Direct data-driven forecast of local turbulent heat flux in Rayleigh-Bénard convection
Sandeep Pandey,
Philipp Teutsch,
Patrick Mäder
et al.
Abstract:A combined convolutional autoencoder-recurrent neural network machine learning model is presented to analyse and forecast the dynamics and low-order statistics of the local convective heat flux field in a two-dimensional turbulent Rayleigh-Bénard convection flow at Prandtl number Pr = 7 and Rayleigh number Ra = 10 7 . Two recurrent neural networks are applied for the temporal advancement of flow data in the reduced latent data space, a reservoir computing model in the form of an echo state network and a recurr… Show more
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