Published September 17, 2023 | Version 1.0
Dataset Open

DynaBench: A benchmark dataset for learning dynamical systems from low-resolution data (minimal)

  • 1. University of Würzburg

Description

This is a minimal version of the DynaBench dataset, containing the first 5% of the data. The full dataset is available at https://professor-x.de/dynabench

Abstract:

Previous work on learning physical systems from data has focused on high-resolution grid-structured measurements. However, real-world knowledge of such systems (e.g. weather data) relies on sparsely scattered measuring stations. In this paper, we introduce a novel simulated benchmark dataset, DynaBench, for learning dynamical systems directly from sparsely scattered data without prior knowledge of the equations. The dataset focuses on predicting the evolution of a dynamical system from low-resolution, unstructured measurements. We simulate six different partial differential equations covering a variety of physical systems commonly used in the literature and evaluate several machine learning models, including traditional graph neural networks and point cloud processing models, with the task of predicting the evolution of the system. The proposed benchmark dataset is expected to advance the state of art as an out-of-the-box easy-to-use tool for evaluating models in a setting where only unstructured low-resolution observations are available. The benchmark is available at https://professor-x.de/dynabench.

Technical Info

The dataset is split into 42 parts (6 equations x 7 combinations of resolution/structure). Each part can be downloaded separately and contains 7000 simulations of the given equation at the given resolution and structure. The simulations are grouped into chunks of 500 simulations saved in the hdf5 file format. Each chunk contains the variable "data", where the values of the simulated system are stored, as well as the variable "points", where the coordinates at which the system has been observed are stored. For more details visit the DynaBench website at https://professor-x.de/dynabench/. The dataset is best used as part of the dynabench python package available at https://pypi.org/project/dynabench/.

Files

Files (42.6 GB)

Name Size Download all
md5:eb5673723dc09b8ac66f102846cbaee3
438.5 MB Download
md5:57ea59b11d3ac1b79ddf7990e358f728
109.6 MB Download
md5:33a5b9f452bd4f0af4bdc07a1122404a
235.8 MB Download
md5:9ef4c13f03bc2635e58b54ec6a3be27f
2.0 GB Download
md5:39742135a9fbca69cd7a49d1ee0498bf
438.5 MB Download
md5:22d97fa65532fd17b948d86f0d20afb5
109.6 MB Download
md5:66183a82c0aaa92916a9e5f430bfdabc
235.8 MB Download
md5:abc1201b742790202584bb8d6867ef3b
872.7 MB Download
md5:7a7f2f5888e1bfa359bb6db2aecad732
218.2 MB Download
md5:9b5d60a7059cb64eef5a2929dcc81528
469.3 MB Download
md5:4cce87c53d913b97c83abc209e29fcec
4.0 GB Download
md5:ac3659bef8380c7f70664c400c89003b
872.7 MB Download
md5:055e8957ac56524276bd58fbd9c69923
218.2 MB Download
md5:ed0adef5cabf58a17589ad1ebe16d1e4
469.3 MB Download
md5:4731b6233b5da769e8df96da8562ce66
1.7 GB Download
md5:1be4dc64d0bc4da8bfa4c36018a6cbac
435.3 MB Download
md5:423e1f9ea8844082e9b792f93e7ae58f
936.3 MB Download
md5:5ed9363ed86454a590f88fe2c2c5a33f
7.9 GB Download
md5:3e60b02d1d9e1341fcfc02ea7ef529d6
1.7 GB Download
md5:3452708580225d3f3d22f0167ce6698e
435.3 MB Download
md5:6ec497d72866ab240e9e0cdf4a64f3d3
936.3 MB Download
md5:f217f94c5b0a4573eb66b0b31bcdf17f
438.5 MB Download
md5:0e6879ac9b8f729a02377af3a28d53c4
109.6 MB Download
md5:ab604c93ed24f98e07f4bbdd803c7a2e
235.8 MB Download
md5:3b69d302f9b263f7ffba8c80890ed11d
2.0 GB Download
md5:798655ff475726dcd476466fcd761ab9
438.5 MB Download
md5:f97c88a17691b0ee2d6b65feadf058c5
109.6 MB Download
md5:15b19f37576ced840dd68a4f6c9cdde1
235.8 MB Download
md5:d6ced6073e655e57e5c4cd76638616f0
872.7 MB Download
md5:7a5ad2201ce75c78dba390ca6911f0b4
218.2 MB Download
md5:a37b7bf5b94998104bee68f2168fe3fd
469.3 MB Download
md5:cf5297d9a5122c04f8d69f3ed06f1e4c
4.0 GB Download
md5:579b30a5038c64d23cc0a484ee290b78
872.7 MB Download
md5:2f78b830c5842e1854017785cb8ab072
218.2 MB Download
md5:76f5f9446f6bc8236428319ea08a0dfc
469.3 MB Download
md5:d16006ab3a00665b43420aa24a0b810b
872.7 MB Download
md5:43694b44e5959ebd10acf372565f4977
218.2 MB Download
md5:8e4db25d5d57a82e92fcdbc527afcdb5
469.3 MB Download
md5:040f03b0176994a1bc58c16a1735b324
4.0 GB Download
md5:7014fb30fcafdeb23c965b9acf74d8e6
872.7 MB Download
md5:510e6d63d7f70863bf44ce5c7312533c
218.2 MB Download
md5:45a1795477a4bbaf33c2ffe38ee8cdc9
469.3 MB Download

Additional details

Related works

Is documented by
https://professor-x.de/dynabench (URL)
Is part of
10.58160/40 (DOI)
Is published in
10.1007/978-3-031-43412-9_26 (DOI)
Is supplemented by
https://pypi.org/project/dynabench (URL)