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Uncovering the forcing statistics in stochastic linear models for compressible wall-bounded turbulence

Published online by Cambridge University Press:  21 July 2025

Xianliang Chen
Affiliation:
Department of Mathematics and Center for Ocean Research in Hong Kong and Macau (CORE), The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, PR China Department of Ocean Science, The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, PR China
Anjia Ying
Affiliation:
Department of Mechanical and Aerospace Engineering, The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, PR China
Jianping Gan
Affiliation:
Department of Mathematics and Center for Ocean Research in Hong Kong and Macau (CORE), The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, PR China Department of Ocean Science, The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, PR China
Lin Fu*
Affiliation:
Department of Mathematics and Center for Ocean Research in Hong Kong and Macau (CORE), The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, PR China Department of Mechanical and Aerospace Engineering, The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, PR China
*
Corresponding author: Lin Fu, linfu@ust.hk

Abstract

Modelling the nonlinear forcing is critical for linear models based on resolvent or input–output analyses. For compressible wall-bounded turbulence, little is known on what the real forcing looks like due to limited data, so the prediction agrees more qualitatively than quantitatively with direct numerical simulations (DNSs). Here, we present detailed forcing statistics of stochastic linear models, derived from elaborate DNS datasets for channel flows with bulk Mach number reaching 3. These statistics directly explain the success and failure of current models and provide guidance for further improvements. The benchmark linearised Navier–Stokes (LNS) and eLNS models are considered; the latter is assisted by eddy-viscosity-related terms. First, we prove the self-consistency of the models by using DNS-computed forcing as the input. Second, we present the spectral distributions of the forcing and its components. Third, we quantify the acoustic components, absent in incompressible cases, within the linear models. We reveal that the LNS forcing can exhibit relatively high coherence and low rank, very different from the modelled diagonal full-rank forcing. The eddy-viscosity-related term is not partial modelling of the LNS forcing; contrarily, the former is much larger than the latter, serving to disrupt the low-rank feature, enhance diagonal dominance and increase robustness across scales. The scales narrow in either horizontal direction are most susceptible to acoustic modes, while the others are little affected (${\lt}2\,\%$ in energy). Furthermore, the extended strong Reynolds analogy is assessed in predicting the density and temperature components.

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 (https://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), 2025. Published by Cambridge University Press
Figure 0

Table 1. Names and abbreviations of the nonlinear terms in the fluctuation equations.

Figure 1

Table 2. Parameters of the DNS cases for turbulent channel flows, where $t_{\textit {total}} u_{\tau }/h$ is the total eddy turnover time to accumulate statistics. Two incompressible cases are also included for later reference.

Figure 2

Figure 1. (a,b) Ensemble-averaged correlation tensor $\langle \,\hat {\!\boldsymbol q}^{{\prime \prime }}\,\hat {\!\boldsymbol q}^{{{\prime \prime }}{{H}}} \rangle$ (logarithmic scale to display all structures) from (a) the DNS data and (b) the eLNS model using the DNS-computed forcing, at $(k_x,k_z)h=(0.5,3)$ for case Ma15Re3k; only 15 components of the correlations out of 25 are shown because the tensor is Hermitian. (ce) Leading eigenvalues of the correlation from DNS and the LNS/eLNS models using the DNS-computed forcing with $(k_x,k_z)h$ equal to (c) (0.5, 3), (d) (3.5, 1) and (e) (20, 40).

Figure 3

Figure 2. Root mean squares of different nonlinear fluctuation terms from DNS in the (a) streamwise, (b) wall-normal and (c) spanwise momentum equations, and (d) the enthalpy equation, for case Ma15Re3k. Panels (ac) are normalised by $u_\tau$ and panel (d) is by $T_\tau$. See table 1 for term abbreviations. Note that all the components have been scaled by the mean-flow coefficients in (2.5b), as in (2.6).

Figure 4

Figure 3. Same as figure 2 except for case Ma30Re5k. See table 1 for the term abbreviations.

Figure 5

Figure 4. Variance of the three terms in (2.8) and the correlation between RSF and the modelled stress flux (all normalised by $u_\tau ^2$) for case Ma30Re5k: (a) streamwise and (b) wall-normal momentum equations.

