Skip to main content
Dataverse Creation Restriction – Please note: institutional or project level dataverses have to be created with confirming permissions. See details in guide.
Campus Collection (Forschungszentrum Jülich GmbH)
A lighthouse in the data deluge.
A "catch all" like collection of datasets for research data not fitting elsewhere.
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

1,781 to 1,790 of 1,803 Results
Network Common Data Form - 623.8 MB - SHA-256: 8f27b8c82d6d73250112146a0223a227c88fd1cd6ac12df05eb3996ddc69400d
Reconstructed European monthly water table depth anomaly (wtd_a) data RD1, obtained by LSTM-TL with ERA5 bias corrected precipitation anomalies (pr_a) and ERA5 Land soil moisture anomalies (θ_a) as input
Network Common Data Form - 639.7 MB - SHA-256: c60c893c86f972589f784c97b6051c3d4ed8ad09427b1a16d2889ed973adf7c9
Reconstructed European monthly water table depth anomaly (wtd_a) data RD2, obtained by LSTM-TL with ERA5 bias corrected precipitation anomalies (pr_a) and GLEAM soil moisture anomalies (θ_a) as input
Network Common Data Form - 394.5 MB - SHA-256: b6a76b48b023f524141fa7cc457adbc1989be928e4ab3149b540a5d328774b07
Reconstructed European monthly water table depth anomaly (wtd_a) data RD3, obtained by LSTM-TL with COSMO-REA6 precipitation anomalies (pr_a) and ERA5 Land soil moisture anomalies (θ_a) as input
Network Common Data Form - 394.5 MB - SHA-256: fa4354b03f608f69de350c36685c787cafd35c9dc8122e26b4ca10e3ebc0ebfd
Reconstructed European monthly water table depth anomaly (wtd_a) data RD4, obtained by LSTM-TL with COSMO-REA6 precipitation anomalies (pr_a) and GLEAM soil moisture anomalies (θ_a) as input
Network Common Data Form - 646.4 MB - SHA-256: 0824e4de3b2c67e1d15c675a2f6ebc1b45ad23e312c07675cef64339c42c242f
Reconstructed European monthly water table depth anomaly (wtd_a) data RD5, obtained by LSTM-TL with ERA5 Land precipitation anomalies (pr_a) and ERA5 Land soil moisture anomalies (θ_a) as input
Network Common Data Form - 639.7 MB - SHA-256: c582ead1d144681750a6b0435c338cd8eb99f473440f30d8704c41a9f08cfb2c
Reconstructed European monthly water table depth anomaly (wtd_a) data RD6, obtained by LSTM-TL with ERA5 Land precipitation anomalies (pr_a) and GLEAM soil moisture anomalies (θ_a) as input
Network Common Data Form - 167.9 MB - SHA-256: d79a0dbb404e140e6777f2c0404d05ac3d1c91d263813741a1af0d1f57bd829a
Input averaged monthly precipitation anomalies (pr_a) from observational datasets for the period 1996-2016
Network Common Data Form - 167.9 MB - SHA-256: 3473241cdc8d38c631f496de78817381eafe258d35f2c73aa8b1570fdce97765
Input averaged monthly soil moisture anomalies (θ_a) from observational datasets for the period 1996-2016
Network Common Data Form - 167.9 MB - SHA-256: 9ff63866d5dd8fda2554928f14414f952e705a4febed42a6b24f8c263f37e20d
Monthly water table depth anomalies generated from the proposed LSTM networks of E1.2 (evapotranspiration anomaly)
Network Common Data Form - 167.9 MB - SHA-256: b555722ae86359273a47c0859629ae89915fd4c1b19e4cb5c082d1fcfe63535c
Monthly water table depth anomalies generated from the proposed LSTM networks of E1.3 (soil moisture anomaly)
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.

+ =