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working_groups:computational_earth_sciences:ai4es:applications [2017/08/09 16:02] asanche2 |
working_groups:computational_earth_sciences:ai4es:applications [2020/08/07 15:44] (current) cgome1 |
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- | ==== Machine Learning Applications on Earth Sciences Dept. ==== | + | ===== BSC-ES projects where the AI4ES research line plays an important or leading role ===== |
- | Some of the potential | + | For a more complete list of ongoing and potential |
+ | * AI for extreme extreme weather events and climate services (ASTERISKS H2020). Deep Neural Networks from the field of computer Vision can be used for pattern recognition in a supervised way, exploiting reanalysis data and historical event databases (e.g., IBTrACS for tropical cyclones) or other impact data. | ||
+ | | ||
+ | * Learning to simulate precipitation with Deep Neural Networks ({{https:// | ||
- | === Atmospheric Composition === | + | * Simulating precipitation with supervised and generative learning models. Abstract submitted to the ECMWF-ESA Workshop on Machine Learning for Earth System Observation and Prediction. We compare data-driven models based on supervised convolutional neural networks and conditional generative adversarial networks for simulating precipitation fields. |
+ | |||
+ | * May Deep Learning contribute to improve Downscaling techniques? ({{: | ||
- | Currently working on the application of classification methods | + | * Deep neural networks as surrogate models |
- | for the effect evaluation of the variability of meteorological variables | + | |
- | on the concentration of specific pollutants. Another topic of study is the improvement | + | |
- | of the emission model outputs by combining classification methods | + | |
- | For more details, look at [[https:// | + | |
- | + | ||
- | === Climate and Weather Prediction === | + | |
- | + | ||
- | === Earth Sciences Services === | + | |
- | + | ||
- | === Computational Earth Sciences === | + | |
+ | * Inference of surface pollutant concentrations from satellite and global scale meteorological and chemical simulations (AQ-WATCH project). Application to NO2 (TROPOMI sensor) and aerosols. | ||
+ | * Identification of Wastewater CH4 Emission Sources Using Deep Learning Applied to Sentinel-2 Observations. Abstract submitted to the ESA phi-week 2020 conference. Here we train object detection models from the field of computer vision for the task of localizing wastewater treatment plants and inferring the amount of processed water (as a proxy for CH4 emissions). | ||