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金属矿山 ›› 2026, Vol. 55 ›› Issue (2): 259-268.

• 地质与测量 • 上一篇    下一篇

基于SBAS-InSAR 与PSO-LSTM 的露天矿地表形变预测方法#br#

郑俊析1,2 杨 飞1,2 王浩宇1,2 杨志勇2,3 李 军1,2 胡桂林2,3   

  1. 1. 中国矿业大学(北京)地球科学与测绘工程学院,北京 100083;2. 能源时空大数据智能分析与应用实验室,
    新疆 昌吉 831100;3. 新疆天池能源有限责任公司,新疆 昌吉 831100
  • 出版日期:2026-02-15 发布日期:2026-03-04
  • 通讯作者: 杨 飞(1991—),男,副教授,博士,博士研究生导师。
  • 作者简介:郑俊析(2002—),男,硕士研究生。
  • 基金资助:
    2024 年度新疆维吾尔自治区重大科技专项(编号:2024A0003);丝绸之路经济带创新驱动发展试验区、乌昌石国家自主创新示范区科
    技发展计划项目(编号:2023LQY02);镇海区“十四五”技术攻关重大专项计划项目(编号:2024006);国家自然科学基金项目(编号:
    42271480);中央高校基本科研业务费专项(编号:2024ZKPYDC02,2023ZKPYDC10)。

Surface Deformation Prediction Method for Open-pit Mines Based on SBAS-InSAR and PSO-LSTM

ZHENG Junxi1,2 YANG Fei1,2 WANG Haoyu1,2 YANG Zhiyong2,3 LI Jun1,2 HU Guilin2,3   

  1. 1. College of Geoscience and Surveying Engineering,China University of Mining and Technology-Beijing,Beijing 100083,China;
    2. Laboratory of Intelligent Analysis and Application of Energy Spatio-temporal Big Data,Changji 831100;
    3. Xinjiang Tianchi Energy Co. ,Ltd. ,Changji 831100,China
  • Online:2026-02-15 Published:2026-03-04

摘要: 对露天矿地表形变的特征和趋势进行分析和预测,是保障矿山绿色安全生产的重要环节。面向特大型
露天矿,以新疆将军戈壁二号露天矿为例,基于SBAS-InSAR 方法和粒子群优化算法的长短期记忆网络(PSO-LSTM)
模型,提出了一种露天矿地表形变分析与预测方法。该方法首先通过SBAS-InSAR 方法计算了该矿地表形变,在此基
础上针对当前水准测量、GNSS 等形变监测方式在特大型露天矿存在的效率较低、空间覆盖范围有限等问题,采用粒
子群优化算法(Genetic Algorithm Optimization,PSO) 优化长短期记忆模型(Long Short-term Memory,LSTM),构建了
PSO-LSTM 模型进行形变预测。研究表明:① 矿区整体平均形变速率为-2. 832 mm/ a,整体呈下沉趋势,其中内排土
场地表形变速率明显高于其他区域;空间上,内排土场、东排土场分布较为均匀;时间上,东排土场和北排土场形变速
率较低,速率大小较为恒定。② 通过剖面线可以发现,北排土场空间形变分布呈现非均匀性,东排土场则表现出相对
均衡的形变特征。采用均方根误差(Root Mean Square Error,RMSE)和平均绝对误差(Mean Absolute Error,MAE)、平均
绝对百分比误差(Mean Absolute Percentage Error,MAPE)和决定系数(R2)作为预测精度的评价指标。结果显示:相对
于支持向量回归模型(Support Vector Regression,SVR)和LSTM 模型,PSO-LSTM 模型的RMSE 和MAE 至少降低了
16%和30%,PSO-LSTM 模型稳定性更好、偏差更小,反映出该模型能够有效捕捉采区地表形变的波动趋势,并且具有
一定的稳定性。研究成果为露天矿地表形变分析与预警提供了新思路,对于特大型露天矿地表形变监测与预测有一
定的参考意义。

关键词: 露天矿 SBAS-InSAR 方法 形变预测 PSO-LSTM 模型 粒子群优化算法 长短期记忆模型

Abstract: Analyzing and predicting the characteristics and trends of the surface deformation of open-pit mines is an important
part of ensuring the safe and green operation of mines. For large-scale open-pit mines,taking the Junning Gobi No. 2
open-pit mine in Xinjiang as an example,based on the SBAS-InSAR method and the particle swarm optimization algorithm′s
long short-term memory network (PSO-LSTM) model,a method for analyzing and predicting the surface deformation of openpit
mines is proposed. This method first calculates the surface deformation of the mine using the SBAS-InSAR method,and
then,in response to the problems such as low efficiency and limited spatial coverage of current deformation monitoring methods
like leveling measurement and GNSS in large-scale open-pit mines,the particle swarm optimization algorithm (PSO) was used
to optimize the long short-term memory model (LSTM),and a PSO-LSTM model was constructed for deformation prediction.
The research shows that:① The overall average deformation rate of the mining area is -2. 832 mm/ a,showing a downward
trend. The surface deformation rate of the inner waste dump area is significantly higher than other areas;spatially,the inner
waste dump area and the east waste dump area are distributed relatively evenly;temporally,the deformation rates of the east
and north waste dump areas are lower,and the rates are relatively constant. ② Through the profile lines,it can be found that
the spatial deformation distribution of the north waste dump area shows non-uniformity,while the east waste dump area exhibits
relatively balanced deformation characteristics. The Root Mean Square Error (RMSE),Mean Absolute Error (MAE),Mean
Absolute Percentage Error (MAPE) and coefficient of determination (R2) are adopted as the evaluation indicators for the prediction
accuracy. The results show that compared with support vector regression (SVR) model and LSTM model,the RMSE and
MAE of the PSO-LSTM model are at least reduced by 16% and 30%,respectively. The PSO-LSTM model has better stability
and smaller deviation,reflecting that this model can effectively capture the fluctuation trend of the surface deformation of the
mining area and has certain stability. The research results provide new ideas for the analysis and early warning of surface deformation
of open-pit mines and have certain reference significance for the monitoring and prediction of surface deformation of
large-scale open-pit mines.

Key words: open-pit mine,SBAS-InSAR method,deformation prediction,PSO-LSTM model,genetic algorithm optimization,
long short-term memory

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