Abstract

Abstract. In this paper, we implement the region-of-influence (ROI) approach for modelling probabilities of heavy 1-day and 5-day precipitation amounts in the Czech Republic. The pooling groups are constructed according to (i) the regional homogeneity criterion (assessed by a built-in regional homogeneity test), which requires that in a pooling group the distributions of extremes are identical after scaling by the at-site mean; and (ii) the 5T rule, which sets the minimum number of stations to be included in a pooling group for estimation of a quantile corresponding to return period T. The similarity of sites is evaluated in terms of climatological and geographical site characteristics. We carry out a series of sensitivity analyses by means of Monte Carlo simulations in order to explore the importance of the individual site attributes, including hybrid pooling schemes that combine both types of the site attributes with different relative weights. We conclude that in a dense network of precipitation stations in the Czech Republic (on average 1 station in a square of about 20×20 km), the actual distance between the sites plays the most important role in determining the similarity of probability distributions of heavy precipitation. There are, however, differences between the optimum pooling schemes depending on the duration of the precipitation events. While in the case of 1-day precipitation amounts the pooling scheme based on the geographical proximity of sites outperforms all hybrid schemes, for multi-day amounts the inclusion of climatological site characteristics (although with much lower weights compared to the geographical distance) enhances the performance of the pooling schemes. This finding is in agreement with the climatological expectation since multi-day heavy precipitation events are more closely linked to some typical precipitation patterns over central Europe (related e.g. to the varied roles of Atlantic and Mediterranean influences) while the dependence of 1-day extremes on climatological characteristics such as mean annual precipitation is much weaker. The findings of the paper show a promising perspective for an application of the ROI methodology in evaluating outputs of regional climate models with high resolution: the pooling schemes might serve for defining weighting functions, and the large spatial variability in the grid-box estimates of high quantiles of precipitation amounts may efficiently be reduced.

Highlights

  • Frequency analysis, which aims at estimating recurrence probabilities of rare events, is a specific field of statistical hydrology and climatology that has been intensively developed over recent decades and widely applied in studies of hydrological and climatological phenomena

  • The models were based on 3 climatological site characteristics (Sect. 2.2) and labelled as ROIcli3 (ROIgeo3), and both were associated with the model ROIsta based on 3 site statistics (ROIsta3) used for estimating the “true” quantiles during the simulation procedures (Sect. 3.3)

  • The sensitivity analysis examined the performance of the ROI models after removing one or two site attributes from the basic ROI pooling scheme (ROIcli3, ROIgeo3) or the “true” frequency model (ROIsta3)

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Summary

Introduction

Frequency analysis, which aims at estimating recurrence probabilities of rare events, is a specific field of statistical hydrology and climatology that has been intensively developed over recent decades and widely applied in studies of hydrological and climatological phenomena. Frequency analysis usually benefits from a regional approach, applicable if the regional homogeneity criterion is met; that is, the sites that form a given region share the same distribution function of the examined variable apart from a site-specific scaling factor called the index value (Dalrymple, 1960). Different aspects of the regional approach to frequency analysis have been examined in connection with heavy precipitation Gellens, 2002; Sveinsson et al, 2002; Fowler and Kilsby, 2003; Boni et al, 2006; Wallis et al, 2007), floods Kysely: ROI precipitation frequency analysis in the Czech Republic

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