Skip to main content
AI Crawler DoS Attacks | Dataverse Creation Restriction – Please note:
  • We are experiencing a coordinated attack by AI training crawler bots, which slow down the service. We are working on mitigating the problem and apologize for any inconveniences.
  • Institutional or project level dataverses have to be created with confirming permissions. See details in guide.
Jülich DATA (Forschungszentrum Jülich GmbH)
Metrics
157,213 Downloads
Featured Dataverses

In order to use this feature you must have at least one published dataverse.

Publish Dataverse

Are you sure you want to publish your dataverse? Once you do so it must remain published.

Publish Dataverse

This dataverse cannot be published because the dataverse it is in has not been published.

Delete Dataverse

Are you sure you want to delete your dataverse? You cannot undelete this dataverse.

Find Advanced Search

5,681 to 5,690 of 5,923 Results
MATLAB Data - 205 B - SHA-256: 49c7eef5faf1752b5f46963a215391ff451f6c893c121025fe602b3d2558ceb7
MATLAB Data - 565.5 MB - SHA-256: 47ca34c6753850d90b42af54d5bba04ac4ad3b15b09510a2fa03070d011f09a3
MATLAB Data - 211 B - SHA-256: ff61b4e4b2ad1239a326c4e63cc8160c77aade50ce8a20b0c083c1351c40be1b
Network Common Data Form - 335.9 MB - SHA-256: a0ac27eb52a9fbffc8620acdb5ba8eebe44ad11daa0001aeaf59a78b4aa8744f
Monthly groundwater table depth anomalies generated from the proposed LSTM networks
Network Common Data Form - 167.9 MB - SHA-256: cb307f74a193b7dc06443d50c61357fd50625c8bd8610094ba485309e4c4445f
Monthly groundwater table depth anomalies calculated from the TSMP-G2A data set
Network Common Data Form - 167.9 MB - SHA-256: 25188351e4f16eac5a147ff03c402b4699183a02ff2cd28940fb2b0effd4da4f
Monthly precipitation anomalies calculated from the TSMP-G2A data set
Fixed Field Text Data - 53.0 KB - SHA-256: 7790979cf69bcb4f2244044b59e80ef1c66f2c62960f44f208de4908a55e8adf
integer coefficients for non-zero matrix elements up to \nu = 9
Network Common Data Form - 224.3 KB - SHA-256: 029fae4e20e6b01d589f7748b76acd2378a59560ba8be0a4a2e9b6f4b71b4e35
Photolysis rates from the simulation using the Jülich Aqueous-phase Mechanism of Organic Chemistry (JAMOC).
Network Common Data Form - 5.0 KB - SHA-256: 2dbe0b068fdc104b8cb7d5f3c78cc72e276c6de045bc9f9c1e992ba68e5dd70e
Box-model physical properties (liquid water content) from the simulation using the Jülich Aqueous-phase Mechanism of Organic Chemistry (JAMOC).
Network Common Data Form - 1.7 MB - SHA-256: 90b866d23f994989ca5cf29b36f20a854563f4b2fff572bdd390fe9114ff8f41
Tracer mixing ratios from the simulation using the Jülich Aqueous-phase Mechanism of Organic Chemistry (JAMOC).
Add Data

Log in to create a dataverse or add a dataset.

Share Dataverse

Share this dataverse on your favorite social media networks.

Link Dataverse
Reset Modifications

Are you sure you want to reset the selected metadata fields? If you do this, any customizations (hidden, required, optional) you have done will no longer appear.

Contact Jülich DATA Support

Jülich DATA Support

Please fill this out to prove you are not a robot.

+ =