Abstract

Abstract. The assessment of future impacts of climate change is associated with a cascade of uncertainty linked to the modelling chain employed in assessing local-scale changes. Understanding and quantifying this cascade is essential for developing effective adaptation actions. We evaluate and quantify uncertainties in future flood quantiles associated with climate change for four catchments, incorporating within our modelling chain uncertainties associated with 12 global climate models contained in the Coupled Model Intercomparison Project Phase 6, five different bias correction approaches, hydrological model parameter uncertainty and the use of three different extreme value distributions for flood frequency analysis. Results indicate increased flood hazard in all catchments for different Shared Socioeconomic Pathways (SSPs), with changes in flooding consistent with changes in annual maximum precipitation. We use additive chains and analysis of variance (ANOVA) to quantify and decompose uncertainties and their interactions in estimating selected flood quantiles for each catchment. We find that not only do the contributions of different sources of uncertainty vary by catchment, but that the dominant sources of uncertainty can be very different on a catchment-by-catchment basis. While uncertainties in future projections are widely assumed to be dominated by the ensemble of climate models used, we find that in one of our catchments uncertainties associated with bias correction methods dominate, while in another the uncertainty associated with the use of different extreme value distributions outweighs the uncertainty associated with the ensemble of climate models. These findings highlight the inability to generalise a priori about the importance of different components of the cascade of uncertainty in future flood hazard at the catchment scale. Moreover, we find that the interaction of components of the modelling chain employed are substantial (> 20 % of overall uncertainty in two catchments). While our sample is small, there is evidence that the dominant components of the cascade of uncertainty may be linked to catchment characteristics and rainfall–runoff processes. Future work that seeks to further explore the characteristics of the uncertainty cascade as they relate to catchment characteristics may provide insight into a priori identifying the key components of modelling chains to be targeted in climate change impact assessments.

Highlights

  • Climate change is likely to increasingly affect hydrological regimes and flood hazards over coming decades

  • This study evaluates changes in future flood magnitude with climate change for four Irish catchments using a modelling chain incorporating 12 climate models (CMs) comprising the Coupled Model Intercomparison Project Phase 6 (CMIP6) ensemble, five bias correction techniques, hydrological model parameter uncertainty and the use of extreme value distributions

  • Using analysis of variance (ANOVA), we decompose uncertainties in future flood quantiles to examine how individual components of our modelling chain and their interactions contribute to overall uncertainty

Read more

Summary

Introduction

Climate change is likely to increasingly affect hydrological regimes and flood hazards over coming decades. According to Rojas et al (2013), flood frequency in Europe will increase due to climate change, with significant socio-economic implications for the region. Blöschl et al (2017, 2019) conclude that the timing and magnitude of European floods have shifted due to climate change, and its consequences are not uniform across the region, with northwestern Europe experiencing earlier and higher flood peaks. Climate change impact assessment is subject to considerable uncertainties (Wilby and Dessai, 2010; Smith et al, 2018); Blöschl et al (2019) recently highlighted uncertainty in hydrology as one of the 25 challenges in hydrological science.

Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call