Echo State Network for two-dimensional turbulent moist Rayleigh-B\'enard
convection
- URL: http://arxiv.org/abs/2101.11325v1
- Date: Wed, 27 Jan 2021 11:27:16 GMT
- Title: Echo State Network for two-dimensional turbulent moist Rayleigh-B\'enard
convection
- Authors: Florian Heyder and J\"org Schumacher
- Abstract summary: We apply an echo state network to approximate the evolution of moist Rayleigh-B'enard convection.
We conclude that our model is capable of learning complex dynamics.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recurrent neural networks are machine learning algorithms which are suited
well to predict time series. Echo state networks are one specific
implementation of such neural networks that can describe the evolution of
dynamical systems by supervised machine learning without solving the underlying
nonlinear mathematical equations. In this work, we apply an echo state network
to approximate the evolution of two-dimensional moist Rayleigh-B\'enard
convection and the resulting low-order turbulence statistics. We conduct
long-term direct numerical simulations in order to obtain training and test
data for the algorithm. Both sets are pre-processed by a Proper Orthogonal
Decomposition (POD) using the snapshot method to reduce the amount of data. The
training data comprise long time series of the first 150 most energetic POD
coefficients. The reservoir is subsequently fed by the data and results in
predictions of future flow states. The predictions are thoroughly validated by
the data of the original simulation. Our results show good agreement of the
low-order statistics. This incorporates also derived statistical moments such
as the cloud cover close to the top of the convection layer and the flux of
liquid water across the domain. We conclude that our model is capable of
learning complex dynamics which is introduced here by the tight interaction of
turbulence with the nonlinear thermodynamics of phase changes between vapor and
liquid water. Our work opens new ways for the dynamic parametrization of
subgrid-scale transport in larger-scale circulation models.
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