Abstract
Abstract. High-resolution climate data O(1 km) at the catchment scale can be of
great value to both hydrological modellers and end users, in particular for
the study of extreme precipitation. While dynamical downscaling with
convection-permitting models is a valuable approach for producing quality
high-resolution O(1 km) data, its added value can often not be
realized due to the prohibitive computational expense. Here we present a
novel and flexible classification algorithm for discriminating between days
with an elevated potential for extreme precipitation over a catchment and
days without, so that dynamical downscaling to convection-permitting
resolution can be selectively performed on high-risk days only, drastically
reducing total computational expense compared to continuous simulations; the
classification method can be applied to climate model data or reanalyses.
Using observed precipitation and the corresponding synoptic-scale circulation
patterns from reanalysis, characteristic extremal circulation patterns are
identified for the catchment via a clustering algorithm. These extremal
patterns serve as references against which days can be classified as
potentially extreme, subject to additional tests of relevant meteorological
predictors in the vicinity of the catchment. Applying the classification
algorithm to reanalysis, the set of potential extreme days (PEDs) contains
well below 10 % of all days, though it includes essentially all extreme days;
applying the algorithm to reanalysis-driven regional climate simulations over
Europe (12 km resolution) shows similar performance, and the subsequently
dynamically downscaled simulations (2 km resolution) well reproduce the
observed precipitation statistics of the PEDs from the training period. Additional tests on continuous 12 km resolution historical and future (RCP8.5)
climate simulations, downscaled in 2 km resolution time slices, show
the algorithm again reducing the number of days to simulate by over 90 % and
performing consistently across climate regimes. The downscaling framework we
propose represents a computationally inexpensive means of producing
high-resolution climate data, focused on extreme precipitation, at the
catchment scale, while still retaining the advantages of
convection-permitting dynamical downscaling.
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
Cited by
13 articles.
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