测绘通报 ›› 2026, Vol. 0 ›› Issue (2): 180-186.doi: 10.13474/j.cnki.11-2246.2026.0229

• 测绘地理信息技术应用案例 • 上一篇    

耦合机器学习模型的地表沉降预测方法

朱伟刚, 金圣博, 蒋少华   

  1. 长春工程学院勘查与测绘工程学院, 吉林 长春 130021
  • 收稿日期:2025-10-13 发布日期:2026-03-12
  • 作者简介:朱伟刚(1970—),男,硕士,教授,主要研究方向为GNSS测量及其应用。E-mail:kc_zwg@ccit.edu.cn
  • 基金资助:
    吉林省教育厅科研项目(120240037);吉林省发改委科研项目(120230094)

Surface sinking prediction using coupled machine learning models

ZHU Weigang, JIN Shengbo, JIANG Shaohua   

  1. School of Surveying and Mapping Engineering, Changchun Institute of Technology, Changchun 130021, China
  • Received:2025-10-13 Published:2026-03-12

摘要: 地表沉降预测是保障基础设施安全与施工风险管控的重要环节。针对单一预测模型在地表沉降预测中存在的泛化能力不足、误差偏移明显及异常值响应能力弱等问题,本文提出了一种耦合机器学习模型的地表沉降预测方法。以长春某地铁站点沉降监测项目为工程背景,耦合CatBoost、GBDT与AdaBoost机器学习模型进行地表沉降预测。研究结果表明,耦合模型能够有效消除系统性偏移并抑制异常尖峰波动,其决定系数(R2)达0.97,平均绝对误差(MAE)降至0.007 3,均方根误差(RMSE)降至0.009 6,展现出更高的预测精度与更强的泛化能力。本文成果为地铁工程长期变形监测与风险预警提供了技术支撑,也为提升地表沉降预测精度和保障施工安全提供了方法参考。

关键词: 地表沉降, 机器学习, 耦合模型, 沉降预测

Abstract: Surface settlement prediction plays a crucial role in ensuring infrastructure safety and managing construction risks.However,single predictive models often suffer from limited generalization capability,noticeable systematic bias,and poor responsiveness to outliers in surface settlement prediction.This study proposes a coupled machine learning approach for surface settlement prediction.Using settlement monitoring data from a metro station project in Changchun as the engineering background,three machine learning models—CatBoost,GBDT,and AdaBoost—are integrated to predict surface settlement.The results indicate that the coupled model effectively eliminates systematic deviation and suppresses abnormal peak fluctuations.The coefficient of determination (R2)reachs 0.97,while the mean absolute error (MAE)and root mean square error (RMSE)decrease to 0.007 3 and 0.009 6,respectively,demonstrating superior predictive accuracy and stronger generalization capability.The proposed coupled model provides reliable technical support for long-term deformation monitoring and risk early warning in metro projects.It also offers a methodological reference for enhancing the accuracy of surface settlement prediction and ensuring construction safety,with potential applicability to other geotechnical engineering scenarios.

Key words: surface subsidence, machine learning, coupled model, subsidence prediction

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