Transformer-CNN prediction model of high and steep slope deformation based on Beidou detection data
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1.College of Automation, Chongqing University, Chongqing 400044, P. R. China;2.Chongqing West Water Resources Development Company Limited, Chongqing 400000, P. R. China;3.College of Design, Sichuan Fine Arts Institute, Chongqing 401331, P. R. China

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Supported by Chongqing Water Conservancy Science and Technology Project (CQSLK-2023028) and Municipal Education Commission Science and Technology Research Plan(KJZD-K202500303).

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    Abstract:

    High and steep slopes are common during the construction of large-scale projects, and their deformation often leads to geological hazards, posing significant threats to life and property. Efficiently collecting displacement data and developing an accurate predictive model are therefore essential. This study proposes a Transformer-CNN hybrid model that integrates convolutional layers and residual structures into the Transformer architecture. The optimized model is applied to displacement data obtained from the Beidou satellite system in a large water conservancy project in Chongqing. Experimental results indicate that the Transformer-CNN model achieves lower MAE, MSE, and RMSE values compared to single-model approaches, demonstrating superior prediction accuracy. These findings suggest that the proposed model offers a practical solution for predicting and analyzing slope deformation in similar engineering projects.

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伊廷婧汶,黄才生,覃勇,宋治江,贺小含,桂镜骑,王楷.基于北斗监测数据的高陡边坡变形Transformer-CNN预测模型[J].重庆大学学报,2025,48(10):81~94

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  • Received:September 11,2024
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  • Online: October 20,2025
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