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Model-assisted deep learning of rare extreme events from partial observations.
Asch, Anna; J Brady, Ethan; Gallardo, Hugo; Hood, John; Chu, Bryan; Farazmand, Mohammad.
Afiliação
  • Asch A; Department of Mathematics, Cornell University, 310 Malott Hall, Ithaca, New York 14853, USA.
  • J Brady E; Department of Mathematics, Purdue University, 150 N. University Street, West Lafayette, Indiana 47907, USA.
  • Gallardo H; Department of Mechanical Engineering, The University of Texas Rio Grande Valley, 1201 W. University Drive, Edinburg, Texas 78539, USA.
  • Hood J; Department of Mathematics, Bowdoin College, 8600 College Station Brunswick, Maine 04011, USA.
  • Chu B; Department of Mathematics, North Carolina State University, Raleigh, North Carolina 27695-8205, USA.
  • Farazmand M; Department of Mathematics, North Carolina State University, Raleigh, North Carolina 27695-8205, USA.
Chaos ; 32(4): 043112, 2022 Apr.
Article em En | MEDLINE | ID: mdl-35489849
ABSTRACT
To predict rare extreme events using deep neural networks, one encounters the so-called small data problem because even long-term observations often contain few extreme events. Here, we investigate a model-assisted framework where the training data are obtained from numerical simulations, as opposed to observations, with adequate samples from extreme events. However, to ensure the trained networks are applicable in practice, the training is not performed on the full simulation data; instead, we only use a small subset of observable quantities, which can be measured in practice. We investigate the feasibility of this model-assisted framework on three different dynamical systems (Rössler attractor, FitzHugh-Nagumo model, and a turbulent fluid flow) and three different deep neural network architectures (feedforward, long short-term memory, and reservoir computing). In each case, we study the prediction accuracy, robustness to noise, reproducibility under repeated training, and sensitivity to the type of input data. In particular, we find long short-term memory networks to be most robust to noise and to yield relatively accurate predictions, while requiring minimal fine-tuning of the hyperparameters.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aprendizado Profundo Tipo de estudo: Prognostic_studies Idioma: En Revista: Chaos Assunto da revista: CIENCIA Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Estados Unidos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aprendizado Profundo Tipo de estudo: Prognostic_studies Idioma: En Revista: Chaos Assunto da revista: CIENCIA Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Estados Unidos