2005
DOI: 10.1002/joc.1135
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A new instrumental precipitation dataset for the greater alpine region for the period 1800-2002

Abstract: The paper describes the development of a dataset of 192 monthly precipitation series covering the greater alpine region (GAR,(4)(5)(6)(7)(8)(9)(10)(11)(12)(13)(14)(15)(16)(17)(18). A few of the time series extend back to 1800. A description is provided of the sometimes laborious processes that were involved in this work: from locating the original sources of the data to homogenizing the records and eliminating as many of the outliers as possible. Locating the records required exhaustive searches of archives cu… Show more

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Cited by 199 publications
(209 citation statements)
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“…To this end, a gridded dataset, constructed interpolating station records on a grid of given spatial resolution, is used. We have considered several databases (Global Air Temperature and Precipitation, NOAA-Center for Climatic Research Department of Geography University of Delaware, 2001; Analysis (Schmidli et al, 2001); HISTALP-ALP-IMP (Auer et al, 2005), and we have selected the monthly precipitation time series of the gridded database CRU TS 1.2 (Mitchell et al, 2003) (New et al, 1999(New et al, , 2000 interpolating station data with a procedure that considers latitude, longitude and elevation as parameters. However, the rain gauge records used for the interpolation in the CRU TS 1.2 data set are not corrected for rain gauge type, wind conditions or anthropogenic disturbances.…”
Section: Datamentioning
confidence: 99%
“…To this end, a gridded dataset, constructed interpolating station records on a grid of given spatial resolution, is used. We have considered several databases (Global Air Temperature and Precipitation, NOAA-Center for Climatic Research Department of Geography University of Delaware, 2001; Analysis (Schmidli et al, 2001); HISTALP-ALP-IMP (Auer et al, 2005), and we have selected the monthly precipitation time series of the gridded database CRU TS 1.2 (Mitchell et al, 2003) (New et al, 1999(New et al, , 2000 interpolating station data with a procedure that considers latitude, longitude and elevation as parameters. However, the rain gauge records used for the interpolation in the CRU TS 1.2 data set are not corrected for rain gauge type, wind conditions or anthropogenic disturbances.…”
Section: Datamentioning
confidence: 99%
“…AC e AE indicam se o testeé para amostra completa (AC) ou amostra de valores extremos (AE). O segundo problema de homogeneidade consideradoé aquele queé mais comum nas séries de dados climáticos com poucas dezenas de anos em comprimento (Auer et al, 2005), com variação abrupta causada por fatores como troca de instrumento e mudança da estação para outra localidade. As séries escolhidas para pesquisar tal variação foram as medianas anuais de precipitação diária, q 0,50 .…”
Section: Controle De Qualidade: Dados Discrepantes (Outliers ) E Aprounclassified
“…The main tools of IH detection are 1) examination of accumulated anomalies [1], 2) rank-order statistics [2,3], 3) multiple linear regression [4,5], 4) t-test based examinations [6,7], 5) multiple analysis with Fisher-test [8], 5) fitting step-function [9]. Looking through reviewing articles about homogenisation methods [10][11][12][13][14][15][16][17] it can be seen that we know many details about homogenisation methods, but uncertainties still exist about their efficiencies, or with other words, about the practical usefulness of individual methods.…”
Section: Introductionmentioning
confidence: 99%