Automated Organization Profile

Forschungszentrum Jülich, IBG-3: Agrosphäre

Current S-Index

1.2

Sum of Dataset Indices for all datasets

Average Dataset Index per Dataset

0.6

Average Dataset Index per dataset

Total Datasets

2

Total datasets in this organization

Average FAIR Score

15.4%

Average FAIR Score per dataset

Total Citations

2

Total citations to the organization's datasets

Total Mentions

0

Total mentions of the organization's datasets

S-Index Interpretation

S-Index Over Time

Cumulative Citations Over Time

Cumulative Mentions Over Time

Datasets

A comprehensive dataset of vegetation states, fluxes of matter and energy, weather, agricultural management, and soil properties from intensively monitored crop sites in Western Germany (Version: 1)

A collection of field data from four agricultural sites in the Rur catchment in Western Germany collected in the frame of the Transregional Collaborative Research Centre 32 “Patterns in Soil-Vegetation-Atmosphere-Systems: Monitoring, Modelling and Data Assimilation” (TR32). The dataset includes data on vegetation (states and fluxes), weather, soil, and agricultural management. Vegetation-related data comprises fresh and dry biomass (green and brown, predominantly per organ), plant height, green and brown leaf area index, phenological development state, nitrogen and carbon content, and carbon-, energy- and water-fluxes for a variety of agricultural plants. In addition, masses of harvest residues and regrowth of vegetation after harvest or before planting of the main crop are included. Data on agricultural management includes sowing and harvest dates, and information on cultivation, fertilization and agrochemicals. The dataset also includes gap-filled weather data and soil parameters (particle size distributions, carbon and nitrogen contents). This data can be useful for development and validation of remote sensing products. A detailed description of the dataset can be found in Reichenau et al. (2020).

Authors

  • Reichenau, Tim G. ;
  • Korres, Wolfgang ;
  • Schmidt, Marius ;
  • Graf, Alexander ;
  • Welp, Gerd ;
  • Meyer, Nele ;
  • Stadler, Anja ;
  • Brogi, Cosimo ;
  • Schneider, Karl
1 Citation0 Mentions15% FAIR0.7 Dataset Index
10.5880/tr32db.39January 2020

Data to Understanding soil and plant interaction by combining ground‐based quantitative electromagnetic induction and airborne hyperspectral data

This data set contains ground-based apparent electrical conductivity (ECa) of eight depth ranges of investigation. These were inverted for a three-layer electrical conductivity model. Five .dat files contain the depth-specific inverted electrical conductivity and respective layer thicknesses. Three dat-files correspond to airborne plant performance data. Additionally, six figures show the linear regressions between soil information (electrical conductivity property) and plant performance and one video shows the quasi-3D EMI inversion results.

Authors

  • von Hebel, Christian ;
  • Matveeva, Maria ;
  • Verweij, Elizabeth ;
  • Rademske, Patrick ;
  • Kaufmann, Manuela Sarah ;
  • Brogi, Cosimo ;
  • Vereecken, Harry ;
  • Rascher, Uwe ;
  • van der Kruk, Jan
1 Citation0 Mentions15% FAIR0.5 Dataset Index
10.5880/tr32db.31January 2018