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Persistency as a reference in determining rare event forecasting skill (CROSBI ID 630179)

Prilog sa skupa u zborniku | sažetak izlaganja sa skupa | međunarodna recenzija

Odak Plenković, Iris ; Pasarić, Zoran Persistency as a reference in determining rare event forecasting skill. 2014

Podaci o odgovornosti

Odak Plenković, Iris ; Pasarić, Zoran

engleski

Persistency as a reference in determining rare event forecasting skill

In this work skill score with persistency forecasting as a referent model (SSp) is defined using several verification measures such as accuracy, critical success index, polychoric correlation coefficient and other widely used skill scores (Heidke skill score, SEEPS, etc.). Persistency forecasting used in determining skill, unlike random chance, gains from information of current weather. Question that needs to be answered is: will SSp appropriately describe skill of rare event forecast? Score SSp is tested at climatologically different locations on daily cumulative precipitation forecasts of two numerical models: • ALADIN (Aire Limiteé Adaptation Dynamique dé velopement InterNational) regional model with 8 km horizontal resolution • ECMWF (European Centre for Medium-Range Weather Forecasts) global model with 0.25° grid spacing. Precipitation is considered as a categorical predictand with three categories: dry, light and heavy precipitation. Dry category dominates the contingency table, while heavy precipitation is considered as rare event. Skill score defined in this way inherits characteristics of original measure (M) that is used to create it, but it has lower value than M. Difference between SSp and M enlarges if average M value reduces or if value of original measure for persistency forecasting (P) enlarges. The latter is important because P is high for climatologically frequent categorie s such as dry weather, but low for rare event categories. This way correct forecasting of rare event is rewarded more than correct forecasting of common event. Including information about current weather in determining skill efficiently reduces sensitivity to climatological probability of defined categories. Consequently, SSp appropriately describes the skill of rare event forecasting and should be used for evaluation, validation or inter-comparison of different numerical and physical schemes.

forecast verification; precipitation; skill score; numerical weather prediction; persistence

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Podaci o prilogu

2014.

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objavljeno

Podaci o matičnoj publikaciji

Podaci o skupu

Workshop on advances in meso- and micro- meteorology

predavanje

03.11.2014-04.11.2014

Donja Stubica, Hrvatska

Povezanost rada

Geologija

Poveznice