Parameterization of Forced Isotropic Turbulent Flow using Autoencoders
and Generative Adversarial Networks
- URL: http://arxiv.org/abs/2107.06264v1
- Date: Thu, 8 Jul 2021 18:37:38 GMT
- Title: Parameterization of Forced Isotropic Turbulent Flow using Autoencoders
and Generative Adversarial Networks
- Authors: Kanishk, Tanishk Nandal, Prince Tyagi, Raj Kumar Singh
- Abstract summary: Autoencoders and generative neural network models have recently gained popularity in fluid mechanics.
In this study, forced isotropic turbulence flow is generated by parameterizing into some basic statistical characteristics.
The use of neural network-based architecture removes the need for dependency on the classical mesh-based Navier-Stoke equation estimation.
- Score: 0.45935798913942893
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Autoencoders and generative neural network models have recently gained
popularity in fluid mechanics due to their spontaneity and low processing time
instead of high fidelity CFD simulations. Auto encoders are used as model order
reduction tools in applications of fluid mechanics by compressing input
high-dimensional data using an encoder to map the input space into a
lower-dimensional latent space. Whereas, generative models such as Variational
Auto-encoders (VAEs) and Generative Adversarial Networks (GANs) are proving to
be effective in generating solutions to chaotic models with high 'randomness'
such as turbulent flows. In this study, forced isotropic turbulence flow is
generated by parameterizing into some basic statistical characteristics. The
models trained on pre-simulated data from dependencies on these characteristics
and the flow generation is then affected by varying these parameters. The
latent vectors pushed along the generator models like the decoders and
generators contain independent entries which can be used to create different
outputs with similar properties. The use of neural network-based architecture
removes the need for dependency on the classical mesh-based Navier-Stoke
equation estimation which is prominent in many CFD softwares.
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