The preconditioned iterative solution of large-scale saddle-point systems is of great importance in numerous application areas, many of them involving partial differential equations. Robustness with respect to certain problem parameters is often a concern, and it can be addressed by identifying proper scalings of preconditioner building blocks. In this paper, we consider a new perspective to finding effective and robust preconditioners. Our approach is based on the consideration of the natural physical units underlying the respective saddle-point problem. This point of view, which we refer to as dimensional consistency, suggests a natural combination of the parameters intrinsic to the problem. It turns out that the scaling obtained in this way leads to robustness with respect to problem parameters in many relevant cases. As a consequence, we advertise dimensional consistency based preconditioning as a new and systematic way to designing parameter robust preconditoners for saddle-point systems arising from models for physical phenomena.
翻译:大型马鞍点系统的先决条件迭代解决方案在许多应用领域都非常重要,其中许多涉及部分差异方程式。 对某些问题参数的强力往往是一个令人关切的问题,可以通过适当规模的前提条件构件来加以解决。在本文件中,我们考虑了寻找有效和有力的前提条件的新视角。我们的方法基于对各自马鞍点问题背后的自然物理单位的考虑。我们称之为维维一致性的这一观点表明了问题内在参数的自然组合。事实证明,以这种方式实现的扩大导致在许多相关情况下对问题参数的稳健性。因此,我们宣传维维系性,以此作为设计由物理现象模型产生的马鞍点系统强力前导体的新的系统化方法。