Analysis of Warning Threshold of Tunnel Monitoring and Measurement Based on Probability Statistics

Journal: Architecture Engineering and Science DOI: 10.32629/aes.v2i3.510

Jianbing Qian

China Design Group Co. Ltd., Nanjing 210001, Jiangsu, China

Abstract

In the process of tunnel construction, data on deformation monitoring magnifies the direct reflection of the stability of tunnel structure, and the setting of early warning value is more related to the safety of project construction. In this paper, a tunnel project is taken as an example, and based on a large number of previous engineering practices and the statistical characteristics of monitoring data, the probability statistics method is used to obtain the warning threshold, which is used to give suggestions for the construction of the tunnel project and provide technical reference for the monitoring and warning management of similar tunnel construction.

Keywords

statistical analysis, tunnel, monitoring and measurement, warning threshold

References

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Copyright © 2021 Jianbing Qian

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