2009
DOI: 10.1029/2008jd011606
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Homogenization of daily maximum temperature series in the Mediterranean

Abstract: [1] Homogenization of atmospheric variables to detect and attribute past and present climate trends and to predict scenarios of future meteorological extreme events is a crucial issue for the reliability of analysis results. Here we present a quality control and new homogenization method (PENHOM) based on a penalized log likelihood procedure and a nonlinear model applied to 174 daily summer maximum temperature series in the Greater Mediterranean Region covering the last 50-100 years. The break detection method… Show more

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Cited by 66 publications
(79 citation statements)
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“…Progress is being made on daily homogenisation for temperature, but so far only for country-scale networks. In some cases change points are detected and inhomogeneity magnitudes determined on longer timescales (monthly or annual), and then the daily data are adjusted (Vincent et al, 2002;Kuglitsch et al, 2009;Mestre et al, 2011;Trewin, 2013). Others use detailed metadata (Auchmann and Brönnimann, 2012) or statistical methods (Brandsma and Können, 2006;Della-Marta and Wanner, 2006;Yan and Jones, 2008;Toreti et al, 2010;Rienzner and Gandolfi, 2013) to detect inhomogeneities and also apply the adjustments on a daily basis.…”
Section: Introductionmentioning
confidence: 99%
“…Progress is being made on daily homogenisation for temperature, but so far only for country-scale networks. In some cases change points are detected and inhomogeneity magnitudes determined on longer timescales (monthly or annual), and then the daily data are adjusted (Vincent et al, 2002;Kuglitsch et al, 2009;Mestre et al, 2011;Trewin, 2013). Others use detailed metadata (Auchmann and Brönnimann, 2012) or statistical methods (Brandsma and Können, 2006;Della-Marta and Wanner, 2006;Yan and Jones, 2008;Toreti et al, 2010;Rienzner and Gandolfi, 2013) to detect inhomogeneities and also apply the adjustments on a daily basis.…”
Section: Introductionmentioning
confidence: 99%
“…For this reason, time series undergo a number of suitable homogeneity statistical procedures and they are homogenised whenever one or more break points are identified (e.g. Aguilar et al, 2003;Kuglitsch et al, 2009). Then, the variation of climatic variables (in terms of differences or, in the case of precipitation, percentage differences) are estimated through the application of statistical models for trend recognition and linear or piecewise-linear statistical models for trends estimate (e.g.…”
Section: Climate Trends Estimatementioning
confidence: 99%
“…These series are selected according to quality, completeness, and abundance of highly correlated neighboring series for correction. The inhomogeneities are detected by comparing the series with a set of highly correlated time series and validated by applying to the annual series the penalized maximal t (PMT) tests (Wang 2008;Wang et al 2007) and the test of Caussinus and Mestre (2004) [for details, see also Kuglitsch et al (2009) , respectively. For the raw series of Bozkurt and Corfu, the trends have erroneous slope.…”
Section: Simulation and Case Studiesmentioning
confidence: 99%