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Footprints for Munich-Oberpostdirektion at 30-min resolution - 2025-11-27

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2025-11-27
11676/EQqhv_ts3W6llRdQED5MJmp4 (link)

Daily flux footprints for the Munich-Oberpostdirektion flux-tower in Germany at 30-minute temporal resolution. Each dataset contains up to 48 footprints with the following variables each: Time, X, Y, Boundary Layer Height Quality Flag, and Footprint Climatology. The flux footprints are computed using FFP as described in Kljun et al. (2015), https://doi.org/10.5194/gmd-8-3695-2015, at 10-meter spatial resolution using ETC L2 Fluxes from Oberpostdirektion, https://hdl.handle.net/11676/WNOldo0yJzYBwDyrywI3oQaX. The projection can be customized, but the footprints were calculated in UTM 32N. This work is part of the ICOS Cities/PAUL Pilot Applications in Urban Landscapes project.

This data file was produced following the netCDF C API requirements for axis definitions (row major).
2025-11-27 00:00:00
2025-11-27 23:00:00
Molinier, B., Kljun, N. (2026). Footprints for Munich-Oberpostdirektion at 30-min resolution - 2025-11-27, 2025-11-27, ICOS Cities, https://hdl.handle.net/11676/EQqhv_ts3W6llRdQED5MJmp4
BibTex
@misc{https://hdl.handle.net/11676/EQqhv_ts3W6llRdQED5MJmp4,
  author={Molinier, Betty and Kljun, Natascha},
  title={Footprints for Munich-Oberpostdirektion at 30-min resolution - 2025-11-27, 2025-11-27},
  year={2026},
  note={Daily flux footprints for the Munich-Oberpostdirektion flux-tower in Germany at 30-minute temporal resolution. Each dataset contains up to 48 footprints with the following variables each: Time, X, Y, Boundary Layer Height Quality Flag, and Footprint Climatology. The flux footprints are computed using FFP as described in Kljun et al. (2015), https://doi.org/10.5194/gmd-8-3695-2015, at 10-meter spatial resolution using ETC L2 Fluxes from Oberpostdirektion, https://hdl.handle.net/11676/WNOldo0yJzYBwDyrywI3oQaX. The projection can be customized, but the footprints were calculated in UTM 32N. This work is part of the ICOS Cities/PAUL Pilot Applications in Urban Landscapes project.},
  keywords={Flux footprints, atmospheric modelling, urban flux, ICOS Cities},
  url={https://hdl.handle.net/11676/EQqhv_ts3W6llRdQED5MJmp4},
  publisher={Carbon Portal},
  copyright={http://meta.icos-cp.eu/ontologies/cpmeta/icosLicence},
  pid={11676/EQqhv_ts3W6llRdQED5MJmp4}
}
RIS
TY - DATA
T1 - Footprints for Munich-Oberpostdirektion at 30-min resolution - 2025-11-27, 2025-11-27
ID - 11676/EQqhv_ts3W6llRdQED5MJmp4
PY - 2026
AB - Daily flux footprints for the Munich-Oberpostdirektion flux-tower in Germany at 30-minute temporal resolution. Each dataset contains up to 48 footprints with the following variables each: Time, X, Y, Boundary Layer Height Quality Flag, and Footprint Climatology. The flux footprints are computed using FFP as described in Kljun et al. (2015), https://doi.org/10.5194/gmd-8-3695-2015, at 10-meter spatial resolution using ETC L2 Fluxes from Oberpostdirektion, https://hdl.handle.net/11676/WNOldo0yJzYBwDyrywI3oQaX. The projection can be customized, but the footprints were calculated in UTM 32N. This work is part of the ICOS Cities/PAUL Pilot Applications in Urban Landscapes project.
UR - https://hdl.handle.net/11676/EQqhv_ts3W6llRdQED5MJmp4
PB - Carbon Portal
AU - Molinier, Betty
AU - Kljun, Natascha
KW - Flux footprints
KW - atmospheric modelling
KW - urban flux
KW - ICOS Cities
ER - 
munich_footprint_251127.nc
47 MB (49196515 bytes)
3

Acquisition

2025-11-27 00:00:00
2025-11-27 23:00:00

Production

2026-05-21 11:06:00

Statistics

0

Submission

2026-06-29 14:55:16
2026-06-29 14:55:14

Technical information

110aa1bffb6cdd6ea5951750103e4c266a78efc084ae23ffc023f4f108eac732
EQqhv/ts3W6llRdQED5MJmp478CEriP/wCP08QjqxzI
S: 48.080071, W: 11.449206, N: 48.214891, E: 11.650665
Flux footprints ICOS Cities atmospheric modelling urban flux
3 pilot cities
15 countries
15 cities
30 scientific partners
13M€ funding
2021-2025
EU flag PAUL, Pilot Applications in Urban Landscapes - Towards integrated city observatories for greenhouse gases (ICOS Cities), has received funding from the European Union’s Horizon 2020 Research and Innovation Programme under grant agreement No 101037319.