Assessing potential of sparse‐input reanalyses for centennial‐scale land surface air temperature homogenisation

dc.contributor.author Peter Thorne
dc.contributor.author Ian M. Gillespie
dc.contributor.author Gilbert P. Compo
dc.contributor.author Leo Haimberger
dc.control.author Gilbert P. Compo
dc.date.accessioned 2025-06-17T17:08:01Z
dc.date.available 2025-06-17T17:08:01Z
dc.date.issued 2020-11-03
dc.description.abstract <jats:title>Abstract</jats:title><jats:p>Observations from the historical meteorological observing network contain many artefacts of non‐climatic origin which must be accounted for prior to using these data in climate applications. State‐of‐the‐art homogenisation approaches use various flavours of pairwise comparison between a target station and candidate neighbour station series. Such approaches require an adequate number of neighbours of sufficient quality and comparability – a condition that is met for most station series since the mid‐20th Century. However, pairwise approaches have challenges where suitable neighbouring stations are sparse, as remains the case in vast regions of the globe and is common almost everywhere prior to the early 20th Century. Modern sparse‐input centennial reanalysis products continue to improve and offer a potential alternative to pairwise comparison, particularly where and when observations are sparse. They do not directly ingest or use land‐based surface temperature observations, so they are a formally independent estimate. This may be particularly helpful in cases where structurally similar changes exist across broad networks, which challenges current techniques in the absence of metadata. They also potentially offer a valuable methodologically distinct method, which would help explore structural uncertainty in homogenisation techniques. The present study compares the potential of spatially‐interpolated sparse‐input reanalysis products to neighbour‐based approaches to perform homogenisation of global monthly land surface air temperature records back to 1850 based upon the statistical properties of station‐minus‐reanalysis and station‐minus‐neighbour series. This shows that neighbour‐based approaches likely remain preferable in data dense regions and epochs. However, the most recent reanalysis product, NOAA‐CIRES‐DOE 20CRv3, is potentially preferable in cases where insufficient neighbours are available. This may in particular affect long‐term global average estimates where a small number of long‐term stations in data sparse regions will make substantial contributions to global estimates and may contain missed data artefacts in present homogenisation approaches.</jats:p>
dc.description.volume 41
dc.identifier.doi 10.1002/joc.6898
dc.identifier.issn 0899-8418
dc.identifier.issn 1097-0088
dc.identifier.openaire doi_dedup___:8b291bb27c9c88aec1a257bfec546038
dc.identifier.uri https://ror.circle-u.eu/handle/123456789/822688
dc.openaire.affiliation University of Vienna
dc.openaire.collaboration 1
dc.publisher Wiley
dc.rights OPEN
dc.rights.license CC BY
dc.source International Journal of Climatology
dc.subject 105206 Meteorology
dc.subject 570
dc.subject 550
dc.subject reanalyses
dc.subject surface temperatures
dc.subject DATA SET
dc.subject IN-SITU
dc.subject 105206 Meteorologie
dc.subject ENSEMBLE
dc.subject UNCERTAINTIES
dc.subject CLIMATE
dc.subject homogeneity
dc.subject.fos 01 natural sciences
dc.subject.fos 0105 earth and related environmental sciences
dc.subject.sdg 13. Climate action
dc.title Assessing potential of sparse‐input reanalyses for centennial‐scale land surface air temperature homogenisation
dc.type publication

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