论文标题

多尺度问题的混合显式学习与时间相关的来源

Hybrid explicit-implicit learning for multiscale problems with time dependent source

论文作者

Efendiev, Yalchin, Leung, Wing Tat, Li, Wenyuan, Zhang, Zecheng

论文摘要

分裂方法是解决偏微分方程的强大方法。已经设计了各种分裂方法,以分离不同的物理,非线性等。最近,已经提出了一种新的分裂方法,即隐式处理一些自由度,而其他自由度则被明确处理。结果,该方案包含两个方程,一个是隐式的,另一个是显式的。已经研究了这种方法的稳定性。结果表明,时间步长为粗空间网格大小,可以提供显着的计算优势。但是,隐式解决方案部分仍然很昂贵,尤其是对于非线性问题。在本文中,我们引入了修改后的部分机器学习算法,以替换算法的隐式解部分。这些算法首先是在Arxiv:2109.02147中引入的,其中考虑了一个均匀的源项与变压器一起考虑,该术语是一个可以预测未来动力学的神经网络。在本文中,我们考虑了时间依赖的源术语,这是对先前工作的概括。此外,我们使用解决方案的整个历史记录来训练网络。由于方程的隐式部分更为复杂,因此我们设计了一个神经网络以基于培训来预测它。此外,我们使用分裂策略计算解决方案的明确部分。此外,我们在机器学习中使用基于正交分解的适当模型。机器学习算法可提供计算节省,而无需牺牲准确性。我们提出了三个数字示例,这些示例表明我们的机器学习方案稳定且准确。

The splitting method is a powerful method for solving partial differential equations. Various splitting methods have been designed to separate different physics, nonlinearities, and so on. Recently, a new splitting approach has been proposed where some degrees of freedom are handled implicitly while other degrees of freedom are handled explicitly. As a result, the scheme contains two equations, one implicit and the other explicit. The stability of this approach has been studied. It was shown that the time step scales as the coarse spatial mesh size, which can provide a significant computational advantage. However, the implicit solution part can still be expensive, especially for nonlinear problems. In this paper, we introduce modified partial machine learning algorithms to replace the implicit solution part of the algorithm. These algorithms are first introduced in arXiv:2109.02147, where a homogeneous source term is considered along with the Transformer, which is a neural network that can predict future dynamics. In this paper, we consider time-dependent source terms which is a generalization of the previous work. Moreover, we use the whole history of the solution to train the network. As the implicit part of the equations is more complicated to solve, we design a neural network to predict it based on training. Furthermore, we compute the explicit part of the solution using our splitting strategy. In addition, we use Proper Orthogonal Decomposition based model reduction in machine learning. The machine learning algorithms provide computational saving without sacrificing accuracy. We present three numerical examples which show that our machine learning scheme is stable and accurate.

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