We propose a physics-constrained machine learning method—based on reservoir computing—to time-accurately predict extreme events and long-term velocity statistics in a model of chaotic flow. The method leverages the strengths of two different approaches: empirical modelling based on reservoir computing, which learns the chaotic dynamics from data only, and physical modelling based on conservation laws. This enables the reservoir computing framework to output physical predictions when training data are unavailable. We show that the combination of the two approaches is able to accurately reproduce the velocity statistics, and to predict the occurrence and amplitude of extreme events in a model of self-sustaining process in turbulence. In this ...
This thesis concerns the long range prediction of high dimensional chaotic systems. To this end, I i...
We propose a physics-informed Echo State Network (ESN) to predict the evolution of chaotic systems. ...
Acknowledgments This work was supported by ONR under Grant No. N00014-21-1-2323. Data availability s...
We propose a physics-constrained machine learning method—based on reservoir computing—to time-accura...
We propose a physics-aware machine learning method to time-accurately predict extreme events in a tu...
It has been demonstrated that in the realm of complex systems not only exact predic-tions of multiva...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...
We present an Auto-Encoded Reservoir-Computing (AE-RC) approach to learn the dynamics of a 2D turbul...
We consider problems in the forecasting of large, complex, spatiotemporal chaotic systems and the po...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...
We present an Auto-Encoded Reservoir-Computing (AE-RC) approach to learn the dynamics of a 2D turbul...
Abstract Predicting and understanding the behavior of dynamic systems have driven advancements in va...
International audienceDeep Learning has received increased attention due to its unbeatable success i...
We propose a physics-informed Echo State Network (ESN) to predict the evolution of chaotic systems. ...
My study is founded on recurrent neural networks but using RC method leads us to a faster process wi...
This thesis concerns the long range prediction of high dimensional chaotic systems. To this end, I i...
We propose a physics-informed Echo State Network (ESN) to predict the evolution of chaotic systems. ...
Acknowledgments This work was supported by ONR under Grant No. N00014-21-1-2323. Data availability s...
We propose a physics-constrained machine learning method—based on reservoir computing—to time-accura...
We propose a physics-aware machine learning method to time-accurately predict extreme events in a tu...
It has been demonstrated that in the realm of complex systems not only exact predic-tions of multiva...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...
We present an Auto-Encoded Reservoir-Computing (AE-RC) approach to learn the dynamics of a 2D turbul...
We consider problems in the forecasting of large, complex, spatiotemporal chaotic systems and the po...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...
We present an Auto-Encoded Reservoir-Computing (AE-RC) approach to learn the dynamics of a 2D turbul...
Abstract Predicting and understanding the behavior of dynamic systems have driven advancements in va...
International audienceDeep Learning has received increased attention due to its unbeatable success i...
We propose a physics-informed Echo State Network (ESN) to predict the evolution of chaotic systems. ...
My study is founded on recurrent neural networks but using RC method leads us to a faster process wi...
This thesis concerns the long range prediction of high dimensional chaotic systems. To this end, I i...
We propose a physics-informed Echo State Network (ESN) to predict the evolution of chaotic systems. ...
Acknowledgments This work was supported by ONR under Grant No. N00014-21-1-2323. Data availability s...