College of Civil Engineering and Architecture, Zhejiang University, Hangzhou, Zhejiang, China.
Advanced Potential Talent Center, Hangzhou Urban Construction & Investment Group Co., Ltd., Hangzhou, Zhejiang, China.
PLoS One. 2023 Nov 20;18(11):e0294501. doi: 10.1371/journal.pone.0294501. eCollection 2023.
Deep foundation pit settlement prediction based on machine learning is widely used for ensuring the safety of construction, but previous studies are limited to not fully considering the spatial correlation between monitoring points. This paper proposes a transformer-based deep learning method that considers both the spatial and temporal correlations among excavation monitoring points. The proposed method creates a dataset that collects all excavation monitoring points into a vector to consider all spatial correlations among monitoring points. The deep learning method is based on the transformer, which can handle the temporal correlations and spatial correlations. To verify the model's accuracy, it was compared with an LSTM network and an RNN-LSTM hybrid model that only considers temporal correlations without considering spatial correlations, and quantitatively compared with previous research results. Experimental results show that the proposed method can predict excavation deformations more accurately. The main conclusions are that the spatial correlation and the transformer-based method are significant factors in excavation deformation prediction, leading to more accurate prediction results.
基于机器学习的深基坑沉降预测被广泛应用于确保施工安全,但以往的研究仅限于没有充分考虑监测点之间的空间相关性。本文提出了一种基于变压器的深度学习方法,该方法同时考虑了开挖监测点之间的时空相关性。所提出的方法创建了一个数据集,将所有的开挖监测点都收集到一个向量中,以考虑监测点之间的所有空间相关性。该深度学习方法基于变压器,可以处理时间相关性和空间相关性。为了验证模型的准确性,将其与仅考虑时间相关性而不考虑空间相关性的 LSTM 网络和 RNN-LSTM 混合模型进行了比较,并与以前的研究结果进行了定量比较。实验结果表明,所提出的方法可以更准确地预测开挖变形。主要结论是,空间相关性和基于变压器的方法是开挖变形预测的重要因素,从而可以得到更准确的预测结果。