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铁路运营隧道检测技术综述

王石磊 高岩 齐法琳 柯在田 李红艳 雷洋 彭湛

王石磊, 高岩, 齐法琳, 柯在田, 李红艳, 雷洋, 彭湛. 铁路运营隧道检测技术综述[J]. 交通运输工程学报, 2020, 20(5): 41-57. doi: 10.19818/j.cnki.1671-1637.2020.05.003
引用本文: 王石磊, 高岩, 齐法琳, 柯在田, 李红艳, 雷洋, 彭湛. 铁路运营隧道检测技术综述[J]. 交通运输工程学报, 2020, 20(5): 41-57. doi: 10.19818/j.cnki.1671-1637.2020.05.003
WANG Shi-lei, GAO Yan, QI Fa-lin, KE Zai-tian, LI Hong-yan, LEI Yang, PENG Zhan. Review on inspection technology of railway operation tunnels[J]. Journal of Traffic and Transportation Engineering, 2020, 20(5): 41-57. doi: 10.19818/j.cnki.1671-1637.2020.05.003
Citation: WANG Shi-lei, GAO Yan, QI Fa-lin, KE Zai-tian, LI Hong-yan, LEI Yang, PENG Zhan. Review on inspection technology of railway operation tunnels[J]. Journal of Traffic and Transportation Engineering, 2020, 20(5): 41-57. doi: 10.19818/j.cnki.1671-1637.2020.05.003

铁路运营隧道检测技术综述

doi: 10.19818/j.cnki.1671-1637.2020.05.003
基金项目: 

国家自然科学基金项目 U1434211

中国铁路总公司科技研究开发计划项目 P2018G002

中国工程院咨询研究项目 2019-ZD-19

详细信息
    作者简介:

    王石磊(1985-), 男, 山东定陶人, 中国铁道科学研究院集团有限公司高级工程师, 工学博士, 从事桥梁与隧道工程检测技术研究

  • 中图分类号: U456

Review on inspection technology of railway operation tunnels

Funds: 

National Natural Science Foundation of China U1434211

Science and Technology Research and Development Project of China Railway Corporation P2018G002

Consulting Research Project of Chinese Academy of Engineering 2019-ZD-19

More Information
    Author Bio:

    WANG Shi-lei(1985-), male, senior engineer, PhD, thilei@qq.com

  • 摘要: 为了解铁路运营隧道检测技术研究与应用情况, 梳理了隧道病害特点与检测方法, 从表观状态、内部状态、几何形态、高精度地面移动检测机器人和数据信息化5个方面, 分析了国内外检测技术现状, 探讨了检测技术体系与发展方向。分析结果表明: 表观状态检测主要有相机摄像和激光扫描技术, 相机摄像系统适用于车载平台, 检测速度达80 km·h-1, 激光扫描系统结构精巧, 检测速度约为5 km·h-1; 图像处理、计算机视觉是表观病害识别的2种技术, 拓展设计病害特征、提高识别效率、降低非病害因素干扰是图像处理技术进一步发展方向, 计算机视觉推广关键在于构建行业级病害样本库; 地质雷达是开展内部状态检测的关键技术, 地耦型雷达速度约为10 km·h-1, 空耦型雷达速度达80 km·h-1, 空耦型雷达检测系统关键在于优化天线结构、信号增强、抑制电气化设施和机械系统振动干扰, 地质雷达、红外热成像、超声层析成像、激光缺陷检测法等检测技术在探测范围、精度、效率等方面具有互补性, 可构成多技术综合运用策略; 几何形态检测主要有激光扫描、激光摄像、惯性测量技术, 激光扫描测量精度高, 速度约为10 km·h-1, 激光摄像速度达60 km·h-1, 提高激光摄像测量精度关键在于系统标定与振动补偿, 可基于惯性测量深化研究开展仰拱上拱变形检测; 发展和推广高精度地面移动检测机器人、检测数据信息化是与隧道规模相适应、状态精准管理相匹配的保障措施; 检测技术体系建议由“车载式快速综合检测+原位与地面移动精确检测+数据信息化平台”3部分组成, 未来发展方向应集中在空耦型雷达快速检测、复合变形快速精确测量、高精度地面移动检测、病害智能识别及多源数据融合分析等方面。

