Publication | Open Access
Deep Learning for Daily Precipitation and Temperature Downscaling
203
Citations
52
References
2021
Year
Abstract DownscalingConvolutional Neural NetworkHigh ResolutionEngineeringSpatiotemporal Data FusionWeather ForecastingClimate ModelingEarth ScienceSocial SciencesNumerical Weather PredictionData ScienceHydroclimate ModelingClimate ForecastingClimate ChangeClimate SciencesResidual BlocksData AugmentationGeographyDeep LearningHigh-resolution Modeling
Downscaling bridges the gap between large‑scale climate data and local‑scale impact assessment. The study introduces SRDRN, a deep learning method for downscaling daily precipitation and temperature. SRDRN is a deep convolutional neural network with residual blocks and batch normalizations, augmented to counter overfitting from imbalanced precipitation data, and evaluated by downscaling synthetic 25–100 km data to 4 km resolution. SRDRN accurately reproduces spatial and temporal patterns and extremes, outperforms classic statistical methods through transfer learning, and its success derives from residual blocks, batch normalization, and data augmentation, making it a powerful tool for daily precipitation and temperature downscaling.
Abstract Downscaling is a critical step to bridge the gap between large‐scale climate information and local‐scale impact assessment. This study presents a novel deep learning approach: Super Resolution Deep Residual Network (SRDRN) for downscaling daily precipitation and temperature. This approach was constructed based on an advanced deep convolutional neural network with residual blocks and batch normalizations. The data augmentation technique was utilized to address overfitting that is due to highly imbalanced precipitation and nonprecipitation days and sparse precipitation extremes. Synthetic experiments were designed to downscale daily maximum/minimum temperature and precipitation data from coarse resolutions (25, 50, and 100 km) to a high resolution (4 km). The results showed that, during the validation period, the SRDRN approach not only captured the spatial and temporal patterns remarkably well, but also reproduced both precipitation and temperature extremes in different locations and time at the local scale. Through transfer learning, the trained SRDRN model in one region was directly applied to downscale precipitation in another region with a different environment, and the results showed notable improvement compared to classic statistical downscaling methods. The outstanding performance of the SRDRN approach stemmed from its ability to fully extract spatial features without suffering from degradation and overfitting issues due to the incorporations of residual blocks, batch normalizations, and data augmentations. The SRDRN approach is thus a powerful tool for downscaling daily precipitation and temperature and can potentially be leveraged to downscale any hydrologic, climate, and earth system data.
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