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Analysis of scale-dependent kinetic and potential energy in sheared, stably stratified turbulence

Published online by Cambridge University Press:  29 July 2022

Xiaolong Zhang
Affiliation:
Department of Civil and Environmental Engineering, Duke University, Durham, NC 27708, USA
Rohit Dhariwal
Affiliation:
Center for Institutional Research Computing, Washington State University, Pullman, WA 99164, USA
Gavin Portwood
Affiliation:
Lawrence Livermore National Laboratory, Livermore, CA 94550, USA
Stephen M. de Bruyn Kops
Affiliation:
Department of Mechanical and Industrial Engineering, University of Massachusetts Amherst, Amherst, MA 01003, USA
Andrew D. Bragg*
Affiliation:
Department of Civil and Environmental Engineering, Duke University, Durham, NC 27708, USA
*
Email address for correspondence: andrew.bragg@duke.edu

Abstract

Budgets of turbulent kinetic energy (TKE) and turbulent potential energy (TPE) at different scales $\ell$ in sheared, stably stratified turbulence are analysed using a filtering approach. Competing effects in the flow are considered, along with the physical mechanisms governing the energy fluxes between scales, and the budgets are used to analyse data from direct numerical simulation at buoyancy Reynolds number $Re_b=O(100)$. The mean TKE exceeds the TPE by an order of magnitude at the large scales, with the difference reducing as $\ell$ is decreased. At larger scales, buoyancy is never observed to be positive, with buoyancy always converting TKE to TPE. As $\ell$ is decreased, the probability of locally convecting regions increases, though it remains small at scales down to the Ozmidov scale. The TKE and TPE fluxes between scales are both downscale on average, and their instantaneous values are correlated positively, but not strongly so, and this occurs due to the different physical mechanisms that govern these fluxes. Moreover, the contributions to these fluxes arising from the sub-grid fields are shown to be significant, in addition to the filtered scale contributions associated with the processes of strain self-amplification, vortex stretching and density gradient amplification. Probability density functions (PDFs) of the $Q,R$ invariants of the filtered velocity gradient are considered and show that as $\ell$ increases, the sheared-drop shape of the PDF becomes less pronounced and the PDF becomes more symmetric about $R=0$.

Information

Type
JFM Papers
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2022. Published by Cambridge University Press
Figure 0

Figure 1. Schematic to illustrate the various energy pathways in the flow. The large-scale TKE field gains energy from the forcing $\tilde {\boldsymbol {F}}\boldsymbol {\cdot }\tilde {\boldsymbol {u}}$, and loses TKE irreversibly through the large-scale TKE dissipation-rate term $\varepsilon _{KE}$. The large-scale TPE field gains energy from the forcing $\tilde {\phi }\tilde {f}$, and loses TPE irreversibly through the large-scale TPE dissipation-rate term $\varepsilon _{PE}$. The small-scale TKE field gains energy from the forcing term $\mathcal {F}_K$, can lose/gain energy reversibly to/from the large-scale TKE field $E_K$ through the interscale TKE flux term $\varPi _K$, can lose/gain energy reversibly to/from the small-scale TPE field $e_P$ through the buoyancy term $\mathcal {B}$, and loses TKE irreversibly through the TKE dissipation-rate term $\varepsilon _K$. The transport term $\boldsymbol {\nabla } \boldsymbol {\cdot }\boldsymbol{\mathsf{T}}_\boldsymbol{\mathsf{K}}$ moves $e_K$ conservatively around in space and so is neither a source nor a sink for $e_K$. The small-scale TPE field gains energy from the forcing term $\mathcal {F}_P$, can lose/gain energy reversibly to/from the large-scale TPE field $E_P$ through the interscale TPE flux term $\varPi _P$, can lose/gain energy reversibly to/from the small-scale TKE field $e_K$ through the buoyancy term $\mathcal {B}$, and loses TPE irreversibly through the TPE dissipation-rate term $\varepsilon _P$. The transport term $\boldsymbol {\nabla } \boldsymbol {\cdot } \boldsymbol{\mathsf{T}}_\boldsymbol{\mathsf{P}}$ moves $e_P$ conservatively around in space and so is neither a source nor a sink for $e_P$.

Figure 1

Table 1. Table of parameters in DNS.

Figure 2

Figure 2. Snapshots of velocity and density fields from the DNS showing a plane in the streamwise and vertical directions. Normalized quantities are: (a) spanwise component $u_y/\sqrt {2\mathcal {E}_K/3}$, (b) streamwise component $u_x/\sqrt {2\mathcal {E}_K/3}$, (c) vertical component $u_z/\sqrt {2\mathcal {E}_K/3}$, (d) fluctuating density $\rho '/\sqrt {\langle \rho '\rho '\rangle }$. Values go from (red, blue), which correspond to $(-3,3)$ for the normalized quantities, centred at $\text {white}=0$. Velocities are normalized using the same scale $\sqrt {2\mathcal {E}_K/3}$ to highlight the anisotropic partitioning of kinetic energy in the flow.