     

  • 图  1  拱顶空洞

    Figure  1.  Vault void

    图  2  衬砌开裂

    Figure  2.  Lining cracking

    图  3  衬砌剥落

    Figure  3.  Lining spalling

    图  4  衬砌表观状态检测原理

    Figure  4.  Inspection principle of lining exterior state

    图  5  基于红外热像仪技术的隧道检查车

    Figure  5.  Tunnel inspection vehicle based on thermal infrared camera technology

    图  6  MIMM-R隧道检测车

    Figure  6.  MIMM-R tunnel inspection vehicle

    图  7  TS4型隧道检查装置

    Figure  7.  TS4 tunnel inspection equipment

    图  8  裂纹图像不同照度下的灰度分布

    Figure  8.  Grey level distributions for different illumination intensities of crack image

    图  9  十字形模板及裂缝种子连接

    Figure  9.  Cross-shaped template and link of crack seeds

    图  10  衬砌病害数字图像处理流程

    Figure  10.  Flow of lining disease digital image processing

    图  11  基于滑动窗口的CNN裂缝检测流程

    Figure  11.  Flow for cracks inspection by CNN based sliding window

    图  12  地质雷达检测原理

    Figure  12.  Inspection principle of ground penetrating radar

    图  13  地耦型雷达蝴蝶结形天线偶极子

    Figure  13.  Bow antenna dipole of ground-coupled radar

    图  14  JR东日本地质雷达隧道检测车

    Figure  14.  Tunnel inspection vehicle with ground penetrating radar of JR East Japan

    图  15  地质雷达铁路隧道检查车

    Figure  15.  Railway tunnel inspection vehicle with ground penetrating radar

    图  16  MIMM-R空耦型雷达天线

    Figure  16.  Air-coupled radar antenna of MIMM-R

    图  17  喇叭型天线构造

    Figure  17.  Structure of horn antenna

    图  18  超声层析成像检测原理

    Figure  18.  Inspection principle of ultrasonic tomography

    图  19  激光冲击法隧道衬砌内部缺陷检测

    Figure  19.  Inspection of tunnel lining internal defects by laser impact method

    图  20  限界检测软件

    Figure  20.  Gauge inspection software

    图  21  GRP5000隧道检测装备

    Figure  21.  GRP5000 tunnel inspection equipment

    图  22  激光摄像式检测原理

    Figure  22.  Principle of laser photography inspection

    图  23  多摄像机视觉测量原理与结构光视觉系统

    Figure  23.  Vision measurement principle of multi-camera and structured-light vision system

    图  24  基于光纤陀螺的变形检测原理

    Figure  24.  Principle of deformation inspection based on FOG

    图  25  小型移动式隧道检测设备

    Figure  25.  Small mobile tunnel inspection equipment

    图  26  隧道检查机器人

    Figure  26.  Tunnel inspection robot

    图  27  隧道检测信息化系统

    Figure  27.  Tunnel inspection informatization system

    图  28  铁路运营隧道检测技术体系布局

    Figure  28.  Arrangement of inspection technology framework of railway operation tunnel

    表  1  隧道缺陷病害检测方法

    Table  1.   Inspection methods of tunnel defects and diseases

    部位 类别 检测项目 项目属性 原位检测 移动检测
    拱墙衬砌 缺陷 厚度 内部状态 钻芯法、冲击回波法 地质雷达
    背后空洞或不密实 敲击、冲击回波法 地质雷达
    混凝土强度 钻芯法、回弹法
    病害 变形或移动 几何形态 全站仪 激光扫描激光摄像
    开裂 表观状态 目视、声波法 激光扫描线阵相机
    渗漏水 目视 激光扫描线阵相机红外成像
    压溃剥落 目视 激光扫描线阵相机
    隧底结构 缺陷 隧底不密实或空洞 内部状态 瑞雷波法高密度电法
    仰拱或填充层厚度 地质雷达
    病害 道床裂损 表观状态 声波法
    仰拱上拱 几何形态 水准仪 惯性测量
    仰拱或铺底裂损 内部状态 瑞雷波法高密度电法
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