User: Guest  Login
More Searchfields
Simple search
Title:

Latent-Space Physics: Towards learning the temporal evolution of fluid flow. Liquid 2D data set with 1000 scenes.

Document type:
Forschungsdaten
Responsible:
Thuerey, Nils
Authors:
Wiewel, Steffen; Thuerey, Nils
Author affiliation:
TUM
Publisher:
TUM
End date of data production:
28.03.2019
Subject area:
DAT Datenverarbeitung, Informatik
Resource type:
Simulationen / simulations
Data type:
Datenbanken / data bases
Description:
This archive contains a 2D data set of liquid simulations with resolution 64. It contains 1000 scenes, each with 100 frames of data over time. The data can be used to train the autoencoder and LSTM networks of the paper “Latent-space physics: Towards learning the temporal evolution of fluid flow”.
Links:

Project & Source-Code

Key words:
Fluid Simulation; Physics-based Deep Learning; Navier-Stokes
Technical remarks:
Data format: numpy .npz file format, resolution per temporal frame: 64x64. Contained fields: velocity, surface position as levelset, and 3 pressure fields (full, dynamic, static).
View and download (1 file, 8GB)
The data server also offers downloads with FTP
The data server also offers downloads with rsync (password m1483096):
rsync rsync://m1483096@dataserv.ub.tum.de/m1483096/
Language:
en
Rights:
by-sa, http://creativecommons.org/licenses/by-sa/4.0
Horizon 2020:
ERC StG 637014
 BibTeX