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
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Published:2020-10-01
Issue:4
Volume:12
Page:2333-2364
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ISSN:1866-3516
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Container-title:Earth System Science Data
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language:en
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Short-container-title:Earth Syst. Sci. Data
Author:
Reichenau Tim G.ORCID, Korres Wolfgang, Schmidt MariusORCID, Graf AlexanderORCID, Welp GerhardORCID, Meyer Nele, Stadler Anja, Brogi CosimoORCID, Schneider Karl
Abstract
Abstract. The development and validation of hydroecological
land-surface models to simulate agricultural areas require extensive data
on weather, soil properties, agricultural management, and vegetation states
and fluxes. However, these comprehensive data are rarely available since
measurement, quality control, documentation, and compilation of the different
data types are costly in terms of time and money. Here, we present a
comprehensive dataset, which was collected at four agricultural sites within
the Rur catchment in western Germany in the framework of the Transregional
Collaborative Research Centre 32 (TR32) “Patterns in
Soil–Vegetation–Atmosphere Systems: Monitoring, Modeling and Data
Assimilation”. Vegetation-related data comprise 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 (overall > 17 000 entries), and masses of harvest residues
and regrowth of vegetation after harvest or before planting of the main crop
(> 250 entries). Vegetation data including LAI were collected in
frequencies of 1 to 3 weeks in the years 2015 until 2017, mostly
during overflights of the Sentinel 1 and Radarsat 2 satellites. In addition,
fluxes of carbon, energy, and water (> 180 000 half-hourly
records) measured using the eddy covariance technique are included. Three
flux time series have simultaneous data from two different heights. Data on
agricultural management include sowing and harvest dates as well as information
on cultivation, fertilization, and agrochemicals (27 management periods). The
dataset also includes gap-filled weather data (> 200 000 hourly
records) and soil parameters (particle size distributions, carbon and
nitrogen content; > 800 records). These data can also be useful
for development and validation of remote-sensing products. The dataset
is hosted at the TR32 database
(https://www.tr32db.uni-koeln.de/data.php?dataID=1889, last access: 29 September 2020) and has the DOI
https://doi.org/10.5880/TR32DB.39 (Reichenau et al., 2020).
Funder
Deutsche Forschungsgemeinschaft
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
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