4.6 Article

3D Visualization Monitoring and Early Warning System of a Tailings Dam-Gold Copper Mine Tailings Dam in Zijinshan, Fujian, China

期刊

FRONTIERS IN EARTH SCIENCE
卷 10, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/feart.2022.800924

关键词

tailings dam; 3D geographic information system; cloud-side collaborative technique; monitoring and early warning system; 3D visualization

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This article introduces a 3D tailings dam visualization early warning system based on GIS, ARIMA, and 3S technology. The system can predict the deformation of the tailings dam and changes in the phreatic line. It allows for data management, visualization, and disaster prediction and early warning for key monitoring points such as rainfall, infiltration line, and tailings dam deformation. The system is highly practical and provides intuitive results.
A 3D tailings dam visualization early warning system was developed based on GIS (geographic information system) combining ARIMA (autoregressive integrated moving average model) and 3S (RS, GIS, GPS) technology for prediction of phreatic line changes and tailing dam deformation. It was applied for monitoring and early warning for the gold-copper tailing dam in Zijinshan Dadongbei tailing pond. The system consists of equipment management, data management, prediction, monitoring and early warning, and 3D visualization modules. It is able to do data management, visualization and disaster prediction, and early warning based on 79 monitoring points of rainfall, infiltration line, and deformation of the tailing dam in the Zijinshan mine. The design and application of the system reflect its features of rich functionality, high practicality, intuitive effect, and high reference value. The system solves the problems of low visualization of monitoring data, poor management of multiple data, and feasible prediction and early warning of point-surface combination. It realizes high-precision prediction of key factors and real-time warning of disaster.

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