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Climate predictions on seasonal timescales are of major importance for the scientific, planning and policycommunities to understand the impacts of climate variability and change and emergent risks, and thus develop appropriate adaptation andmitigation strategies. Nevertheless, the coarse spatial scale of that data limits its use in decision making.Downscaling is therefore emergingas a solution to transferthe climate information to a scale suitable for impact studies and climate-related risk assessments. In this study, a method for downscaling seasonal forecast temperature is presented, that integratesa Deep Residual Neural Network (DRNN) withan analog-based approach toincrease the information from climate predictors. The advantage of the proposed approach is the incorporation of relevant large-scale variables, such as the geopotential height from different ensemble members, which supplies the model with varied information from the atmospheric circulation instead of using only a single input field as a predictor. This allows the model to capture the complex relationships between climate drivers and local scale variables such as temperature, that providesa great potential to reducethe large biases in climate model outputs. The DRNN based downscaling is applied to minimum and maximum temperature from ECMWF seasonal forecast at 1 resolution, downscaled to a resolution of 1 arcminute (~1.2 km), in a region that covers Germany and surrounding areas. The results are assessed against observations using both deterministic and probabilistic metrics andshow an overall agreement between the downscaled product and the ground truth. This work demonstratesthe added value of post-processing of seasonal forecasts, especially for applications of early warnings of extreme events and the associated hazards on a sub-seasonal to seasonal scale.
Esteban et al. (Mon,) studied this question.
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