Article ID Journal Published Year Pages File Type
5770820 Journal of Hydrology 2017 17 Pages PDF
Abstract

•A stochastic extreme downscaling model in a fully Bayesian framework is developed.•The model aims to downscale expected changes in daily rainfall into sub-daily scale.•Quantile mapping for bias correction is incorporated into the downscaling model.•Conditional copula function is used to derive future IDF curves from daily rainfall.•Integrated Bayesian inference allows accounting for parameter uncertainties.

A conditional copula function based downscaling model in a fully Bayesian framework is developed in this study to evaluate future changes in intensity-duration frequency (IDF) curves in South Korea. The model incorporates a quantile mapping approach for bias correction while integrated Bayesian inference allows accounting for parameter uncertainties. The proposed approach is used to temporally downscale expected changes in daily rainfall, inferred from multiple CORDEX-RCMs based on Representative Concentration Pathways (RCPs) 4.5 and 8.5 scenarios, into sub-daily temporal scales. Among the CORDEX-RCMs, a noticeable increase in rainfall intensity is observed in the HadGem3-RA (9%), RegCM (28%), and SNU_WRF (13%) on average, whereas no noticeable changes are observed in the GRIMs (−2%) for the period 2020-2050. More specifically, a 5-30% increase in rainfall intensity is expected in all of the CORDEX-RCMs for 50-year return values under the RCP 8.5 scenario. Uncertainty in simulated rainfall intensity gradually decreases toward the longer durations, which is largely associated with the enhanced strength of the relationship with the 24-h annual maximum rainfalls (AMRs). A primary advantage of the proposed model is that projected changes in future rainfall intensities are well preserved.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Earth-Surface Processes
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