This paper presents development of accurate turbulence closures for wake mixing prediction by integrating a machine-learning approach with Reynolds Averaged Navier-Stokes (RANS)-based computational fluid dynamics (CFD). The data-driven modelling framework is based on the gene expression programming (GEP) approach previously shown to generate non-linear RANS models with good accuracy. To further improve the performance and robustness of the data-driven closures, here we exploit that GEP produces tangible models to integrate RANS in the closure development process. Specifically, rather than using as cost function a comparison of the GEP-based closure terms with a frozen high fidelity dataset, each GEP model is instead automatically implemente...
The application of machine learning algorithms as data-driven turbulence modelling tools for Reynold...
International audienceTurbulence modelling remains a challenge for the simulation of turbomachinery ...
As early as at the end of the 19th century, shortly after mathematical rules describing fluid flow—s...
© 2019 Harshal Deepak AkolekarThe design of the gas turbine, which is the work horse of the aviation...
Nonlinear turbulence closures were developed that improve the prediction accuracy of wake mixing in ...
This paper presents an assessment of machine-learned turbulence closures, trained for improving wake...
The inability of RANS to correctly capture profile wake dynamics and decay prevents the accurate pre...
Wind turbine wakes cause significant reductions in power production and increased fatigue damage for...
This work shows the application of Gene &pression Programming to augment RANS turbulence closure mo...
In this paper, three machine learning (ML) algorithms, Support Vector Regression (SVR), Artificial N...
Abstract In this talk, three machine learning (ML) algorithms viz. Support Vector Regression (SVR), ...
Turbulence closure models will continue to be necessary in order to perform computationally affordab...
Turbulence modelling remains a challenge for the simulation of turbomachinery flows. Reynolds Averag...
Machine Learning (ML) algorithms have become popular in many fields, including applications related ...
International audienceA new approach to determine proper mean and fluctuating inlet boundary conditi...
The application of machine learning algorithms as data-driven turbulence modelling tools for Reynold...
International audienceTurbulence modelling remains a challenge for the simulation of turbomachinery ...
As early as at the end of the 19th century, shortly after mathematical rules describing fluid flow—s...
© 2019 Harshal Deepak AkolekarThe design of the gas turbine, which is the work horse of the aviation...
Nonlinear turbulence closures were developed that improve the prediction accuracy of wake mixing in ...
This paper presents an assessment of machine-learned turbulence closures, trained for improving wake...
The inability of RANS to correctly capture profile wake dynamics and decay prevents the accurate pre...
Wind turbine wakes cause significant reductions in power production and increased fatigue damage for...
This work shows the application of Gene &pression Programming to augment RANS turbulence closure mo...
In this paper, three machine learning (ML) algorithms, Support Vector Regression (SVR), Artificial N...
Abstract In this talk, three machine learning (ML) algorithms viz. Support Vector Regression (SVR), ...
Turbulence closure models will continue to be necessary in order to perform computationally affordab...
Turbulence modelling remains a challenge for the simulation of turbomachinery flows. Reynolds Averag...
Machine Learning (ML) algorithms have become popular in many fields, including applications related ...
International audienceA new approach to determine proper mean and fluctuating inlet boundary conditi...
The application of machine learning algorithms as data-driven turbulence modelling tools for Reynold...
International audienceTurbulence modelling remains a challenge for the simulation of turbomachinery ...
As early as at the end of the 19th century, shortly after mathematical rules describing fluid flow—s...