Time-series monitoring and prediction of tailings dams through neural network-based deep infusion of InSAR and GNSS data
LYU Linwei1,2(), WANG Rui1,2(), XU Lintao3, HUANG Shiqiao1, HUANG Shuaishuai4, LIN Min5, HE Yibo6, HE Qian7, YAN Huineng1,2, CHEN Shangbo8
1. College of Resources and Civil Engineering,Gannan University of Science and Technology,Ganzhou 341000,China 2. Ganzhou Key Laboratory of Remote Sensing for Resources and Environment,Ganzhou 341000,China 3. CNPC Bohai Oilfield Equipment Manufacturing Co.,Ltd.,Tianjin 300280,China 4. School of Civil and Surveying Engineering,Jiangxi University of Science and Technology,Ganzhou 341000,China 5. Anhui Longqiao Mining Co.,Ltd.,Hefei 230000,China 6. Shanxi Energy Institute,Jinzhong 030600,China 7. Hubei Vocational College of Land and Resources,Wuhan 430090,China 8. Jiangxi Provincial Emergency Management Science Research Institute,Nanchang 330000,China
The time-series monitoring and prediction of tailings dam stability have always been a major concern in China’s mine safety research. Focusing on a tailings dam in Anhui province,this study obtained 26 periods of longitudinal deformation data from six characteristic monitoring points on the dam surface,using InSAR and GNSS technologies. Based on the data,a least-squares adjustment model with restricted parameters was established. Combined with the initial three-dimensional coordinates of the monitoring points as polynomial correction parameters,the InSAR and GNSS data were fused to improve the data accuracy. Then,time-series prediction of deformation data was conducted for the monitoring points using the back propagation (BP) neural network,thus obtaining their future deformation data. Experiments were carried out to compute and compare the deformation data and corresponding root mean square error (RMSE) of each period before and after fusion,wherein the fused GNSS and InSAR data were evaluated with the root mean square error (RMSE) as the accuracy standard. The results showed that the post-fusion RMSE decreased by up to 70.61% and by at least 4.34% (average:25.91%),compared to pre-fusion data. Furthermore,the neural network model was used to repeatedly train the fused InSAR data from periods 1 to 22,with periods 23 to 26 serving as the test set,ultimately outputting the data of each point for periods 23 to 26. Compared to the GNSS data,the RMSE of the outputs were less than 1.5 mm. These results can provide reliable technical support for the time-series monitoring and prediction of tailings dam stability.
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LYU Linwei, WANG Rui, XU Lintao, HUANG Shiqiao, HUANG Shuaishuai, LIN Min, HE Yibo, HE Qian, YAN Huineng, CHEN Shangbo. Time-series monitoring and prediction of tailings dams through neural network-based deep infusion of InSAR and GNSS data. Remote Sensing for Natural Resources, 2025, 37(5): 162-171.
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