85 research outputs found
Saturation and multifractality of Lagrangian and Eulerian scaling exponents in 3D turbulence
Inertial range scaling exponents for both Lagrangian and Eulerian structure
functions are obtained from direct numerical simulations of isotropic
turbulence in triply periodic domains at Taylor-scale Reynolds number up to
1300. We reaffirm that transverse Eulerian scaling exponents saturate at
for moment orders , significantly differing from the
longitudinal exponents (which are predicted to saturate at for from a recent theory). The Lagrangian scaling exponents likewise
saturate at for . The saturation of Lagrangian exponents
and Eulerian transverse exponents is related by the same multifractal spectrum,
which is different from the known spectra for Eulerian longitudinal exponents,
suggesting that that Lagrangian intermittency is characterized solely by
transverse Eulerian intermittency. We discuss possible implication of this
outlook when extending multifractal predictions to the dissipation range,
especially for Lagrangian acceleration.Comment: 6 pages, 6 figure
Very fine structures in scalar mixing
We explore very fine scales of scalar dissipation in turbulent mixing, below
Kolmogorov and around Batchelor scales, by performing direct numerical
simulations at much finer grid resolution than is usually adopted in the past.
We consider the resolution in terms of a local, fluctuating Batchelor scale and
study the effects on the tails of the probability density function and
multifractal properties of the scalar dissipation. The origin and importance of
these very fine-scale fluctuations are discussed. One conclusion is that they
are unlikely to be related to the most intense dissipation events.Comment: 10 pages, 7 figures (low quality due to downsizing
Forecasting small scale dynamics of fluid turbulence using deep neural networks
Turbulent flows consist of a wide range of interacting scales. Since the
scale range increases as some power of the flow Reynolds number, a faithful
simulation of the entire scale range is prohibitively expensive at high
Reynolds numbers. The most expensive aspect concerns the small scale motions;
thus, major emphasis is placed on understanding and modeling them, taking
advantage of their putative universality. In this work, using physics-informed
deep learning methods, we present a modeling framework to capture and predict
the small scale dynamics of turbulence, via the velocity gradient tensor. The
model is based on obtaining functional closures for the pressure Hessian and
viscous Laplacian contributions as functions of velocity gradient tensor. This
task is accomplished using deep neural networks that are consistent with
physical constraints and incorporate Reynolds number dependence explicitly to
account for small-scale intermittency. We then utilize a massive direct
numerical simulation database, spanning two orders of magnitude in the
large-scale Reynolds number, for training and validation. The model learns from
low to moderate Reynolds numbers, and successfully predicts velocity gradient
statistics at both seen and higher (unseen) Reynolds numbers. The success of
our present approach demonstrates the viability of deep learning over
traditional modeling approaches in capturing and predicting small scale
features of turbulence.Comment: 12 pages, 5 figure
Detection of exomoons in simulated light curves with a regularized convolutional neural network
Many moons have been detected around planets in our Solar System, but none
has been detected unambiguously around any of the confirmed extrasolar planets.
We test the feasibility of a supervised convolutional neural network to
classify photometric transit light curves of planet-host stars and identify
exomoon transits, while avoiding false positives caused by stellar variability
or instrumental noise. Convolutional neural networks are known to have
contributed to improving the accuracy of classification tasks. The network
optimization is typically performed without studying the effect of noise on the
training process. Here we design and optimize a 1D convolutional neural network
to classify photometric transit light curves. We regularize the network by the
total variation loss in order to remove unwanted variations in the data
features. Using numerical experiments, we demonstrate the benefits of our
network, which produces results comparable to or better than the standard
network solutions. Most importantly, our network clearly outperforms a
classical method used in exoplanet science to identify moon-like signals. Thus
the proposed network is a promising approach for analyzing real transit light
curves in the future
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