Effects of univariate and multivariate bias correction on hydrological impact projections in alpine catchments
<p>Alpine catchments show a high sensitivity to climate variation as they include the elevation range of the snow line. Therefore, the correct representation of climate variables and their interdependence is crucial when describing or predicting hydrological processes. When using climate model...
Main Authors: | , , , , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2019-03-01
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Series: | Hydrology and Earth System Sciences |
Online Access: | https://www.hydrol-earth-syst-sci.net/23/1339/2019/hess-23-1339-2019.pdf |
Summary: | <p>Alpine catchments show a high sensitivity to climate
variation as they include the elevation range of the snow line. Therefore,
the correct representation of climate variables and their interdependence is
crucial when describing or predicting hydrological processes. When using
climate model simulations in hydrological impact studies, forcing
meteorological data are usually downscaled and bias corrected, most often by
univariate approaches such as quantile mapping of individual variables,
neglecting the relationships that exist between climate variables. In this
study we test the hypothesis that the explicit consideration of the relation
between air temperature and precipitation will affect hydrological impact
modelling in a snow-dominated mountain environment. Glacio-hydrological
simulations were performed for two partly glacierized alpine catchments
using a recently developed multivariate bias correction method to
post-process EURO-CORDEX regional climate model outputs between 1976 and
2099. These simulations were compared to those obtained by using the common
univariate quantile mapping for bias correction. As both methods correct
each climate variable's distribution in the same way, the marginal
distributions of the individual variables show no differences. Yet,
regarding the interdependence of precipitation and air temperature, clear
differences are notable in the studied catchments. Simultaneous correction
based on the multivariate approach led to more precipitation below air
temperatures of 0 <span class="inline-formula"><sup>∘</sup></span>C and therefore more simulated snowfall than
with the data of the univariate approach. This difference translated to
considerable consequences for the hydrological responses of the catchments.
The multivariate bias-correction-forced simulations showed distinctly
different results for projected snow cover characteristics, snowmelt-driven
streamflow components, and expected glacier disappearance dates. In all
aspects – the fraction of precipitation above and below 0 <span class="inline-formula"><sup>∘</sup></span>C,
the simulated snow water equivalents, glacier volumes, and the streamflow
regime – simulations resulting from the multivariate-corrected data
corresponded better with reference data than the results of univariate bias
correction. Differences in simulated total streamflow due to the different
bias correction approaches may be considered negligible given the generally
large spread of the projections, but systematic differences in the
seasonally delayed streamflow components from snowmelt in particular will
matter from a planning perspective. While this study does not allow
conclusive evidence that multivariate bias correction approaches are
generally preferable, it clearly demonstrates that incorporating or ignoring
inter-variable relationships between air temperature and precipitation data
can impact the conclusions drawn in hydrological climate change impact
studies in snow-dominated environments.</p> |
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ISSN: | 1027-5606 1607-7938 |