The discovery of fast numerical solvers prompted a clear and rapid shift towards iterative techniques in many applications, especially in computational mechanics, due to the increased necessity for solving very large linear systems. Most numerical solvers are highly dependent on the problem geometry and discretization, facing issues when any of these properties change. The newly developed Hybrid Iterative Numerical Transferable Solver (HINTS) combines a standard solver with a neural operator to achieve better performance, focusing on a single geometry at a time. In this work, we explore the "T" in HINTS, i.e., the geometry transferability properties of HINTS. We first propose to directly employ HINTS built for a specific geometry to a different but related geometry without any adjustments. In addition, we propose the integration of an operator level transfer learning with HINTS to even further improve the convergence of HINTS on new geometries and discretizations. We conduct numerical experiments for a Darcy flow problem and a plane-strain elasticity problem. The results show that both the direct application of HINTS and the transfer learning enhanced HINTS are able to accurately solve these problems on different geometries. In addition, using transfer learning, HINTS is able to converge to machine zero even faster than the direct application of HINTS.
翻译:快速数字求解器的发现促使在许多应用中,特别是在计算机械方面,明显和快速地转向迭代技术,因为越来越有必要解决非常大的线性系统。大多数数字求解器高度依赖问题几何和离散,在任何这些属性发生变化时都面临问题。新开发的混合循环数字可转移解答器(HINTS)将标准求解器与神经操作器相结合,以取得更好的性能,同时侧重于单一几何。在这项工作中,我们探索了HINTS中的“T”,即HINTS的几何可转移性。我们首先提议直接使用为特定几何度而建的HINS,将其建在不同的但相关的几何测量上,而不作任何调整。此外,我们提议将操作员一级的传输学习与HINTS结合起来,以进一步改善HINTS在新的地理分布和离异性方面的趋同性能实验,我们对达定流问题和平流弹性问题进行数字实验。结果显示,在HINTS的直接应用和转移中,甚至更迅速地学习HINS,能够准确地解决这些系统直接转换的问题。