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Teaching solid mechanics to artificial intelligence-a fast solver for heterogeneous materials

机译:教学固体力学对人工智能 - 一种用于异质材料的快速求解器

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We propose a deep neural network (DNN) as a fast surrogate model for local stress calculations in inhomogeneous non-linear materials. We show that the DNN predicts the local stresses with 3.8% mean absolute percentage error (MAPE) for the case of heterogeneous elastic media and a mechanical contrast of up to factor of 1.5 among neighboring domains, while performing 103 times faster than spectral solvers. The DNN model proves suited for reproducing the stress distribution in geometries different from those used for training. In the case of elasto-plastic materials with up to 4 times mechanical contrast in yield stress among adjacent regions, the trained model simulates the micromechanics with a MAPE of 6.4% in one single forward evaluation of the network, without any iteration. The results reveal an efficient approach to solve non-linear mechanical problems, with an acceleration up to a factor of 8300 for elastic-plastic materials compared to typical solvers.
机译:我们将深度神经网络(DNN)提出作为非均匀非线性材料中局部应力计算的快速替代模型。 我们表明,DNN预测局部应力,对于非均相弹性介质的情况以及相邻结构域中的壳体的局部误差(MAPE)和机械对比度为相邻域中的最多1.5倍,同时比光谱溶剂更快地执行103倍。 DNN模型的证明适用于再现与用于训练的几何形状的应力分布。 在相邻地区的屈服应力最多4倍的弹性塑料材料的情况下,培训的模型在网络的一个前向评估中模拟了Mape的Mape,含有6.4%,没有任何迭代。 结果揭示了解决非线性机械问题的有效方法,与典型的溶剂相比,加速度高达8300倍,适用于弹性塑料。

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