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金属矿山 ›› 2026, Vol. 55 ›› Issue (4): 245-253.

• 安全与环保 • 上一篇    

时序InSAR 与VMD-ATL 模型结合的滑坡形变预测方法

王冉旋1 韩贻明1 皇甫迎春2 叶尔达·叶尔丁达拉1 杨 蓉1   

  1. 1. 国家能源集团新疆吉林台水电开发有限公司,新疆 伊犁 835100;2. 中国矿业大学环境与测绘学院,江苏 徐州 221116
  • 出版日期:2026-04-15 发布日期:2026-05-09
  • 作者简介:王冉旋(1986—),男,高级工程师。
  • 基金资助:
    国家自然科学基金项目(编号:4227405);国家能源集团科技创新项目资助(编号:GDDL-23-35)。

Landslide Deformation Prediction Method Combining Timing InSAR and VMD-ATL Model

WANG Ranxuan1 HAN Yiming1 HUANGFU Yingchun2 YEERDINGDALA Yeerda1 YANG Rong1   

  1. 1. Xinjiang Jilintai Hydropower Development Co. ,Ltd. ,CHN ENERGY,Yili 835100,China;
    2. School of Environment and Spatial Informatics,China University of Mining and Technology,Xuzhou 221116,China
  • Online:2026-04-15 Published:2026-05-09

摘要: 合成孔径雷达干涉测量(InSAR)时序形变信号中通常包含趋势性形变与随机性波动,后者作为噪声成
分易干扰模型对关键特征的提取,影响滑坡预测的准确性。为此,提出了一种基于时序InSAR 数据的形变分解预测
框架,通过变分模态分解(VMD)方法将原始形变信号分解成趋势项与随机项;然后分别采用自回归移动平均模型
(ARMA)与改进的Transformer-LSTM 混合模型进行分项预测并合成,获取最终形变预测结果。经新疆某水库滑坡形
变预测试验表明,该方法的预测性能优于长短时记忆(LSTM)等传统模型,拟合优度(R2 )均高于0. 95;代表性测点的
均方根误差(RMSE)、平均绝对误差(MAE)显著降低。研究揭示,改进的Transformer-LSTM 模型可有效捕捉随机项中
突发形变波动特征,结合ARMA 模型在平稳时间序列建模中的优势,可有效提高复杂滑坡形变序列的预测性能,对提
升库岸滑坡灾害的风险评估与防控具有重要的参考价值。

关键词: 库岸滑坡 , 时序InSAR , VMD , Transformer-LSTM , 滑坡形变预测

Abstract: The time series deformation signal of synthetic aperture radar interferometry (InSAR) usually contains trend
deformation and random fluctuation. As a noise component,the latter is easy to interfere with the extraction of key features by
the model,which affects the accuracy of landslide prediction. Therefore,a deformation decomposition prediction framework
based on time-series InSAR data is proposed. The original deformation signal is decomposed into trend term and random term
by variational mode decomposition (VMD) method. Then,the autoregressive moving average model (ARMA) and the improved
Transformer-LSTM hybrid model are used to predict and synthesize the final deformation prediction results. The landslide
deformation prediction test of a reservoir in Xinjiang shows that the prediction performance of this method is better than
that of traditional models such as long short-term memory(LSTM),and the goodness of fit (R2 )is higher than 0. 95. The root
mean square error (RMSE)and mean absolute error (MAE)of representative points were significantly reduced. The study reveals
that the improved Transformer-LSTM model can effectively capture the characteristics of sudden deformation fluctuations
in random terms. Combined with the advantages of ARMA model in stationary time series modeling,it can effectively improve
the prediction performance of complex landslide deformation sequences,and has important reference value for improving the
risk assessment and prevention and control of reservoir bank landslide disasters.

Key words: reservoir bank landslide,timing InSAR,VMD,Transformer-LSTM,landslide deformation prediction

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