Fighting big data and ensemble fatigue in climate change impact studies: Can we turn the ensemble cascade upside down?
Abstract:
Climate change impact modellers consider the availability of large ensembles of climate model results more and more as problematic. They experience big data or ensemble fatigue and face computational limits. This study proposes an ensemble design approach based on clustering of the climate model skill, climate change signals and statistical downscaling skill, and investigates its potential for ensemble size reduction. The proposed approach is demonstrated for river and urban hydrological impact studies in Belgium, considering the average winter (summer) precipitation amount and extreme daily winter (summer) precipitation amount with a 10-year return period. The analysis starts from an original 240 membered multi-ensemble (48 climate models and 5 statistical downscaling methods) and is reduced to 8 (12) members for the average seasonal winter (summer) precipitation amount and 18 (22) for the extreme daily winter (summer) precipitation amount. The range of the impact results by the original multi-ensemble is generally preserved. However, in some cases, the reduced ensemble shows biased impact results. The cluster analysis confirms the dependence between statistical downscaling methods and points to the interaction between climate models and statistical downscaling methods.
Año de publicación:
2021
Keywords:
- Clustering
- perfect pbkp_redictor experiment
- inter-dependence
- Statistical downscaling
- bias
- Skill
- Validation
Fuente:
Tipo de documento:
Article
Estado:
Acceso restringido
Áreas de conocimiento:
- Cambio climático
- Análisis de datos
- Ciencia ambiental
Áreas temáticas:
- Sistemas