Repository logoRepository logoRepository logoRepository logo
Repository logoRepository logoRepository logoRepository logo
  • Communities & Collections
  • Research Outputs
  • Employees
  • AAAHigh contrastHigh contrast
    EN PL
    • Log In
      Have you forgotten your password?
AAAHigh contrastHigh contrast
EN PL
  • Log In
    Have you forgotten your password?
  1. Home
  2. Bibliografia UPP
  3. Bibliografia UPP
  4. Monitoring of carbon-water fluxes at Eurasian meteorological stations using random forest and remote sensing
 
Full item page
Options

Monitoring of carbon-water fluxes at Eurasian meteorological stations using random forest and remote sensing

Type
Journal article
Language
English
Date issued
2023
Author
Xie, Mingjuan
Ma, Xiaofei
Wang, Yuangang
Li, Chaofan
Shi, Haiyang
Yuan, Xiuliang
Hellwich, Olaf
Chen, Chunbo
Zhang, Wenqiang
Zhang, Chen
Ling, Qing
Gao, Ruixiang
Zhang, Yu
Ochege, Friday Uchenna
Frankl, Amaury
De Maeyer, Philippe
Buchmann, Nina
Feigenwinter, Iris
Olesen, Jørgen E.
Juszczak, Radosław 
Jacotot, Adrien
Korrensalo, Aino
Pitacco, Andrea
Varlagin, Andrej
Shekhar, Ankit
Lohila, Annalea
Carrara, Arnaud
Brut, Aurore
Kruijt, Bart
Loubet, Benjamin
Heinesch, Bernard
Chojnicki, Bogdan 
Helfter, Carole
Vincke, Caroline
Shao, Changliang
Bernhofer, Christian
Brümmer, Christian
Wille, Christian
Tuittila, Eeva-Stiina
Nemitz, Eiko
Meggio, Franco
Dong, Gang
Lanigan, Gary
Niedrist, Georg
Wohlfahrt, Georg
Zhou, Guoyi
Goded, Ignacio
Gruenwald, Thomas
Olejnik, Janusz 
Jansen, Joachim
Neirynck, Johan
Tuovinen, Juha-Pekka
Zhang, Junhui
Klumpp, Katja
Pilegaard, Kim
Šigut, Ladislav
Klemedtsson, Leif
Tezza, Luca
Hörtnagl, Lukas
Urbaniak, Marek 
Roland, Marilyn
Schmidt, Marius
Sutton, Mark A.
Hehn, Markus
Saunders, Matthew
Mauder, Matthias
Aurela, Mika
Korkiakoski, Mika
Du, Mingyuan
Vendrame, Nadia
Kowalska, Natalia
Leahy, Paul G.
Alekseychik, Pavel
Shi, Peili
Weslien, Per
Chen, Shiping
Fares, Silvano
Friborg, Thomas
Tallec, Tiphaine
Kato, Tomomichi
Sachs, Torsten
Maximov, Trofim
di Cella, Umberto Morra
Moderow, Uta
Li, Yingnian
He, Yongtao
Kosugi, Yoshiko
Luo, Geping
Faculty
Wydział Inżynierii Środowiska i Inżynierii Mechanicznej
Journal
Scientific data
ISSN
2052-4463
DOI
10.1038/s41597-023-02473-9
Web address
https://www.nature.com/articles/s41597-023-02473-9
Volume
10
Number
1
Pages from-to
art. 587
Abstract (EN)
Simulating the carbon-water fluxes at more widely distributed meteorological stations based on the sparsely and unevenly distributed eddy covariance flux stations is needed to accurately understand the carbon-water cycle of terrestrial ecosystems. We established a new framework consisting of machine learning, determination coefficient (R2), Euclidean distance, and remote sensing (RS), to simulate the daily net ecosystem carbon dioxide exchange (NEE) and water flux (WF) of the Eurasian meteorological stations using a random forest model or/and RS. The daily NEE and WF datasets with RS-based information (NEE-RS and WF-RS) for 3774 and 4427 meteorological stations during 2002–2020 were produced, respectively. And the daily NEE and WF datasets without RS-based information (NEE-WRS and WF-WRS) for 4667 and 6763 meteorological stations during 1983–2018 were generated, respectively. For each meteorological station, the carbon-water fluxes meet accuracy requirements and have quasi-observational properties. These four carbon-water flux datasets have great potential to improve the assessments of the ecosystem carbon-water dynamics.
Keywords (EN)
  • carbon fluxes

  • water fluxes

  • FLUXNET

  • terrestrial ecosystems

  • eddy covariance

License
cc-bycc-by CC-BY - Attribution
Open access date
September 7, 2023
Fundusze Europejskie
  • About repository
  • Contact
  • Privacy policy
  • Cookies

Copyright 2025 Uniwersytet Przyrodniczy w Poznaniu

DSpace Software provided by PCG Academia