The COST (European Cooperation in Science and Technology) Action ES0601: Advances in homogenization methods of climate series: an integrated approach (HOME) has executed a blind intercomparison and validation study for monthly homogenization algorithms. Time series of monthly temperature and precipitation were evaluated because of their importance for climate studies. The algorithms were validated against a realistic benchmark dataset. Participants provided 25 separate homogenized contributions as part of the blind study as well as 22 additional solutions submitted after the details of the imposed inhomogeneities were revealed. These homogenized datasets were assessed by a number of performance metrics including i) the centered root mean square error relative to the true homogeneous values at various averaging scales, ii) the error in linear trend estimates and iii) traditional contingency skill scores. The metrics were computed both using the individual station series as well as the network average regional series. The performance of the contributions depends significantly on the error metric considered. Although relative homogenization algorithms typically improve the homogeneity of temperature data, only the best ones improve precipitation data. Moreover, state-of-theart relative homogenization algorithms developed to work with an inhomogeneous reference are shown to perform best. The study showed that currently automatic algorithms can perform as well as manual ones.

Benchmarking Homogenization Algorithms for Monthly Data

ACQUAOTTA, FIORELLA;FRATIANNI, SIMONA;
2013-01-01

Abstract

The COST (European Cooperation in Science and Technology) Action ES0601: Advances in homogenization methods of climate series: an integrated approach (HOME) has executed a blind intercomparison and validation study for monthly homogenization algorithms. Time series of monthly temperature and precipitation were evaluated because of their importance for climate studies. The algorithms were validated against a realistic benchmark dataset. Participants provided 25 separate homogenized contributions as part of the blind study as well as 22 additional solutions submitted after the details of the imposed inhomogeneities were revealed. These homogenized datasets were assessed by a number of performance metrics including i) the centered root mean square error relative to the true homogeneous values at various averaging scales, ii) the error in linear trend estimates and iii) traditional contingency skill scores. The metrics were computed both using the individual station series as well as the network average regional series. The performance of the contributions depends significantly on the error metric considered. Although relative homogenization algorithms typically improve the homogeneity of temperature data, only the best ones improve precipitation data. Moreover, state-of-theart relative homogenization algorithms developed to work with an inhomogeneous reference are shown to perform best. The study showed that currently automatic algorithms can perform as well as manual ones.
2013
Ninth International Temperature Symposium
Los Angeles USA
19-23 march 2012
AIP Conference Proceedings
AIP Publishing LLC
1060
1065
http://proceedings.aip.org/
Surface climate network; instrumental climate records, monthly temperature records, monthly precipitation
V. K. C. Venema; O. Mestre; E. Aguilar; I. Auer; J. A. Guijarro; P. Domonkos; G. Vertacnik; T. Szentimrey; P. Stepanek; P. Zahradnicek; J. Viarre; G. Müller-Westermeier; M. Lakatos; C. N. Williams; M. J. Menne; R. Lindau; D. Rasol; E. Rustemeier; K. Kolokythas; T. Marinova; L. Andresen; F. Acquaotta; S. Fratianni; S. Cheval; M. Klancar; M Brunetti; C. Gruber; M. Prohom Duran; T. Likso; P. Esteban; T. Brandsma; K. Willett
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/138704
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