4.7 Article

Learning non-Markovian physics from data

Journal

JOURNAL OF COMPUTATIONAL PHYSICS
Volume 428, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jcp.2020.109982

Keywords

Machine learning; Generalized Langevin Equation; Mori-Zwanzig projection; History-dependent physics; GENERIC

Funding

  1. ESI Group through the ESI Chair at ENSAM ParisTech
  2. ESI Group through the project Simulated Reality at the University of Zaragoza
  3. Spanish Ministry of Economy and Competitiveness [CICYT-DPI2017-85139-C2-1-R]
  4. Regional Government of Aragon [T24_20R]
  5. European Social Fund

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A method for data-driven learning of physical phenomena with internal variables and inherent noise is introduced, achieving a description that complies with basic thermodynamic principles.
We present a method for the data-driven learning of physical phenomena whose evolution in time depends on history terms. It is well known that a Mori-Zwanzig-type projection produces a description of the physical phenomena that depends on history, and also incorporates noise. If the data stream is sampled from the projected Mori-Zwanzig manifold, the description of the phenomenon will always depend on one or more unresolved variables, a priori unknown, and will also incorporate noise. The present work introduces a novel technique able to unveil the presence of such internal variables-although without giving it a precise physical meaning-and to minimize the inherent noise. The method is based upon a refinement of the scale at which the phenomenon is described by means of kernel-PCA techniques. By learning the metriplectic form of the evolution of the physics, the resulting approximation satisfies basic thermodynamic principles such as energy conservation and positive entropy production. Examples are provided that show the potential of the method in both discrete and continuum mechanics. (c) 2020 Elsevier Inc. All rights reserved.

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