COMP-PHLGFeb 27, 2024

Thermodynamics-informed super-resolution of scarce temporal dynamics data

arXiv:2402.17506v210 citationsh-index: 14Comput Method Appl Mech Eng
Originality Incremental advance
AI Analysis

This work addresses the challenge of enhancing resolution and forecasting in physical systems for applications like fluid dynamics, but it appears incremental as it combines existing adversarial autoencoders and structure-preserving neural networks.

The authors tackled the problem of super-resolving scarce temporal dynamics data and predicting time evolution by integrating thermodynamics-aware neural networks, achieving accurate predictions in fluid flow examples with varying properties.

We present a method to increase the resolution of measurements of a physical system and subsequently predict its time evolution using thermodynamics-aware neural networks. Our method uses adversarial autoencoders, which reduce the dimensionality of the full order model to a set of latent variables that are enforced to match a prior, for example a normal distribution. Adversarial autoencoders are seen as generative models, and they can be trained to generate high-resolution samples from low-resoution inputs, meaning they can address the so-called super-resolution problem. Then, a second neural network is trained to learn the physical structure of the latent variables and predict their temporal evolution. This neural network is known as an structure-preserving neural network. It learns the metriplectic-structure of the system and applies a physical bias to ensure that the first and second principles of thermodynamics are fulfilled. The integrated trajectories are decoded to their original dimensionality, as well as to the higher dimensionality space produced by the adversarial autoencoder and they are compared to the ground truth solution. The method is tested with two examples of flow over a cylinder, where the fluid properties are varied between both examples.

Foundations

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

Your Notes