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The Uniqueness Problem of Physical Law Learning

MCML Authors

Abstract

Physical law learning is the ambiguous attempt at automating the derivation of governing equations with the use of machine learning techniques. This paper shall serve as a first step to build a comprehensive theoretical framework for learning physical laws, aiming to provide reliability to according algorithms. One key problem consists in the fact that the governing equations might not be uniquely determined by the given data. We will study this problem in the common situation that a physical law is described by an ordinary or partial differential equation. For various different classes of differential equations, we provide both necessary and sufficient conditions for a function from a given function class to uniquely determine the differential equation which is governing the phenomenon. We then use our results to determine in extensive numerical experiments whether a function solves a differential equation uniquely.

inproceedings


ICASSP 2023

IEEE International Conference on Acoustics, Speech and Signal Processing. Rhode Island, Greece, Jun 04-10, 2023.

Authors

P. Scholl • A. Bacho • H. Boche • G. Kutyniok

Links

DOI

Research Area

 A2 | Mathematical Foundations

BibTeXKey: SBB+23

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