天等领域展现出巨大潜力. 为促进该技术在轨道交通领域的应用与发展,本文在分析轨道交通行业用户对导航、定位与授时需求的基础上,结合当前轨道交通既有系统的导航定位能力,提出适用于轨道交通的弹性PNT体系概念与架构. 并从轨道交通PNT特殊性出发,归纳轨道交通弹性PNT系统的基本特征与评价指标,阐述弹性与精确性、完好性、连续性、可用性等指标的关系. 最后,以轨道交通多源PNT传感器(包含GNSS、应答器、5G-R等)为基础,重点探讨轨道交通弹性PNT技术体系及信息融合等关键技术,并指出多源信息深度融合与弹性融合架构是未来轨道交通实现连续无缝定位的重要研究方向.

     

  • 图 1  轨道交通弹性PNT信息源

    Figure 1.  Resilient PNT information source for rail transit

    图 2  轨道交通弹性PNT信息架构

    Figure 2.  Resilient PNT information architecture for rail transit

    图 3  轨道交通弹性PNT基本特征

    Figure 3.  Basic characteristics of resilient PNT for rail transit

    图 4  轨道交通弹性PNT性能

    Figure 4.  Performance of resilient PNT for rail transit

    图 5  轨道交通弹性PNT多源信息融合架构

    Figure 5.  Multi-source information fusion architecture of resilient PNT for rail transit

    表  1  轨道交通弹性PNT应用场景及潜在性能要求

    Table  1.   Application scenarios of resilient PNT for rail transit and potential performance requirements

    应用案例 服务目标/对象 使用
    环境
    定位精度 可靠性/% 定位更新速率/s TTFF
    (time to
    first fix)/s
    定位服务延迟 其他指标 弹性等级
    列车控制 列车定位,速度监督曲线计算,虚拟闭塞,列车追踪间隔预警,列车超速预警 站外/
    室外
    绝对位置精度:水平10 ~ 30 m(概率99%),速度精度:水平5 m/s(概率9%) $\geqslant $99 0.1 <10
    <30 ms
    连续性要求高,可用性(概率95%),可维修性和安全性要求高 4级
    可穿戴设备 旅客服务,工作人员
    管理
    站内/
    车内
    2 m 水平 99 1 ~ 30 10 1 s 低功耗 1级
    1~3 m竖直
    紧急通话 列车工作人员 站外/
    室外
    50 m 水平 95 30 60 s 可信度 3级
    3 m 竖直
    列车位置获取/辅助驾驶 列车管理与调度 站内/
    站外
    1~3 m水平 99 0.1 10 30 ms 连续跟踪/抗干扰 4级
    2.5 m竖直
    防撞/虚拟耦合列车 列车管理与调度 站内/
    站外
    1~3 m水平 99 0.1 10 低延迟 自组网/抗干扰 4级
    2.5 m竖直
    设备巡检自动驾驶 轨道巡检服务 站外 0.1 m水平 99 10 低功耗/抗干扰/信息安全 3级
    0.1 m竖直
    基础设施形变监测 桥梁、边坡等 沿线 0.002 m水平
    0.005 m竖直
    95
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  • 收稿日期:  2024-03-15
  • 修回日期:  2024-07-22
  • 网络出版日期:  2026-01-05

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