Abstract
Abstract. This study investigates the use of a nonparametric, tree-based
model, quantile regression forests (QRF), for combining multiple global
precipitation datasets and characterizing the uncertainty of the combined
product. We used the Iberian Peninsula as the study area, with a study period
spanning 11 years (2000–2010). Inputs to the QRF model included three
satellite precipitation products, CMORPH, PERSIANN, and 3B42 (V7); an
atmospheric reanalysis precipitation and air temperature dataset;
satellite-derived near-surface daily soil moisture data; and a terrain
elevation dataset. We calibrated the QRF model for two seasons and two
terrain elevation categories and used it to generate ensemble for these
conditions. Evaluation of the combined product was based on
a high-resolution, ground-reference precipitation dataset (SAFRAN) available
at 5 km 1 h−1 resolution. Furthermore, to evaluate relative
improvements and the overall impact of the combined product in hydrological
response, we used the generated ensemble to force a distributed hydrological
model (the SURFEX land surface model and the RAPID river routing scheme) and
compared its streamflow simulation results with the corresponding simulations
from the individual global precipitation and reference datasets. We concluded
that the proposed technique could generate realizations that successfully
encapsulate the reference precipitation and provide significant improvement
in streamflow simulations, with reduction in systematic and random error on
the order of 20–99 and 44–88 %, respectively, when considering the
ensemble mean.
Funder
Seventh Framework Programme
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
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