2022
DOI: 10.1017/jfm.2022.159
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A data-driven model based on modal decomposition: application to the turbulent channel flow over an anisotropic porous wall

Abstract: This article presents a data-driven model based on modal decomposition, applied to approximate the low-order statistics of the spatially averaged wall-shear stress in a turbulent channel flow over a porous wall with two anisotropic permeabilities, producing drag increase or reduction when compared with the case of an isotropic porous wall. The model is comparable to a neural network architecture using a linear map to a classification. To create this model, we use high-order dynamic mode decomposition (DMD) to … Show more

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Cited by 13 publications
(3 citation statements)
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References 72 publications
(115 reference statements)
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“…These criteria allow to distinguish the leading modes, that present similar frequencies though their amplitudes could deviate with the calibration, from the spurious ones, whose frequencies and amplitudes always change. In fact, the same dominant frequencies are found for several choices of parameters, highlighting the robustness of the method (see [16,28] for more information regarding the calibration process). Figure 3 shows these modes for a particular set of parameters.…”
Section: Temporal Coherent Structuresmentioning
confidence: 54%
“…These criteria allow to distinguish the leading modes, that present similar frequencies though their amplitudes could deviate with the calibration, from the spurious ones, whose frequencies and amplitudes always change. In fact, the same dominant frequencies are found for several choices of parameters, highlighting the robustness of the method (see [16,28] for more information regarding the calibration process). Figure 3 shows these modes for a particular set of parameters.…”
Section: Temporal Coherent Structuresmentioning
confidence: 54%
“…In the work of Lee and You [11], the unsteady flow fields over a circular cylinder are used for training four different deep learning networks providing reliable predictions. Le Clainche et al [12] presented a data-driven model applied to approximate the statistics of the averaged wall-shear stress in a turbulent channel flow over a porous wall. Centracchio et al [13] recently proposed a data-driven nonlinear model based on ANNs to describe and predict the noise emitted by a single stream jet in under-expanded conditions.…”
Section: Introductionmentioning
confidence: 99%
“…In the work of Lee & You (2019) the unsteady flow fields over a circular cylinder are used for training four different deep learning networks providing reliable predictions. Le Clainche, Rosti & Brandt (2022) presented a data-driven model applied to approximate the statistics of the averaged wall-shear stress in a turbulent channel flow over a porous wall. Centracchio et al (2022) recently proposed a data-driven nonlinear model based on ANNs to describe and predict the noise emitted by a single stream jet in under-expanded conditions.…”
Section: Introductionmentioning
confidence: 99%