Abstract
Abstract. Statistical bias correction (BC) is a widely used tool to
post-process climate model biases in heat-stress impact studies, which are
often based on the indices calculated from multiple dependent variables.
This study compares four BC methods (three univariate and one multivariate)
with two correction strategies (direct and indirect) for adjusting two
heat-stress indices with different dependencies on temperature and relative
humidity using multiple regional climate model simulations over South
Korea. It would be helpful for reducing the ambiguity involved in the
practical application of BC for climate modeling and end-user communities.
Our results demonstrate that the multivariate approach can improve the
corrected inter-variable dependence, which benefits the indirect correction
of heat-stress indices depending on the adjustment of individual components,
especially those indices relying equally on multiple drivers. On the other
hand, the direct correction of multivariate indices using the quantile delta
mapping univariate approach can also produce a comparable performance in the
corrected heat-stress indices. However, our results also indicate that
attention should be paid to the non-stationarity of bias brought by climate
sensitivity in the modeled data, which may affect the bias-corrected results
unsystematically. Careful interpretation of the correction process is
required for an accurate heat-stress impact assessment.
Funder
Korea Meteorological Administration
Subject
General Earth and Planetary Sciences
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