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Document type:
Forschungsdaten
Responsible:
Winchenbach, Rene
Authors:
Winchenbach, Rene; Thuerey, Nils
Author affiliation:
TUM
Publisher:
TUM
Title:
Symmetric Basis Convolutions for Learning Lagrangian Fluid Mechanics
End date of data production:
01.02.2024
Subject area:
DAT Datenverarbeitung, Informatik; PHY Physik
Resource type:
Simulationen / simulations
Data type:
Datenbanken / data bases
Other data type:
Compressed datasets consisting of hdf5 files, one per simulation instance.
Description:
This archive contains spatio-temporal data from simulations of the Navier-Stokes equations split into four different test cases
Test Case I: One-dimensional pseudo-compressible SPH simulations in periodic boundary conditions with random initial conditions. Contains training and testing data with different initial conditions.
Test Case II: Two-dimensional weakly-compressible SPH simulations in closed boundary conditions with random initial velocitie fields. Contains training and testing data with different frequency spectra.
Test Case III: Two-dimensional incompresisble SPH simulations with no boundary conditions of randomly located and accelerated fluid blobs in free-space. Contains training and testing data with different initial locations and speeds.
Test Case IV: Three-dimensional test data of regularly sampled particles in periodic boundary conditions for verification of kernel and kernel gradient estimates.
Key words:
flow prediction; PDEs; numerical simulation; Graph Neural Networks; Continuous Convolutions; autoregressive models
Technical remarks:
Projekt: https://ge.in.tum.de/publications/
Publication: https://arxiv.org/abs/2309.01745
Source Code: https://github.com/tum-pbs/SFBC
Language:
en
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