NANAAug 18, 2014

Tensor Numerical Methods for High-dimensional PDEs: Basic Theory and Initial Applications

arXiv:1408.405339 citationsh-index: 43
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For computational scientists, this survey consolidates tensor methods that enable efficient solution of high-dimensional PDEs, though it is a review of existing techniques rather than a novel contribution.

This survey reviews tensor numerical methods for high-dimensional PDEs, demonstrating that quantics tensor approximation can represent d-dimensional data arrays with log-volume complexity O(d log N). Key results include solving the 3D Hartree-Fock equation on grids up to N=10^5 and approximating dynamical Fokker-Planck equations in up to 20 dimensions.

We present a brief survey on the modern tensor numerical methods for multidimensional stationary and time-dependent partial differential equations (PDEs). The guiding principle of the tensor approach is the rank-structured separable approximation of multivariate functions and operators represented on a grid. Recently, the traditional Tucker, canonical, and matrix product states (tensor train) tensor models have been applied to the grid-based electronic structure calculations, to parametric PDEs, and to dynamical equations arising in scientific computing. The essential progress is based on the quantics tensor approximation method proved to be capable to represent (approximate) function related $d$-dimensional data arrays of size $N^d$ with log-volume complexity, $O(d \log N)$. Combined with the traditional numerical schemes, these novel tools establish a new promising approach for solving multidimensional integral and differential equations using low-parametric rank-structured tensor formats. As the main example, we describe the grid-based tensor numerical approach for solving the 3D nonlinear Hartree-Fock eigenvalue problem, that was the starting point for the developments of tensor-structured numerical methods for large-scale computations in solving real-life multidimensional problems. We also address new results on tensor approximation of the dynamical Fokker-Planck and master equations in many dimensions up to $d=20$. Numerical tests demonstrate the benefits of the rank-structured tensor approximation on the aforementioned examples of multidimensional PDEs. In particular, the use of grid-based tensor representations in the reduced basis of atomics orbitals yields an accurate solution of the Hartree-Fock equation on large $N\times N \times N$ grids with a grid size of up to $N= 10^{5}$.

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