MLLGDSJul 15, 2024

Principal Component Flow Map Learning of PDEs from Incomplete, Limited, and Noisy Data

arXiv:2407.10854v24 citationsh-index: 7
Originality Incremental advance
AI Analysis

This addresses the problem of real-world data collection scenarios for researchers in computational science, though it is incremental as it builds on prior flow map learning methods.

The paper tackles modeling partially-observed PDEs from noisy and limited data by developing a neural network that learns dynamics in a reduced basis, enabling rapid simulations with smaller training sets and reduced training times.

We present a computational technique for modeling the evolution of dynamical systems in a reduced basis, with a focus on the challenging problem of modeling partially-observed partial differential equations (PDEs) on high-dimensional non-uniform grids. We address limitations of previous work on data-driven flow map learning in the sense that we focus on noisy and limited data to move toward data collection scenarios in real-world applications. Leveraging recent work on modeling PDEs in modal and nodal spaces, we present a neural network structure that is suitable for PDE modeling with noisy and limited data available only on a subset of the state variables or computational domain. In particular, spatial grid-point measurements are reduced using a learned linear transformation, after which the dynamics are learned in this reduced basis before being transformed back out to the nodal space. This approach yields a drastically reduced parameterization of the neural network compared with previous flow map models for nodal space learning. This allows for rapid high-resolution simulations, enabled by smaller training data sets and reduced training times.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes