Scientific Reports (Jan 2023)

A widely-used eddy covariance gap-filling method creates systematic bias in carbon balance estimates

  • Henriikka Vekuri,
  • Juha-Pekka Tuovinen,
  • Liisa Kulmala,
  • Dario Papale,
  • Pasi Kolari,
  • Mika Aurela,
  • Tuomas Laurila,
  • Jari Liski,
  • Annalea Lohila

DOI
https://doi.org/10.1038/s41598-023-28827-2
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 9

Abstract

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Abstract Climate change mitigation requires, besides reductions in greenhouse gas emissions, actions to increase carbon sinks in terrestrial ecosystems. A key measurement method for quantifying such sinks and calibrating models is the eddy covariance technique, but it requires imputation, or gap-filling, of missing data for determination of annual carbon balances of ecosystems. Previous comparisons of gap-filling methods have concluded that commonly used methods, such as marginal distribution sampling (MDS), do not have a significant impact on the carbon balance estimate. By analyzing an extensive, global data set, we show that MDS causes significant carbon balance errors for northern (latitude $$>60^\circ$$ > 60 ∘ ) sites. MDS systematically overestimates the carbon dioxide (CO $$_2$$ 2 ) emissions of carbon sources and underestimates the CO $$_2$$ 2 sequestration of carbon sinks. We also reveal reasons for these biases and show how a machine learning method called extreme gradient boosting or a modified implementation of MDS can be used to substantially reduce the northern site bias.