预测固结沉降的新型lstm -变压器混合模型

IF 5.7 1区 工程技术 Q1 ENGINEERING, GEOLOGICAL
Seongho Hong, Taek-Kyu Chung, Byeong-Soo Yoo, Sung-Ryul Kim
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引用次数: 0

摘要

本研究利用先进的深度学习算法来预测深软粘土沉积物的固结沉降,并特别关注港口设施的施工设计阶段。引入了序列长短期记忆(LSTM)-变压器(SLT)和并行LSTM-变压器(PLT)两种创新的混合模型,通过结合应用预压场地的岩土和施工信息,生成准确的时间沉降预测。这些模型是使用来自韩国釜山新港研究地点的数据集开发和测试的。该数据集通过三维插值构建,提供了详细而准确的地下条件表示。进行了一个案例研究,以评估该模型在实际场景中的性能。将该模型与传统方法(包括Hansbo方法和基本变压器模型)的精度进行了比较。结果表明,该模型的预测精度高于传统方法。此外,参数化研究强调了该模型在捕捉关键因素(如阶梯加载期、最大填充高度和粘土层厚度)影响方面的有效性。在设计阶段,SLT和PLT模型显示出显著的提高沉降预测精度的潜力。这种准确性的提高有助于在涉及软沉积物的项目中进行规划并提高成本效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Innovative LSTM-transformer hybrid models for predicting consolidation settlement

This study utilized advanced deep learning algorithms to predict consolidation settlement in deep soft clay deposits, with a specific focus on the construction design phase of port facilities. Two innovative hybrid models, namely, the sequence long short-term memory (LSTM)-transformer (SLT) and the parallel LSTM-transformer (PLT) models, were introduced to generate accurate time-settlement predictions by incorporating geotechnical and construction information from sites where preloading was applied. The models were developed and tested using a dataset from study sites in Busan Newport, South Korea. This dataset was constructed through 3D interpolation, which provided a detailed and accurate representation of subsurface conditions. A case study was conducted to evaluate the performance of the model in real-world scenarios. The accuracy of the proposed models was compared with that of traditional methods, including the Hansbo method and a basic transformer model. Results indicated that the proposed models outperformed these traditional methods by producing more accurate predictions. In addition, a parametric study highlighted the effectiveness of the model in capturing the effects of critical factors, such as step loading period, maximum fill height, and clay layer thickness. The SLT and PLT models demonstrated significant potential for enhancing settlement prediction accuracy during the design phase. This improvement in accuracy aids in planning and increases cost effectiveness in projects involving soft deposits.

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来源期刊
Acta Geotechnica
Acta Geotechnica ENGINEERING, GEOLOGICAL-
CiteScore
9.90
自引率
17.50%
发文量
297
审稿时长
4 months
期刊介绍: Acta Geotechnica is an international journal devoted to the publication and dissemination of basic and applied research in geoengineering – an interdisciplinary field dealing with geomaterials such as soils and rocks. Coverage emphasizes the interplay between geomechanical models and their engineering applications. The journal presents original research papers on fundamental concepts in geomechanics and their novel applications in geoengineering based on experimental, analytical and/or numerical approaches. The main purpose of the journal is to foster understanding of the fundamental mechanisms behind the phenomena and processes in geomaterials, from kilometer-scale problems as they occur in geoscience, and down to the nano-scale, with their potential impact on geoengineering. The journal strives to report and archive progress in the field in a timely manner, presenting research papers, review articles, short notes and letters to the editors.
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