Creation of new Extra-Tropical Cyclone fields in the North Atlantic with Generative Adversarial Networks: A deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution

Extra-Tropical Cyclones (ETCs) are major storm system ruling and influencing the atmospheric structure at mid-latitudes. These events are usually characterized by strong winds and heavy precipitation and cause considerable storm surges with threatening wave systems for coastal regions. The possibili...

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Main Author: Dainelli, Filippo (author)
Other Authors: Taormina, R. (mentor), Bricker, J.D. (graduation committee), Glassmeier, F. (graduation committee), Caires, Sofia (graduation committee), Delft University of Technology (degree granting institution)
Format: Master Thesis
Language:English
Published: 2020
Subjects:
Online Access:http://resolver.tudelft.nl/uuid:baa63b40-8318-4d46-bf72-0372d9ef13db
id fttudelft:oai:tudelft.nl:uuid:baa63b40-8318-4d46-bf72-0372d9ef13db
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spelling fttudelft:oai:tudelft.nl:uuid:baa63b40-8318-4d46-bf72-0372d9ef13db 2023-07-30T04:05:25+02:00 Creation of new Extra-Tropical Cyclone fields in the North Atlantic with Generative Adversarial Networks: A deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution Dainelli, Filippo (author) Taormina, R. (mentor) Bricker, J.D. (graduation committee) Glassmeier, F. (graduation committee) Caires, Sofia (graduation committee) Delft University of Technology (degree granting institution) 2020-12-17 http://resolver.tudelft.nl/uuid:baa63b40-8318-4d46-bf72-0372d9ef13db en eng https://figshare.com/s/e3316a3a486b291bc874 http://resolver.tudelft.nl/uuid:baa63b40-8318-4d46-bf72-0372d9ef13db © 2020 Filippo Dainelli Extra Tropical Cyclones Generative Adversarial Network Deep Learning master thesis 2020 fttudelft 2023-07-08T20:37:59Z Extra-Tropical Cyclones (ETCs) are major storm system ruling and influencing the atmospheric structure at mid-latitudes. These events are usually characterized by strong winds and heavy precipitation and cause considerable storm surges with threatening wave systems for coastal regions. The possibility to simulate these storms or to increase the amount of significant data available is crucial to optimize risk assessment and risk management for construction projects and territorial plans which might get damaged by events of this kind. The project addresses the possibility to learn the distribution of cyclones atmospheric fields of pressure, wind and precipitation in the North Atlantic by training a Generative Adversarial Network (GAN). The ETCs tracks are extracted from the ERA5 reanalysis dataset in the domain with boundaries 0°-90°N, 70°W-20°E and period going from 1st January 1979 to 1st January 2020. A GAN tries to learn the distribution of a training set based on a game theoretic scenario where two network competes against each other, the generator and the discriminator. The former is trained to generate new examples which are plausible and similar to the real ones by having as input a vector of random Gaussian values. The random vectors domain is called latent space. The latter learns to distinguish whether an example is coming from the dataset distribution or not. The competition set by the game scenario makes the network improve until the counterfeits are indistinguishable form the original. The generative models trained on the ETCs dataset are validated to understand if they are able to generate new samples of fields presenting similar atmospheric characteristics to those of the original dataset. To train the GAN two different loss function are considered, the Wasserstein distance and the Cramèr distance. The Cramèr Gan (CGAN) shows better performance in representing the distribution of the atmospheric fields, generating images that on average look similar to the original ones. The Wasserstein GAN (WGAN) ... Master Thesis North Atlantic Delft University of Technology: Institutional Repository
institution Open Polar
collection Delft University of Technology: Institutional Repository
op_collection_id fttudelft
language English
topic Extra Tropical Cyclones
Generative Adversarial Network
Deep Learning
spellingShingle Extra Tropical Cyclones
Generative Adversarial Network
Deep Learning
Dainelli, Filippo (author)
Creation of new Extra-Tropical Cyclone fields in the North Atlantic with Generative Adversarial Networks: A deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution
topic_facet Extra Tropical Cyclones
Generative Adversarial Network
Deep Learning
description Extra-Tropical Cyclones (ETCs) are major storm system ruling and influencing the atmospheric structure at mid-latitudes. These events are usually characterized by strong winds and heavy precipitation and cause considerable storm surges with threatening wave systems for coastal regions. The possibility to simulate these storms or to increase the amount of significant data available is crucial to optimize risk assessment and risk management for construction projects and territorial plans which might get damaged by events of this kind. The project addresses the possibility to learn the distribution of cyclones atmospheric fields of pressure, wind and precipitation in the North Atlantic by training a Generative Adversarial Network (GAN). The ETCs tracks are extracted from the ERA5 reanalysis dataset in the domain with boundaries 0°-90°N, 70°W-20°E and period going from 1st January 1979 to 1st January 2020. A GAN tries to learn the distribution of a training set based on a game theoretic scenario where two network competes against each other, the generator and the discriminator. The former is trained to generate new examples which are plausible and similar to the real ones by having as input a vector of random Gaussian values. The random vectors domain is called latent space. The latter learns to distinguish whether an example is coming from the dataset distribution or not. The competition set by the game scenario makes the network improve until the counterfeits are indistinguishable form the original. The generative models trained on the ETCs dataset are validated to understand if they are able to generate new samples of fields presenting similar atmospheric characteristics to those of the original dataset. To train the GAN two different loss function are considered, the Wasserstein distance and the Cramèr distance. The Cramèr Gan (CGAN) shows better performance in representing the distribution of the atmospheric fields, generating images that on average look similar to the original ones. The Wasserstein GAN (WGAN) ...
author2 Taormina, R. (mentor)
Bricker, J.D. (graduation committee)
Glassmeier, F. (graduation committee)
Caires, Sofia (graduation committee)
Delft University of Technology (degree granting institution)
format Master Thesis
author Dainelli, Filippo (author)
author_facet Dainelli, Filippo (author)
author_sort Dainelli, Filippo (author)
title Creation of new Extra-Tropical Cyclone fields in the North Atlantic with Generative Adversarial Networks: A deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution
title_short Creation of new Extra-Tropical Cyclone fields in the North Atlantic with Generative Adversarial Networks: A deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution
title_full Creation of new Extra-Tropical Cyclone fields in the North Atlantic with Generative Adversarial Networks: A deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution
title_fullStr Creation of new Extra-Tropical Cyclone fields in the North Atlantic with Generative Adversarial Networks: A deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution
title_full_unstemmed Creation of new Extra-Tropical Cyclone fields in the North Atlantic with Generative Adversarial Networks: A deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution
title_sort creation of new extra-tropical cyclone fields in the north atlantic with generative adversarial networks: a deep learning framework to generate new synthetic atmospheric variables fields from the learned original sample data distribution
publishDate 2020
url http://resolver.tudelft.nl/uuid:baa63b40-8318-4d46-bf72-0372d9ef13db
genre North Atlantic
genre_facet North Atlantic
op_relation https://figshare.com/s/e3316a3a486b291bc874
http://resolver.tudelft.nl/uuid:baa63b40-8318-4d46-bf72-0372d9ef13db
op_rights © 2020 Filippo Dainelli
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