MINPO: Memory-Informed Neural Pseudo-Operator to Resolve Nonlocal Spatiotemporal Dynamics
Farinaz Mostajeran, Aruzhan Tleubek, Salah A Faroughi

TL;DR
MINPO introduces a neural pseudo-operator framework that efficiently models and solves nonlocal spatiotemporal dynamics from integro-differential equations, outperforming classical and existing neural methods in accuracy and computational efficiency.
Contribution
The paper presents MINPO, a novel neural pseudo-operator that learns nonlocal operators directly, enabling generalization across diverse nonlocal structures and improving computational efficiency.
Findings
MINPO accurately models various nonlocal kernels.
MINPO demonstrates robustness across different kernel types and dimensions.
MINPO reduces computational costs compared to classical methods.
Abstract
Many physical systems exhibit nonlocal spatiotemporal behaviors described by integro-differential equations (IDEs). Classical methods for solving IDEs require repeatedly evaluating convolution integrals, whose cost increases quickly with kernel complexity and dimensionality. Existing neural solvers can accelerate selected instances of these computations, yet they do not generalize across diverse nonlocal structures. In this work, we introduce the Memory-Informed Neural Pseudo-Operator (MINPO), a unified framework for modeling nonlocal dynamics arising from long-range spatial interactions and/or long-term temporal memory. MINPO, employing either Kolmogorov-Arnold Networks (KANs) or multilayer perceptron networks (MLPs) as encoders, learns the nonlocal operator and its inverse directly through neural representations, and then explicitly reconstruct the unknown solution fields. The…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fractional Differential Equations Solutions · Numerical methods for differential equations
