A deep learning approach to the measurement of long-lived memory kernels from generalized Langevin dynamics

Max Kerr Winter (Corresponding author), Ilian Pihlajamaa, Vincent E. Debets, Liesbeth M.C. Janssen (Corresponding author)

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Abstract

Memory effects are ubiquitous in a wide variety of complex physical phenomena, ranging from glassy dynamics and metamaterials to climate models. The Generalized Langevin Equation (GLE) provides a rigorous way to describe memory effects via the so-called memory kernel in an integro-differential equation. However, the memory kernel is often unknown, and accurately predicting or measuring it via, e.g., a numerical inverse Laplace transform remains a herculean task. Here, we describe a novel method using deep neural networks (DNNs) to measure memory kernels from dynamical data. As a proof-of-principle, we focus on the notoriously long-lived memory effects of glass-forming systems, which have proved a major challenge to existing methods. In particular, we learn the operator mapping dynamics to memory kernels from a training set generated with the Mode-Coupling Theory (MCT) of hard spheres. Our DNNs are remarkably robust against noise, in contrast to conventional techniques. Furthermore, we demonstrate that a network trained on data generated from analytic theory (hard-sphere MCT) generalizes well to data from simulations of a different system (Brownian Weeks-Chandler-Andersen particles). Finally, we train a network on a set of phenomenological kernels and demonstrate its effectiveness in generalizing to both unseen phenomenological examples and supercooled hard-sphere MCT data. We provide a general pipeline, KernelLearner, for training networks to extract memory kernels from any non-Markovian system described by a GLE. The success of our DNN method applied to noisy glassy systems suggests that deep learning can play an important role in the study of dynamical systems with memory.

Original languageEnglish
Article number244115
Number of pages14
JournalJournal of Chemical Physics
Volume158
Issue number24
DOIs
Publication statusPublished - 28 Jun 2023

Funding

It is a pleasure to thank Sonja Georgievska, Meiert Grootes, and Jisk Attema of the Netherlands eScience Center for many valuable discussions in the context of the Small-Scale Initiative on Machine Learning. We acknowledge the Dutch Research Council (NWO) for the financial support through a START-UP grant (M.K.W., V.E.D., and L.M.C.J.) and a Vidi grant (I.P. and L.M.C.J.).

FundersFunder number
Nederlandse Organisatie voor Wetenschappelijk Onderzoek

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