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首页> 外文期刊>SIAM Journal on Scientific Computing >MACHINE LEARNING IN ADAPTIVE DOMAIN DECOMPOSITION METHODS-PREDICTING THE GEOMETRIC LOCATION OF CONSTRAINTS
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MACHINE LEARNING IN ADAPTIVE DOMAIN DECOMPOSITION METHODS-PREDICTING THE GEOMETRIC LOCATION OF CONSTRAINTS

机译:机器学习在自适应域分解方法 - 预测约束的几何位置

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摘要

Domain decomposition methods are robust and parallel scalable, preconditioned iterative algorithms for the solution of the large linear systems arising in the discretization of elliptic partial differential equations by finite elements. The convergence rate of these methods is generally determined by the eigenvalues of the preconditioned system. For second-order elliptic partial differential equations, coefficient discontinuities with a large contrast can lead to a deterioration of the convergence rate. A remedy can be obtained by enhancing the coarse space with elements, which are often called constraints, that are computed by solving small eigenvalue problems on portions of the interface of the domain decomposition, i.e., edges in two dimensions or faces and edges in three dimensions. In the present work, without restriction of generality, the focus is on two dimensions. In general, it is difficult to predict where these constraints have to be added, and therefore the corresponding local eigenvalue problems have to be computed, i.e., on which edges. Here, a machine learning based strategy using neural networks is suggested to predict the geometric location of these edges in a preprocessing step. This reduces the number of eigenvalue problems that have to be solved before the iteration. Numerical experiments for model problems and realistic microsections using regular decompositions as well as decompositions from graph partitioners are provided, showing very promising results.
机译:域分解方法是坚固且平行的可扩展,预先说明的迭代算法,用于通过有限元分离椭圆偏微分方程的离散化而产生的大线性系统。这些方法的收敛速率通常由预处理系统的特征值决定。对于二阶椭圆部分微分方程,具有大对比度的系数不连续可能导致收敛速度的劣化。通过增强具有由通常称为约束的元件的粗糙空间来获得补救措施,这些元件通过在域分解的界面的部分上解决小的特征值问题,即三维的两个尺寸或面部和边缘的部分来计算。在目前的工作中,没有限制一般性,重点是两个维度。通常,难以预测必须添加这些约束的位置,因此必须计算相应的局部特征值问题,即,在哪个边缘。这里,建议使用神经网络的基于机器学习的策略来预测预处理步骤中这些边缘的几何位置。这减少了在迭代之前必须解决的特征值问题的数量。提供了使用常规分解的模型问题的数值实验和图形分区的分解,显示出非常有前途的结果。

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