Data for "Improving agricultural carbon monitoring with Sentinel-2 and eddy-covariance-based plant productivity estimates"

Description

This archive contains data for the manuscript "Improving agricultural carbon monitoring with Sentinel-2 and eddy-covariance-based plant productivity estimates" submitted for publication in Carbon Management and available as a preprint at https://doi.org/10.22541/essoar.173712580.08052217/v1 The archive consists of the following items: 1. The daily CO2 fluxes from five Eddy Covariance sites in Finland. The data are CSV files under the flux_data directory, with the following columns: - (nameless): Date as YYYY-MM-DD - NEE: Net Ecosystem Exchange (g CO2 m-2 day-1); negative values denote downwards flux - NEE_unc: uncertainty of the Net Ecosystem Exchange (g CO2 m-2 day-1) - GPP: Gross Primary Productivity (g CO2 m-2 day-1) - GPP_unc: uncertainty of the Gross Primary Productivity (g CO2 m-2 day-1) - TER: Total Ecosystem Respiration (g CO2 m-2 day-1) - TER_unc: uncertainty of the Total Ecosystem Respiration (g CO2 m-2 day-1) - Gapfill: fraction of the values that were gap-filled for that day. 2. The fitted GPP model parameters (1000 samples of the posterior distribution; example/params.csv) and an example script (example/example.py) for running the model. Running the script requires the numpyro, pandas and seaborn libraries to be installed.
Show more

Year of publication

2025

Type of data

Authors

Aaltonen, Hermanni - Creator

Korkiakoski, Mika - Creator

Koskinen, Markku - Creator

Liski, Jari - Creator

Lohila, Annalea - Creator

Mattila, Tuomas - Creator

Nevalainen, Olli - Creator

Pihlatie, Mari - Creator

Vekuri, Henriikka - Creator

Vira, Julius - Creator

Project

Other information

Fields of science

Geosciences

Language

English

Open access

Open

License

Creative Commons Attribution 4.0 International (CC BY 4.0)

Keywords

gross primary productivity, remote sensing, eddy covariance, soil carbon

Subject headings

Temporal coverage

undefined

Related to this research data