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首页> 外文期刊>International journal of geomechanics >BiLSTM-Based Soil-Structure Interface Modeling
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BiLSTM-Based Soil-Structure Interface Modeling

机译:基于Bilstm的土结构界面建模

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摘要

Deep learning (DL) algorithm bidirectional long short-term memory (BiLSTM) neural network is employed to model behaviors of the soil-structure interface in this study, as a pioneer research work to investigate the feasibility of using DL to model interface behaviors. Datasets are collected from 12 constant normal stress and 20 constant normal stiffness sand-structure interface tests. A modeling framework with the integration of BiLSTM is thereafter proposed. The results indicate that the BiLSTM-based model can accurately capture the responses of interface behaviors including volumetric dilatancy and strain hardening on the dense samples and volumetric contraction and strain softening on the loose samples, respectively. The effects of surface roughness, soil relative density, and normal stiffness on the interface behaviors are also investigated using the BiLSTM-based model. The predicted normal stress, shear stress, and normal displacement show good agreement with measured results.
机译:深度学习(DL)算法双向长期短期记忆(BILSTM)神经网络用于模拟本研究中的土壤结构界面的行为,作为研究使用DL模型界面行为的可行性的先驱研究工作。 从12个恒定正常应力和20个恒定正常刚度砂结构界面测试中收集数据集。 此后提出了一种与Bilstm集成的建模框架。 结果表明,基于Bilstm的模型可以精确地捕获界面行为的响应,包括对致密样品和体积收缩和体积收缩和菌株软化的容积膨胀和应变硬化。 还研究了基于Bilstm的模型研究了表面粗糙度,土壤相对密度和正常刚度对界面行为的影响。 预测的正常应力,剪切应力和正常位移显示出与测量结果的良好一致。

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