This paper presents a method for the numerical treatment of reaction-convection-diffusion problems with parameter-dependent coefficients that are arbitrary rough and possibly varying at a very fine scale. The presented technique combines the reduced basis (RB) framework with the recently proposed super-localized orthogonal decomposition (SLOD). More specifically, the RB is used for accelerating the typically costly SLOD basis computation, while the SLOD is employed for an efficient compression of the problem's solution operator requiring coarse solves only. The combined advantages of both methods allow one to tackle the challenges arising from parametric heterogeneous coefficients. Given a value of the parameter vector, the method outputs a corresponding compressed solution operator which can be used to efficiently treat multiple, possibly non-affine, right-hand sides at the same time, requiring only one coarse solve per right-hand side.
翻译:本文件介绍了一种方法,用以从数字上处理依赖参数的系数问题,这些系数是任意粗略的,而且可能差别很大。提出的技术把降低基数(RB)框架与最近提议的超本地化正方形分解(SLOD)相结合。更具体地说,RB用于加速通常昂贵的SLOD基准计算,而SLOD用于高效压缩问题解决方案操作员,只要求粗糙的解决方案操作员。这两种方法的综合优势都使得人们能够应对参数可变系数带来的挑战。考虑到参数矢量的价值,该方法产生相应的压缩解决方案操作员,可以同时有效处理多种(可能不是硬币的)右侧,只需要右侧一个粗糙的解决方案。