论文标题
线性弹性拓扑优化问题的快速多尺度对比度独立预处理
Fast multiscale contrast independent preconditioners for linear elastic topology optimization problems
论文作者
论文摘要
这项工作的目的是为拓扑优化中产生的高对比度状态问题的数值解决方案提供一种快速和可行的方法。优化过程是迭代的,梯度是通过伴随分析获得的,该分析需要大型高对比度线性弹性问题的数值解决方案,其特征涵盖了几个长度尺度。离散问题的大小迫使迭代线性求解器的利用,溶液时间取决于预处理的质量。量表之间缺乏明显的分离,以及高对比度,对标准预处理技术构成了严重的挑战。因此,在这里,我们提出了针对高对比度弹性方程的新方法,其性能独立于高对比度和弹性问题的多尺度结构。求解器基于具有经过精心构造的粗级水平的两级域分解技术,以应对问题的高对比度和多尺度性质。该结构利用标量扩散与弹性问题的每个位移块之间的光谱等效性,与文献中提出的先前解决方案相比,能够自动选择粗空间的适当维度。新方法继承了域分解技术的优势,例如易于并行化和可扩展性。提出的数值实验证明了所提出的方法的出色性能。
The goal of this work is to present a fast and viable approach for the numerical solution of the high-contrast state problems arising in topology optimization. The optimization process is iterative, and the gradients are obtained by an adjoint analysis, which requires the numerical solution of large high-contrast linear elastic problems with features spanning several length scales. The size of the discretized problems forces the utilization of iterative linear solvers with solution time dependant on the quality of the preconditioner. The lack of clear separation between the scales, as well as the high-contrast, imposes severe challenges on the standard preconditioning techniques. Thus, here we propose new methods for the high-contrast elasticity equation with performance independent of the high-contrast and the multi-scale structure of the elasticity problem. The solvers are based on two-levels domain decomposition techniques with a carefully constructed coarse level to deal with the high-contrast and multi-scale nature of the problem. The construction utilizes spectral equivalence between scalar diffusion and each displacement block of the elasticity problems and, in contrast to previous solutions proposed in the literature, is able to select the appropriate dimension of the coarse space automatically. The new methods inherit the advantages of domain decomposition techniques, such as easy parallelization and scalability. The presented numerical experiments demonstrate the excellent performance of the proposed methods.