显式动态有限元应用的参数化非侵入式时空逼近

Hamza Boukraichi, N. Razaaly, N. Akkari, F. Casenave, D. Ryckelynck
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引用次数: 0

摘要

在接下来的工作中,针对一个明确的动态接触三维问题,对不同的非侵入式模型约简方法进行了基准测试。这项工作的主要目的是评估简化模型相对于时间的稳定性以及这些方法相对于感兴趣的真解的精度。这些解是位移场和速度场的预测。根据材料参数的变化,对这些方法的精度进行了评价。在本研究中有六个参数变化,我们希望预测相对于每个参数的整个瞬态快速动态冲击响应。为此,本文训练了适当正交分解(POD)和深度卷积神经网络(DcNN)模型,并提出了一种矢量化的Grassman流形插值方法。基准测试表明,使用DcNN可以在预测物理场时达到最佳的精度和稳定性。
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Parametrized non intrusive space-time approximation for explicit dynamic fem applications
In the following work, a benchmark of different non-intrusive model reduction approaches is performed on an explicit dynamic contact 3D-problem. The main purpose of this work is to evaluate the stability of the reduced model with respect to time along with the precision of these approaches with respect to the true solutions of interest. These solutions are the prediction of displacement and velocity fields. The precision of these approaches is also evaluated with respect to the evolution of some materials parameters. Six parameters vary in this study and we would like to predict the whole transient fast dynamic impact response with respect to each parameters. To this end, several models are trained : Proper Orthogonal Decomposition (POD) and Deep convolutional Neural Network (DcNN), in addition, a vectorized version of Interpolation in Grassman Manifolds is proposed. The benchmark performed illustrate that using DcNN’s allows to achieve the best precision and stability in predicting physical fields.
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