Reconstruction of Zonal Precipitation From Sparse Historical Observations Using Climate Model Information and Statistical Learning

  • Marius Egli
  • , Sebastian Sippel
  • , Angeline G. Pendergrass
  • , Iris de Vries
  • , Reto Knutti

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Future projected changes in precipitation substantially impact societies worldwide. However, large uncertainties remain due to sparse historical observational coverage, large internal climate variability, and climate model disagreement. Here, we present a novel reconstruction of seasonally averaged zonal precipitation metrics from sparse rain-gauge data using regularized regression techniques that are trained across climate model simulations. Subsequently, we test the reconstruction on independent satellite data and reanalyzed precipitation, and find a large fraction of historical zonal mean precipitation (ZMP) variability is recovered, in particular over the Northern hemisphere and in parts of the tropics. Finally, we demonstrate that the reconstructed ZMP trends are outside the variability of pre-industrial control simulations, and are largely consistent with the range of historical simulations driven by external forcing. Overall, we illustrate a novel way of estimating seasonally averaged zonal precipitation from gauge data, and trends therein that show a signal very likely caused by human influence.

Original languageEnglish
Article numbere2022GL099826
JournalGeophysical Research Letters
Volume49
Issue number23
DOIs
StatePublished - Dec 16 2022
Externally publishedYes

Keywords

  • hydrological cycle
  • infilling
  • large ensemble
  • precipitation
  • reconstruction
  • statistical learning

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