ALSTNet: Autoencoder fused long‐ and short‐term time‐series network for the prediction of tunnel structure

Bo-wen Du, Haohan Liang, Yuhang Wang, Junchen Ye, X. Tan, Weizhong Chen
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引用次数: 0

Abstract

It is crucial to predict future mechanical behaviors for the prevention of structural disasters. Especially for underground construction, the structural mechanical behaviors are affected by multiple internal and external factors due to the complex conditions. Given that the existing models fail to take into account all the factors and accurate prediction of the multiple time series simultaneously is difficult using these models, this study proposed an improved prediction model through the autoencoder fused long‐ and short‐term time‐series network driven by the mass number of monitoring data. Then, the proposed model was formalized on multiple time series of strain monitoring data. Also, the discussion analysis with a classical baseline and an ablation experiment was conducted to verify the effectiveness of the prediction model. As the results indicate, the proposed model shows obvious superiority in predicting the future mechanical behaviors of structures. As a case study, the presented model was applied to the Nanjing Dinghuaimen tunnel to predict the stain variation on a different time scale in the future.
ALSTNet:用于隧道结构预测的自动编码器融合长短期时间序列网络
预测未来的力学行为对于预防结构性灾害至关重要。尤其是地下建筑,由于条件复杂,结构力学行为受到多种内外因素的影响。鉴于现有模型无法考虑所有因素,且使用这些模型很难同时对多个时间序列进行准确预测,本研究提出了一种改进的预测模型,即在大量监测数据的驱动下,通过自动编码器融合长期和短期时间序列网络进行预测。然后,在应变监测数据的多个时间序列上对所提出的模型进行了形式化。此外,还与经典基线和烧蚀实验进行了讨论分析,以验证预测模型的有效性。结果表明,所提出的模型在预测结构的未来机械行为方面显示出明显的优越性。作为案例研究,所提出的模型被应用于南京定淮门隧道,以预测未来不同时间尺度上的污渍变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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