岩土力学 ›› 2024, Vol. 45 ›› Issue (8): 2474-2482.doi: 10.16285/j.rsm.2023.1426

• 岩土工程研究 • 上一篇    下一篇

基于Self-CGRU模型的地铁基坑周边地表沉降预测

张文松1, 2, 3,贾磊1, 2, 3,姚荣涵4,孙立5   

  1. 1. 河北地质大学 城市地质与工程学院,河北 石家庄 050031; 2. 河北地质大学 河北省地下人工环境智慧开发与管控技术创新中心,河北 石家庄 050031; 3. 河北地质大学 京津冀城市群地下空间智能探测与装备重点实验室,河北 石家庄 050031; 4. 山东理工大学 交通与车辆学院,山东 淄博 255049;5. 大连理工大学 建设工程学部,辽宁 大连 116024
  • 收稿日期:2023-09-20 接受日期:2023-12-08 出版日期:2024-08-10 发布日期:2024-08-12
  • 通讯作者: 贾磊,男,1978年生,博士,教授,主要从事岩土工程领域的研究。E-mail:jialei1978@126.com
  • 作者简介:张文松,男,1994年生,博士,讲师,主要从事沉降预测、土木和交通大数据挖掘与分析等方面的研究。 E-mail:zhangwensong2023@163.com
  • 基金资助:
    河北省教育厅科学研究项目(No. BJK2024090);国家自然科学基金(No. 52172314)。

Prediction of surface settlement around subway foundation pit based on Self-CGRU model

ZHANG Wen-song1, 2, 3, JIA Lei1, 2, 3, YAO Rong-han4, SUN Li5   

  1. 1. School of Urban Geology and Engineering, Hebei GEO University, Shijiazhuang, Hebei 050031, China; 2. Hebei Technology Innovation Center for Intelligent Development and Control of Underground Built Environment, Hebei GEO University, Shijiazhuang, Hebei 050031, China; 3. Key Laboratory of Intelligent Detection and Equipment for Underground Space of Beijing-Tianjin-Hebei Urban Agglomeration, Hebei GEO University, Shijiazhuang, Hebei 050031, China; 4. School of Transportation and Vehicle Engineering, Shandong University of Technology, Zibo, Shandong 255049, China; 5. Faculty of Infrastructure Engineering, Dalian University of Technology, Dalian, Liaoning 116024, China
  • Received:2023-09-20 Accepted:2023-12-08 Online:2024-08-10 Published:2024-08-12
  • Supported by:
    This work was supported by the Science Research Project of Hebei Education Department (BJK2024090) and the National Natural Science Foundation of China (52172314).

摘要: 为提升地铁基坑开挖引发的地表沉降的预测精度,基于自注意力机制和深度学习提出一种能捕捉沉降数据时空特性的深度注意力组合预测模型(self-attention convolutional gated recurrent units,Self-CGRU)。Self-CGRU模型由空间模块和时间模块搭建。空间模块中,选择卷积神经网络捕捉相邻监测点沉降数据的空间相关性;时间模块中,使用门控循环单元神经网络分析沉降数据的时间规律,并引入自注意力机制捕获沉降数据内部的自相关性,进而得到沉降预测值。选取中国深圳市地铁基坑周边地表沉降数据验证Self-CGRU模型,结果表明:相比现有模型,Self-CGRU模型预测性能更好,使预测精度提高了17.48%~29.17%。研究成果可为地铁基坑周边地表沉降预测提供一种准确且稳定的新模型。

关键词: 沉降预测, 组合模型, 时空特性, 深度学习, 自注意力机制

Abstract: To improve the prediction accuracy of surface settlement around subway foundation pit, a deep attention hybrid prediction model, termed self-Attention convolutional gated recurrent units (Self-CGRU), is proposed based on the self-attention mechanism and deep learning. The Self-CGRU model can capture the spatio-temporal characteristics of settlement data. The Self-CGRU model is constructed by integrating a spatial module and a temporal module. In the spatial module, the convolutional neural network is selected to capture the spatial correlations of settlement data obtained from the adjacent monitoring points. In the temporal module, the gated recurrent units neural network is used to analyze the temporal rules of settlement data. In addition, the self-attention mechanism is introduced into the Self-CGRU model to capture the autocorrelation in settlement data. Then, the predicted values of settlement can be obtained. Surface settlement data around the subway foundation pit in Shenzhen, China are selected to verify the performance of Self-CGRU model. The results indicate that the Self-CGRU model outperforms existing models, achieving a prediction accuracy improvement ranging from 17.48% to 29.17% compared to these models. The research results can provide an accurate and stable new model for the prediction of surface settlement around subway foundation pit.

Key words: settlement prediction, hybrid model, spatio-temporal characteristics, deep learning, self-attention mechanism

中图分类号: TU 478
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