Rodgers Abram, Venturi Daniele
Advanced Supercomputing Division, NASA <a href="https://ror.org/02acart68">Ames Research Center</a> N258, 258 Allen Rd, Moffett Field, California 94035, USA.
Department of Applied Mathematics, <a href="https://ror.org/03s65by71">University of California Santa Cruz</a>, 1156 High St, Santa Cruz, California 95064, USA.
Phys Rev E. 2024 Jul;110(1-2):015310. doi: 10.1103/PhysRevE.110.015310.
Functional differential equations (FDEs) play a fundamental role in many areas of mathematical physics, including fluid dynamics (Hopf characteristic functional equation), quantum field theory (Schwinger-Dyson equations), and statistical physics. Despite their significance, computing solutions to FDEs remains a longstanding challenge in mathematical physics. In this paper we address this challenge by introducing approximation theory and high-performance computational algorithms designed for solving FDEs on tensor manifolds. Our approach involves approximating FDEs using high-dimensional partial differential equations (PDEs), and then solving such high-dimensional PDEs on a low-rank tensor manifold leveraging high-performance (parallel) tensor algorithms. The effectiveness of the proposed approach is demonstrated through its application to the Burgers-Hopf FDE, which governs the characteristic functional of the stochastic solution to the Burgers equation evolving from a random initial state.
泛函微分方程(Functional differential equations,FDEs)在数学物理的许多领域中都起着基础性作用,包括流体动力学(霍普夫特征泛函方程)、量子场论(施温格 - 戴森方程)以及统计物理。尽管它们具有重要意义,但计算FDEs的解在数学物理中仍然是一个长期存在的挑战。在本文中,我们通过引入为在张量流形上求解FDEs而设计的逼近理论和高性能计算算法来应对这一挑战。我们的方法包括使用高维偏微分方程(PDEs)来逼近FDEs,然后利用高性能(并行)张量算法在低秩张量流形上求解此类高维PDEs。通过将该方法应用于伯格斯 - 霍普夫FDE,证明了所提方法的有效性,该FDE支配着从随机初始状态演化而来的伯格斯方程的随机解的特征泛函。