Figure 6

Figure 5. Pre-multiplied one-dimensional spectra of the nonlinear fluctuation terms in the (a,b) streamwise and (c,d) spanwise directions in semi-local units, for the (a,c) LNS model ($\,\hat {\!\boldsymbol f}_q^{{\prime \prime }}$) and (b, d) eLNS model ($\,\hat {\!\boldsymbol e}_q^{{\prime \prime }}$), respectively, for case Ma30Re5k. The contours in each panel are normalised by their extreme values labelled on the top (in wall units $\rho _\tau$, $u_\tau$ and $T_\tau$). The blue dotted lines denote the peak location of the $u$-spectrum, and the blue dashed lines denote the $u$-contour of 0.4.

Figure 7

Figure 6. Same as figure 5, but for (a,b) case Ma15Re3k and (c,d) case Ma15Re9k and only the results of the eLNS model are shown. Panels (a,c) are the streamwise spectra and panels (b,d) are the spanwise ones.

Figure 8

Figure 7. Contours of the forcing matrix (a) $|(\boldsymbol{{FF}}^{{H}})_{\textit{DNS}}|$ and (b) $|(\boldsymbol{{EE}}^{{H}})_{\textit{DNS}}|$, at $(k_x,k_z)h=(0.5,15)$ for case Ma30Re5k. Their diagonal terms, as labelled in blue dotted lines, are plotted in panels (c,d) in normalised values; the purple reference lines are from (2.15).

Figure 9

Figure 8. (a,c) Energy ratios occupied by the leading 10 singular values of the forcing matrix in figure 7, and (b,d) shape functions of the principal forcing mode (case Ma30Re5k, $(k_x,k_z)h=(0.5,15)$). Panels (a,b) are for the LNS model, and (c,d) for the eLNS one.

Figure 10

Figure 9. Same as figure 7 except for scale $(k_x,k_z)h=(20,3)$.

Figure 11

Figure 10. Projection coefficients of the DNS forcing to the space spanned by the POD modes for case Ma30Re5k: (a,b,c,d) LNS part $\alpha _{{i\!j}}$, (e,f,g,h) eddy-viscosity part $\xi _{{i\!j}}$ and (i,j,k,l) eLNS part $\beta _{{i\!j}}$; see (4.2). Panels show (a,e,i) $\lambda _x=6.3h$, $\lambda _z=3.1h$; (b,f,j) $\lambda _x=6.3h$, $\lambda _z^+=179$; (c,g,k) $\lambda _x^+=143$, $\lambda _z=3.1h$; (d,h,l) $\lambda _x^+=143$, $\lambda _z^+=179$. The input energy $V_\sigma$ shown is amplified by 105 for all panels for convenience.

Figure 12

Figure 11. Same as figure 10 but for (a,b,e,f) case Ma15Re3k and (c,d,g,h) case Ma15Re9k. Panels (a,c,e,g) are fluctuations of large $\lambda _x$, $\lambda _z$ and panels (b,d,f,h) are of small $\lambda _x$, $\lambda _z$.

Figure 13

Figure 12. Energy ratio occupied by the leading POD mode ($r_{\sigma ,1}=\sigma _1/\sum _j\sigma _j$) for the forcing in the (a,b,c) LNS and (d,e,f) eLNS models at different $\lambda _x$, $\lambda _z$ for cases (a,d) Ma15Re3k, (b,e) Ma30Re5k and (c,f) Ma15Re9k. The black dashed line denotes $\lambda _x=\lambda _z$.

Figure 14

Figure 13. Energy ratio of the leading POD mode ($r_{\sigma ,1}$) for the LNS forcing with different $\lambda _z$ for different cases (at largest $\lambda _x=4\pi h$). Cases Ma00Re3k, Ma15Re3k and Ma30Re5k have comparable $\textit{Re}_\tau ^*=141\!\sim \!186$; cases Ma15Re9k and Ma00Re10k have higher $\textit{Re}_\tau ^*=393$ and 547 (see table 2).

