2022
DOI: 10.1063/5.0097438
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Data augmented turbulence modeling for three-dimensional separation flows

Abstract: Field inversion and machine learning are implemented in this study to describe three-dimensional (3-D) separation flow around an axisymmetric hill and augment the Spart-Allmaras (SA) model. The discrete adjoint method is used to solve the field inversion problem, and an artificial neural network is used as the machine learning model. A validation process for field inversion is proposed to adjust the hyperparameters and obtain a physically acceptable solution. The field inversion result shows that the non-equil… Show more

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Cited by 24 publications
(1 citation statement)
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“…This is why in the past years, such algorithms have gained popularity in the fluid mechanics community. Recent ML applications in this field cover turbulence modeling [6][7][8][9][10], indirect determination of fluid properties from flow data [11], flow control [12][13][14], production of super-resolved small-scale features of complex flows [15,16], as well as turbulent flow prediction [17]. The latter, poses a challenge, as turbulent flows are inherently chaotic, so that predictions, starting from a certain flow state will quickly diverge from the true trajectory over time.…”
Section: Introductionmentioning
confidence: 99%
“…This is why in the past years, such algorithms have gained popularity in the fluid mechanics community. Recent ML applications in this field cover turbulence modeling [6][7][8][9][10], indirect determination of fluid properties from flow data [11], flow control [12][13][14], production of super-resolved small-scale features of complex flows [15,16], as well as turbulent flow prediction [17]. The latter, poses a challenge, as turbulent flows are inherently chaotic, so that predictions, starting from a certain flow state will quickly diverge from the true trajectory over time.…”
Section: Introductionmentioning
confidence: 99%