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📄 Abstract
Abstract: Accurately forecasting the long-term evolution of turbulence represents a
grand challenge in scientific computing and is crucial for applications ranging
from climate modeling to aerospace engineering. Existing deep learning methods,
particularly neural operators, often fail in long-term autoregressive
predictions, suffering from catastrophic error accumulation and a loss of
physical fidelity. This failure stems from their inability to simultaneously
capture the distinct mathematical structures that govern turbulent dynamics:
local, dissipative effects and global, non-local interactions. In this paper,
we propose the
{\textbf{\underline{D}}}ifferential-{\textbf{\underline{I}}}ntegral
{\textbf{\underline{N}}}eural {\textbf{\underline{O}}}perator (\method{}), a
novel framework designed from a first-principles approach of operator
decomposition. \method{} explicitly models the turbulent evolution through
parallel branches that learn distinct physical operators: a local differential
operator, realized by a constrained convolutional network that provably
converges to a derivative, and a global integral operator, captured by a
Transformer architecture that learns a data-driven global kernel. This
physics-based decomposition endows \method{} with exceptional stability and
robustness. Through extensive experiments on the challenging 2D Kolmogorov flow
benchmark, we demonstrate that \method{} significantly outperforms
state-of-the-art models in long-term forecasting. It successfully suppresses
error accumulation over hundreds of timesteps, maintains high fidelity in both
the vorticity fields and energy spectra, and establishes a new benchmark for
physically consistent, long-range turbulence forecast.