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working_groups:computational_earth_sciences:ai4es:applications [2020/02/19 14:29] cgome1 |
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- | ===== Current | + | ===== BSC-ES projects |
- | ==== Atmospheric Composition ==== | + | For a more complete list of ongoing and potential use cases, see the strategy document. |
- | Inference of surface pollutant concentrations | + | * AI for extreme extreme weather events and climate services (ASTERISKS H2020). Deep Neural Networks |
+ | |||
+ | * Learning | ||
- | ==== Climate | + | * Simulating precipitation with supervised and generative learning models. Abstract submitted to the ECMWF-ESA Workshop on Machine Learning for Earth System Observation |
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+ | * May Deep Learning contribute to improve Downscaling techniques? ({{: | ||
- | A. Kahira in collaboration | + | * Deep neural networks as surrogate models for creating or improving data-driven parameterizations. Collaboration |
- | ==== Earth Sciences Services ==== | + | * Inference of surface pollutant concentrations from satellite and global scale meteorological and chemical simulations (AQ-WATCH project). Application to NO2 (TROPOMI sensor) and aerosols. |
- | Statistical correction | + | * Identification |
- | + | ||
- | ==== Computational Earth Sciences ==== | + | |
- | + | ||
- | * Extreme Events (Hurricanes/ | + | |
- | + | ||
- | * Deep Neural Networks as surrogate models (learning to replace parameterizations). We explore the use of encoder-decoder networks, such as those used for image translation in Computer Vision, for the task of learning precipitation fields from other predictor variables (geopotential, | + | |
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