Figure 3

Figure 3. Snapshots of the filtered (with $\ell =60\eta$) velocity and density fields from the DNS showing a plane in the streamwise and vertical directions. Normalized quantities are filtered: (a) spanwise component $\tilde {u}_y/\sqrt {2{E}_K/3}$, (b) streamwise component $\tilde {u}_x/\sqrt {2{E}_K/3}$, (c) vertical component $\tilde {u}_z/\sqrt {2{E}_K/3}$, (d) fluctuating density $\widetilde {\rho '}/\sqrt {\langle \widetilde {\rho '}\widetilde {\rho '}\rangle }$. Values go from (red, blue), which correspond to $(-3,3)$ for the normalized quantities, centred at $\text {white}=0$. Velocities are normalized using the same scale $\sqrt {2{E}_K/3}$ to highlight the anisotropic partitioning of kinetic energy in the flow.

Figure 4

Figure 4. (a) Plot of mean small-scale TKE $\langle e_K\rangle$, TPE $\langle e_P\rangle$, and diagonal components of $\langle \boldsymbol {\tau }\rangle /2$, normalized by total energy $\langle E_T\rangle \equiv \lim _{\ell /\eta \to \infty }[\langle e_K\rangle +\langle e_P\rangle ]$, as a function of filter scale $\ell$. The thick dotted line indicates scaling $\propto \ell ^2$. (b) Plot of mean small-scale TKE $\langle \varepsilon _K\rangle$ and TPE $\langle \varepsilon _P\rangle$ dissipation rates, normalized by the total turbulent energy dissipation rate $\langle \epsilon _T\rangle \equiv \lim _{\ell /\eta \to \infty }[\langle \varepsilon _K\rangle +\langle \varepsilon _P\rangle ]$. The thin vertical dotted lines from right to left are $L/\eta,\ell _O/\eta,\ell _C/\eta =126.3,43.9,10.4$, respectively.

Figure 5

Figure 5. Plot of terms in the average small-scale TKE budget equation (2.15). Thin dotted lines from right to left are $L/\eta,\ell _O/\eta,\ell _C/\eta =126.3,43.9,10.4$, respectively.

Figure 6

Figure 6. Plot of terms in the average small-scale TPE budget equation (2.16). Thin dotted lines from right to left are $L/\eta,\ell _O/\eta,\ell _C/\eta =126.3,43.9,10.4$, respectively.

Figure 7

Figure 7. Plots of PDFs of (a) $e_K/\langle e_K\rangle$, (b) $e_P/\langle e_P\rangle$ and (d) $\mathcal {B}/\langle \mathcal {B}\rangle$ for different filter lengths $\ell$. In (c), the solid lines correspond to the PDFs of $\varPi _K/\langle \varPi _K\rangle$, and the dashed lines correspond to the PDFs of $\varPi _P/\langle \varPi _P\rangle$. Different colours/symbols correspond to different $\ell /\eta$ as indicated by the legend in (a).

Figure 8

Figure 8. Plots of $\sqrt {\langle \xi -\langle \xi \rangle \rangle ^2}/\langle \xi \rangle$ for $\xi =\varPi _K$, $\xi =\varPi _P$ and $\xi =-\mathcal {B}$ as functions of filter scale $\ell /\eta$ to illustrate how the standard deviation of a variable compares to its mean value at different scales.

Figure 9

Figure 9. Contour plot of the logarithm of the joint PDF of $\varPi _P/\langle \varPi _P\rangle$ and $\varPi _K/\langle \varPi _K\rangle$ for (a) $\ell /\eta =0.25$, (b) $\ell /\eta =6$, (c) $\ell /\eta =16$, (d) $\ell /\eta =60$. Colours correspond to the logarithm of the PDF, and the correlation coefficient is shown at the top of each plot.

Figure 10

Figure 10. Contour plot of the logarithm of the joint PDF of $\varPi _K/\langle \varPi _K\rangle$ and $\varPi _K^F/\langle \varPi _K^F\rangle$ for (a) $\ell /\eta =0.25$, (b) $\ell /\eta =6$, (c) $\ell /\eta =16$, (d) $\ell /\eta =60$. Colours correspond to the logarithm of the PDF, and the correlation coefficient is shown at the top of each plot.

Figure 11

Figure 11. Contour plot of the logarithm of the joint PDF of $\varPi _P/\langle \varPi _P\rangle$ and $\varPi _P^F/\langle \varPi _P^F\rangle$ for (a) $\ell /\eta =0.25$, (b) $\ell /\eta =6$, (c) $\ell /\eta =16$, (d) $\ell /\eta =60$. Colours correspond to the logarithm of the PDF, and the correlation coefficient is shown at the top of each plot.

Figure 12

Figure 12. Contour plot of the logarithm of the joint PDF of $\mathcal {B}/\langle \mathcal {B}\rangle$ and $\varPi _K/\langle \varPi _K\rangle$ for (a) $\ell /\eta =0.25$, (b) $\ell /\eta =6$, (c) $\ell /\eta =16$, (d) $\ell /\eta =60$. Colours correspond to the logarithm of the PDF, and the correlation coefficient is shown at the top of each plot.

Figure 13

Figure 13. Contour plot of the logarithm of the joint PDF of $Q$ and $R$ for (a) $\ell /\eta =0.25$, (b) $\ell /\eta =6$, (c) $\ell /\eta =16$, (d) $\ell /\eta =60$. Colours correspond to the logarithm of the PDF.