Machine learning predictions of high Reynolds number rotating MHD turbulence
ORAL
Abstract
Machine learning has been used to predict the time evolution of complex systems. Here we investigate the predictability of a spherical Couette high Reynolds number MHD experiment, using a recurrent neural network technique called reservoir computing, an auto-regressive model, and a hybrid combination of these two methods. These methods do not use a physical model. We analyze how their performance changes with different amounts of training data, and different fluid dynamical states.
We tested three different approaches to predict the time evolution of a nonlinear system, our Three-meter experiment and found that the hybrid of the reservoir computer and the auto-regressive model outperforms each of its components, and is capable of predicting the time evolution for five magnetic dipole timescales with an accuracy higher than the average one-time step fluctuation. We applied these techniques to experiments with different fluid dynamical states and demonstrated that some of the states are more predictable than others.
We also discovered that for this system it is necessary to have more than ten dipole diffusion timescales of the spatially distributed training data in order to predict the dynamics; a comparable dataset is not currently available for the Earth's magnetic field.
We tested three different approaches to predict the time evolution of a nonlinear system, our Three-meter experiment and found that the hybrid of the reservoir computer and the auto-regressive model outperforms each of its components, and is capable of predicting the time evolution for five magnetic dipole timescales with an accuracy higher than the average one-time step fluctuation. We applied these techniques to experiments with different fluid dynamical states and demonstrated that some of the states are more predictable than others.
We also discovered that for this system it is necessary to have more than ten dipole diffusion timescales of the spatially distributed training data in order to predict the dynamics; a comparable dataset is not currently available for the Earth's magnetic field.
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Publication: PHYSD-D-21-00102
Presenters
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Artur Perevalov
University of Maryland, College Park
Authors
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Artur Perevalov
University of Maryland, College Park
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Ruben E Rojas
University of Maryland, College Park
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Brian R Hunt
University of Maryland, College Park
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Daniel P Lathrop
University of Maryland, College Park