高速公路施工区域的智能监测与预警技术研究综述
Summary of Intelligent Monitoring and Early Warning Technology for Expressway Construction Area
摘要: 高速公路的新建、维修和养护都会对交通通行产生一定的影响,施工区域的安全管理至关重要。本文总结归纳了当前高速公路施工区的关键技术,并从施工现场、防护设备使用和施工人员动作角度对施工区域不安全行为的识别技术进行了详细分析,接着分析了施工区域智能监测与预警技术,智能监测是在预警分析中最重要的一步。监测具体是指对容易诱发安全事故的问题因素进行实时监控。这些诱导因素主要有自然天气影响、人为主观判断操作失误、机械设备在使用过程中故障等。通过施工现场精准监测与智能分析,及时报警可以规范高速公路施工安全作业,施工人员提供安全保障,降低施工区域安全隐患。
Abstract: The construction, maintenance and maintenance of expressways will have a certain impact on traffic. The safety management of the construction area is crucial. This paper summarizes the key technologies in the current expressway construction area, and analyzes in detail the identification technology of unsafe behaviors in the construction area from the perspective of the construction site, the use of protective equipment and the actions of construction personnel. Then it analyzes the intelligent monitoring and early warning technology in the construction area. Intelligent monitoring is the most important step in the early warning analysis. Monitoring specifically refers to real-time monitoring of the problem factors that are easy to cause safety accidents. These inducing factors mainly include the influence of natural weather, human subjective judgment and operation errors, mechanical equipment failures in the use process, etc. Through accurate monitoring and intelligent analysis on the construction site, timely alarm can standardize the safe operation of expressway construction. It also provides safety guarantee for construction personnel and reduces potential safety hazards in the construction area.
文章引用:杨柳, 肖欠华, 高建, 孙业发. 高速公路施工区域的智能监测与预警技术研究综述[J]. 交通技术, 2023, 12(4): 268-276. https://doi.org/10.12677/OJTT.2023.124030

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