Interpretable learning of effective dynamics for multiscale systems


Loading...

Date

2025-01

Publication Type

Journal Article

ETH Bibliography

yes

Citations

Altmetric

Data

Abstract

The modelling and simulation of high-dimensional multiscale systems is a critical challenge across all areas of science and engineering. It is broadly believed that even with today's computer advances resolving all spatio-temporal scales described by the governing equations remains a remote target. This realization has prompted intense efforts to develop model-order reduction techniques. In recent years, techniques based on deep recurrent neural networks (RNNs) have produced promising results for the modelling and simulation of complex spatiotemporal systems and offer large flexibility in model development as they can incorporate experimental and computational data. However, neural networks lack interpretability, which limits their utility and generalizability across complex systems. Here, we propose a novel framework of interpretable learning effective dynamics (iLED) that offers comparable accuracy to state-of-the-art RNN-based approaches while providing the added benefit of interpretability. The iLED framework is motivated by Mori-Zwanzig and Koopman operator (KO) theory, which justifies the choice of the specific architecture. We demonstrate the effectiveness of the proposed framework in simulations of three benchmark multiscale systems. Our results show that the iLED framework can generate accurate predictions and obtain interpretable dynamics, making it a promising approach for solving high-dimensional multiscale systems.

Publication status

published

Editor

Book title

Volume

481 (2305)

Pages / Article No.

20240167

Publisher

Royal Society

Event

Edition / version

Methods

Software

Geographic location

Date collected

Date created

Subject

model-order reduction; interpretability; neural networks; Koopman operator; multiscale systems

Organisational unit

Notes

Funding

956201 - Data Driven Computational Mechanics at EXascale (EC)

Related publications and datasets