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Numerical solution for high-dimensional partial differential equations based on deep learning with residual learning and data-driven learning

机译:基于剩余学习和数据驱动学习的深度学习的高维局部微分方程数值解

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摘要

Solving high-dimensional partial differential equations (PDEs) is a long-term computational challenge due to the fundamental obstacle known as the curse of dimensionality. This paper develops a novel method (DL4HPDE) based on residual neural network learning with data-driven learning elliptic PDEs on a box-shaped domain. However, to combine a strong mechanism with a weak mechanism, we reconstruct a trial solution to the equations in two parts: the first part satisfies the initial and boundary conditions, while the second part is the residual neural network algorithm, which is used to train the other part. In our proposed method, residual learning is adopted to make our model easier to optimize. Moreover, we propose a data-driven algorithm that can increase the training spatial points according to the regional error and improve the accuracy of the model. Finally, the numerical experiments show the efficiency of our proposed model.
机译:求解高尺寸局部微分方程(PDE)是一种长期计算挑战,由于诸如维品的诅咒。 本文基于箱形域上的数据驱动学习椭圆PDE开发了一种基于残余神经网络学习的新方法(DL4HPDE)。 然而,为了将强大机制与弱机制结合,我们将试验解决方案重建为两部分的方程:第一部分满足初始和边界条件,而第二部分是用于训练的剩余神经网络算法 另一部分。 在我们提出的方法中,采用剩余学习来使我们的模型更易于优化。 此外,我们提出了一种数据驱动算法,可以根据区域误差增加训练空间点,提高模型的准确性。 最后,数值实验表明了我们所提出的模型的效率。

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