A scalable framework for solving fractional diffusion equations

Max Carlson, R. Kirby, H. Sundar
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引用次数: 2

Abstract

The study of fractional order differential operators (involving non-integer derivative terms) is receiving renewed attention in many scientific fields from photonics to speech modeling. While numerous scalable codes exist for solving integer-order partial differential equations (PDEs), the same is not true for fractional order PDEs. Therefore, there is a need for highly scalable numerical methods and codes for solving fractional order PDEs on complex geometries. The key challenge is that most approaches for fractional PDEs have at least quadratic complexity in both storage and compute, and are challenging to scale. We present a scalable framework for solving fractional diffusion equations using the method of eigen-function expansion. This includes a scalable parallel algorithm to efficiently compute the full set of eigenvalues and eigenvectors for a discretized Laplace eigenvalue problem and apply them to construct approximate solutions to fractional order model problems. We demonstrate the efficacy of our methods by performing strong and weak scalability tests using complex geometries on TACC's Frontera compute cluster. We also show that our approach compares favorably against existing dense and sparse solvers. In our largest solve, we estimated half a million eigenpairs using 28,672 cores.
求解分数扩散方程的可伸缩框架
分数阶微分算子(包括非整数导数项)的研究在从光子学到语音建模的许多科学领域受到了新的关注。虽然存在许多可伸缩的代码用于求解整阶偏微分方程,但对于分数阶偏微分方程来说,情况并非如此。因此,需要高度可扩展的数值方法和代码来求解复杂几何上的分数阶偏微分方程。关键的挑战是,大多数用于分数阶偏微分方程的方法在存储和计算方面至少具有二次复杂度,并且难以扩展。我们提出了一个可扩展的框架,用特征函数展开的方法求解分数阶扩散方程。这包括一个可扩展的并行算法来有效地计算一个离散拉普拉斯特征值问题的特征值和特征向量的完整集合,并将它们应用于构造分数阶模型问题的近似解。通过在TACC的Frontera计算集群上使用复杂几何图形执行强可伸缩性和弱可伸缩性测试,我们证明了我们的方法的有效性。我们还表明,与现有的密集和稀疏求解器相比,我们的方法更具优势。在我们最大的解决方案中,我们使用28,672个内核估计了50万个特征对。
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