High-resolution CMIP6 climate projections for Ethiopia

High-resolution climate model projections for a range of emission scenarios are needed for designing regional and local adaptation strategies and planning in the context of climate change. To this end, the future climate simulations of global circulation models (GCMs) are the main sources of critical information. However, these simulations are not only coarse in resolution but also associated with biases and high uncertainty. To make the simulations useful for impact modeling at regional and local level, we utilized the bias correction constructed analogues with quantile mapping reordering (BCCAQ) statistical downscaling technique to produce a 10 km spatial resolution climate change projections database based on 16 CMIP6 GCMs under three different emission scenarios (SSP2-4.5, SSP3-7.0, and SSP5-8.5). The downscaling strategy was evaluated using a perfect sibling approach and detailed results are presented by taking two contrasting (the worst and best performing models in the historical evaluation) GCMs as a showcase. The evaluation results demonstrate that the downscaling approach substantially reduced model biases and generated higher resolution daily data compared to the original GCM outputs. These downscaled data can serve as high-quality inputs for impact models, including agro-ecological models. Overall, the results of this study are expected to facilitate climate change impact assessment and model comparison research in Ethiopia.

Data and Resources

Additional Info

Field Value
Author Rettie, Fasil Mequanint, Gayler, Sebastian, Weber, Tobias Karl David, Tesfaye, Kindie, Streck, Thilo
Maintainer CIMMYT Research Data & Software Repository Network
Last Updated January 20, 2025, 16:21 (UTC)
Created January 20, 2025, 16:21 (UTC)
contributor Garza Sánchez, Enrique
creator Rettie, Fasil Mequanint
date 2023-06-12T00:00:00
harvest_object_id ccba25b6-ad71-4bab-ac83-803538d8db4b
harvest_source_id a58b0729-e941-4389-816d-5823f01c0d28
harvest_source_title CIMMYT Research Data
identifier https://hdl.handle.net/11529/10548895
language English
metadata_modified 2024-10-26T07:00:04
set_spec cimmytdatadvn