Latent Space Physics: Towards Learning the Temporal Evolution of Fluid Flow

S. Wiewel, M. Becher, N. Thuerey

Research output: Contribution to journalArticlepeer-review

188 Scopus citations

Abstract

We propose a method for the data-driven inference of temporal evolutions of physical functions with deep learning. More specifically, we target fluid flow problems, and we propose a novel LSTM-based approach to predict the changes of the pressure field over time. The central challenge in this context is the high dimensionality of Eulerian space-time data sets. We demonstrate for the first time that dense 3D+time functions of physics system can be predicted within the latent spaces of neural networks, and we arrive at a neural-network based simulation algorithm with significant practical speed-ups. We highlight the capabilities of our method with a series of complex liquid simulations, and with a set of single-phase buoyancy simulations. With a set of trained networks, our method is more than two orders of magnitudes faster than a traditional pressure solver. Additionally, we present and discuss a series of detailed evaluations for the different components of our algorithm.

Original languageEnglish
Pages (from-to)71-82
Number of pages12
JournalComputer Graphics Forum
Volume38
Issue number2
DOIs
StatePublished - May 2019

Keywords

  • CCS Concepts
  • Computing methodologies → Neural networks
  • Physical simulation

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