Figure 15

Figure 14. (a) Variance and correlation of pressure fluctuation components for cases Ma15Re3k and Ma30Re5k. (b$-$e) Pre-multiplied 2-D spectra for the (b,d) incompressible and (c,e) compressible parts of the wall pressure fluctuations for cases (b,c) Ma15Re3k and (d,e) Ma30Re5k. The black dashed line in the right four panels denotes $\lambda _x=\lambda _z$.

Figure 16

Figure 15. Energy norm ratios of (a) the compressible part $\langle \hat {p}_c^{\prime }\hat {p}_c^{{\prime }{{H}}} \rangle$, (b) the incompressible part $\langle \hat {p}_{ic}^{\prime }\hat {p}_{ic}^{{\prime }{{H}}} \rangle$ and (c) their coupling $\langle \hat {p}_c^{\prime }\hat {p}_{ic}^{{\prime }{{H}}} \rangle$ relative to $\langle \hat {p}^{\prime }\hat {p}^{{\prime }{{H}}} \rangle$ for case Ma30Re5k. Three featured regions (I, II, III) are divided by the three black dashed lines $\lambda _x=\lambda _z$, $\lambda _x^+=30$ and $\lambda _z^+=30$. Extra contours outside the shaded levels are shown in grey dashed lines with labelled levels.

Figure 17

Figure 16. (a) Pre-multiplied 2-D spectrum of the acoustic energy $V_{q_{\textit {ac}}}$ (normalised by $\rho _bU_b^2/h$) and the energy-norm ratios of (b) $\langle \,\hat {\!\boldsymbol q}^{{\prime \prime }}\,\hat {\!\boldsymbol q}^{{{\prime \prime }}{{H}}} \rangle _{\textit {ac}}$ and (c) $\langle \hat {\rho }^{\prime } \hat {\rho }^{{\prime }{{H}}} \rangle _{\textit {ac}}$ relative to $\langle \,\hat {\!\boldsymbol q}^{{\prime \prime }}\,\hat {\!\boldsymbol q}^{{{\prime \prime }}{{H}}} \rangle$ and $\langle \hat {\rho }^{\prime } \hat {\rho }^{{\prime }{{H}}} \rangle$, respectively, for case Ma30Re5k. Three regions (I, II, III) are divided as in figure 15. The dotted lines in panel (a) are the contours (0.2, 0.4, 0.6, 0.8) of the normalised pre-multiplied spectrum of the total energy $V_q$.

Figure 18

Figure 17. Profiles of the total density fluctuation variance and those contributed by the acoustic and non-acoustic parts for scales of (a) $(\lambda _x,\lambda _z)/h=(0.6,6.3)$, (b) $(\lambda _x,\lambda _z)/h=(12.6,6.3)$ and (c) $(\lambda _x,\lambda _z)/h=(12.6,2.1)$ for case Ma30Re5k. Those predicted by the SRA relation (2.16) are also shown.

Figure 19

Figure 18. Contours of the decomposed eLNS forcing $(\boldsymbol{{EE}}^{{H}})_{\textit{DNS}}$ into the (a) non-acoustic part and (b) acoustic part for the scale $(\lambda _x,\lambda _z)/h=(0.6,6.3)$ for case Ma30Re5k.

Figure 20

Figure 19. Mean-flow budgets of the (a,c) streamwise momentum equation (normalised by $\tau _w$) and (b,d) enthalpy equation (normalised by $\vartheta _w$) for cases (a,b) Ma30Re5k and (c,d) Ma15Re9k.

Figure 21

Figure 20. Eigenfunctions (normalised by the energy norm) of the leading fast acoustic mode for fluctuations of (a,b) $(\lambda _x,\lambda _z)/h=(12.6,1.3)$ with $\omega h/U_b\approx 3.1$ and (c,d) $(\lambda _x,\lambda _z)/h=(0.6,6.3)$ with $\omega h/U_b\approx 17.5$ for case Ma30Re5k: (a,c) pressure from both the inviscid and viscous linear operators, and (b,d) the components from the viscous linear operator and from (5.3).