Compressibility of micromagnetic solutions in tensor train format
Thierry Valet, Nicolas Vukadinovic
TLDR
Tensor-train (TT) representations efficiently compress micromagnetic solutions, overcoming traditional simulation scaling issues by exploiting spatial sparsity.
Key contributions
- Micromagnetic states exhibit informational sparsity with low-dimensional, high-gradient regions.
- Standard simulations scale poorly ($L^3$, $(1/a)^3$) due to inability to exploit this sparsity.
- Tensor-train (TT) representations overcome this by optimally exploiting spatial sparsity.
- TT compression reduces scaling to $L^{1.8}$ and $(1/a)^{1.2}$, a significant improvement.
Why it matters
This paper introduces tensor-train formats to drastically improve micromagnetic simulation efficiency. It enables larger, more refined simulations, overcoming traditional limitations and opening new avenues for fundamental research and technology development in magnetism.
Original Abstract
For three-dimensional (3D) magnetic objects with linear size $L$ exceeding a few exchange lengths, the micromagnetic state exhibits pronounced informational sparsity: low-dimensional, high-gradient regions (e.g., domain walls) coexist with near-uniformly magnetized volumetric domains. Because standard micromagnetic simulation methods discretize the magnetization on near-uniform 3D grids with linear cell size $a$, they cannot take advantage of this sparsity. The computational problem scales as $\sim L^3$ and $\sim (1/a)^3$. In this Letter, we establish that direct tensor-train (TT) representations overcome these poor scalings by exploiting the spatial sparsity optimally, while preserving accuracy in a controlled way. Focusing on representative flux-closure configurations in soft-magnetic rectangular prisms, in the near-micrometer regime, we demonstrate that the parameter count of TT-compressed micromagnetic data scales approximately as $L^{1.8}$ and $(1/a)^{1.2}$. Hence the relative advantage over dense discretizations rapidly grows with the problem size and refinement level. These first results provide a strong motivation for future developments of micromagnetic solvers in TT format which could transcend the limitations of traditional simulators, with far reaching potential impacts on fundamental research and technology development.
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