ISSN 2096-4498

   CN 44-1745/U

二维码

Tunnel Construction ›› 2023, Vol. 43 ›› Issue (8): 1425-1437.DOI: 10.3973/j.issn.2096-4498.2023.08.017

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Development and Application of Big Data Platform for Tunnel Structure Health Management

WANG Hua1, 2, 3, LU Yaobang4, FENG Guofeng1, 2, 3, WANG Baiquan1, 2, 3LIN Chungang1, 2, 3, YAN He1, 2, 3   

  1. (1.China Railway Tunnel Group Co.,Ltd.,Guangzhou 511458,Guangdong,China;2.Guangdong Provincial Key Laboratory of Intelligent Monitoring and Maintenance of Tunnel Structure, Guangzhou 511458,Guangdong,China;3.China Railway Tunnel Consultants Co.,Ltd.,Guangzhou 511458,Guangdong,China;4.CREC CloudNet Information Technology Co.,Ltd.,Beijing 100160,China)

  • Online:2023-08-20 Published:2023-09-11

Abstract: To effectively improve tunnel management and maintenance efficiency, the internal and apparent tunnel diseases are summarized and a tunnel structure health management big data platform is established using Spring Boot with MyBatisPlus architecture and Redis and MySQL distributed deployment. Additionally, the field application is conducted through equipment management, disease management, and big data analysis. Consequently, the results reveal that (1) the big data platform for tunnel structural health management can meet the functional requirements of common disease data management and display, and the interface is simple and friendly, realizing the scientific decisionmaking of tunnel diseases; (2) based on the neural network model, the platform achieves the intelligent recognition of apparent tunnel disease and reduces the dependence on manual disease recognition; and (3) the platform supports multidimensional queries of disease information via personal computers and mobile terminals, thereby solving the problem of delayed and inconvenient access to tunnel disease information. 〖BP(〗Thus, this platform, which has a friendly interface and convenient operation, can provide realtime data support for professional personnel to evaluate the health status of tunnels, thereby making it worth popularizing.

Key words: railway tunnel, disease detection, big data platform; disease forecast