煤矿安全2025,Vol.56Issue(6):144-154,11.DOI:10.13347/j.cnki.mkaq.20240525
融合DS-InSAR与THPF-LSTM的关闭矿井地表形变监测及预测
Fusion of DS-InSAR and THPF-LSTM for monitoring and predicting surface deformation in closed mines
摘要
Abstract
After the closure of a mine,the overlying rock layer and the ground surface will deform again,this affects the safe opera-tion of buildings(structures).Due to the lack of supervision of mine closure,the spatial and temporal evolution of surface deforma-tion and prediction and warning models are not well studied.To this end,we proposed a prediction model for surface deformation of closed mines combining distributed scatter interferometric synthetic aperture radar(DS-InSAR),temporal high pass filtering(THPF),and a long short term memory network(LSTM).Taking the 98-view Sentinel-1A uptrack image as the data source,firstly,the DS-In-SAR method combined with persistent scatterer(PS)and DS points was used to obtain the time-series surface subsidence informa-tion of the closed mines in western Xuzhou for the period from November 2019 to December 2022;then the THPF was used to de-compose the original subsidence sequences to obtain the high frequency and low frequency,and then,LSTM was used to complete the deformation prediction of the high and low frequency sub-sequence,and the predicted values of the high and low frequency sub-sequence were superimposed to obtain the final prediction result.The results show that:the density of DS-InSAR monitoring points is uniformly distributed,and the coefficient of determination between the measured deformation and the monitoring results reached 0.95;compared with the LSTM model,the maximum RMSE(root mean square error)of the THPF-LSTM model in the prediction points is 3.0,and the mean absolute error(MAE)is 2.4,and the maximum Adjusted R-Square was 0.9,which is better than 4.5,3.9,and 0.6 of the traditional LSTM model,and the comprehensive prediction accuracy of the model is improved by more than 20%,and it can accurately reflect the trend and volatility of the surface deformation of the closed mine,and can effectively improve the predic-tion accuracy of mine settlement in the short term.The method of this paper realizes the integrated analysis of monitoring and predic-tion of surface deformation in closed mines.关键词
地表形变预测/关闭矿井/DS-InSAR/LSTM神经网络/时间域高通滤波Key words
surface deformation prediction/mine closure/DS-InSAR/LSTM neural network/temporal high pass filtering分类
矿业与冶金引用本文复制引用
张建阳,范洪冬,朱向阳,孙明虎..融合DS-InSAR与THPF-LSTM的关闭矿井地表形变监测及预测[J].煤矿安全,2025,56(6):144-154,11.基金项目
国家自然科学基金资助项目(42274054,51774270) (42274054,51774270)
国家重点研发计划资助项目(2022YFE0102600,2017YFE0107100) (2022YFE0102600,2017YFE0107100)