1. Introduction
The development of statistical dynamical closure theory for fluid dynamical equations describing chaotic motion depends on a suitable truncation of the infinite hierarchy of coupled moment or cumulant equations. For systems described by quadratic nonlinearity, the prognostic equation for a given cumulant is coupled to the next higher cumulant. Examples of particular interest here are the Navier–Stokes equations, and the quasi-geostrophic and primitive equations of atmospheric and oceanic dynamics. If closed at second order, the mean, the one-point function, is coupled to the second order cumulant, the two-point function, which in turn is coupled to the three-point function and so on. The order at which this infinite hierarchy of moments is truncated defines the dynamics in terms of interacting triads in wavenumber space. In particular, there is an important class of closure theories for which the three-point function can be represented in terms of time history integrals over a product of three (renormalized) propagators–two-point cumulants and response functions–multiplied by vertex functions [
1]. As noted in the review in the introduction of Frederiksen [
2], essentially, the same closure problem occurs for corresponding systems in quantum field theory, such as quantum electrodynamics (QED) and the scalar Klein Gordon equation with
Lagrangian.
The definitive pioneering advance in statistical fluid dynamical closure theory was made by Kraichnan [
3] with his development of the non-Markovian Eulerian Direct Interaction Approximation (DIA) for three-dimensional homogeneous isotropic turbulence (HIT) in which the propagators are closed at second order and the renormalized vertex functions are replaced by the bare vertices, the interaction coefficients, of the Navier–Stokes equations.
Kraichnan’s [
3] DIA was followed by independent approaches by Herring [
4,
5], resulting in the closely similar self-consistent field theory (SCFT) closure and by McComb [
6,
7,
8,
9] with his local energy transfer (LET) closure. With hindsight, the SCFT and LET closures can be derived formally from the DIA, as noted by Frederiksen et al. [
10] and Kiyani and McComb [
11], by using a fluctuation–dissipation theorem (FDT) [
12,
13,
14,
15,
16], as an approximation. These related closures use the
prior-time FDT [
14] (Equation (3.5)) defined by
for
. Here,
is the two-time spectral covariance at wavenumber
,
is the response function and
the prior time single-time covariance. Both the SCFT and LET have the same single-time second order cumulant equation as the DIA but with somewhat different response function or two-time cumulant equations. The SCFT has the same response function as the DIA but determines the two-time cumulant from Equation (1). The LET uses the DIA two-time cumulant and determines the response function from Equation (1). Carnevale and Martin [
17] and Carnevale and Frederiksen [
18] also developed two space scale versions of the Eulerian DIA closure for homogeneous anisotropic turbulence interacting with Rossby waves and internal gravity waves.
The subsequent further development of closures for homogeneous turbulence has been reviewed by Frederiksen and O’Kane [
1], McComb [
7,
8,
9], Lesieur [
19], Zhou et al. [
20], Cambon et al. [
21], Sagaut and Cambon [
22], and Zhou [
23].
Kraichnan’s [
3] theoretical approach to the statistical dynamics of HIT, and even more so the diagrammatic approaches of Wyld [
24] and Lee [
25], are based on application of renormalized perturbation theory to classical systems. Renormalized perturbation theory, through diagrammatic and functional approaches, were employed most famously by Tomonaga, Schwinger, and Feynman to develop the remarkably successful quantum electrodynamics (QED) theory in the mid-1900s (Frederiksen [
2] reviews the literature). In QED the strength of the interaction, measured by the fine structure constant of ~
, is quite weak while in high Reynolds number turbulence the interactions are much stronger.
Martin et al. [
26] and Phythian [
27] generalized the Schwinger–Dyson functional operator approach for QED to classical systems while the Feynman path integral approach [
2,
28,
29] was employed by Phythian [
30] and Jensen [
31] to extend the functional operator approach to more complex systems.
The performance of the DIA, as well the SCFT and LET closures, at the large energy containing scales, is quite accurate but the high Reynolds number power law behavior of the DIA and SCFT differ slightly from the
inertial range for three-dimensional turbulence and the
enstrophy cascading inertial range for two-dimensional turbulence [
32]. Kraichnan [
33] attributed these deficiencies to “sweeping effects”, spurious non-local interactions between the small and large scales of the turbulent eddies. McComb [
6,
7] showed that, at statistical steady state, the cause of the inconsistency of the DIA, SCFT, and Edward’s [
34] steady state closure, with the Kolmogorov [
35] classical
inertial range for high Reynolds number three-dimensional turbulence was associated with an infrared (zero wavenumber) divergence for the response function equation. Remarkably, the singularity disappears with the LET response function showing that the Eulerian LET is consistent with the classical
inertial range for high Reynolds number three-dimensional turbulence. However, at moderate Reynolds numbers or for any finite resolution, and notably for two-dimensional turbulence [
36,
37], all two-point two-time Eulerian closures such as the DIA, SCFT, and LET closures all have similar deficiencies with too little small-scale energy.
Kraichnan [
38] noted that the correct inertial ranges could be obtained by localizing the interactions between wavenumbers of triads through a cut-off ratio
. In fact, the studies of Frederiksen and Davies [
37] and O’Kane and Frederiksen [
39] suggest that
is essentially universal for both two-dimensional homogeneous and inhomogeneous turbulence. This is also very close to the estimate of
of Sudan and Pfirsch [
40] for three-dimensional HIT.
Subsequently, Kraichnan [
41,
42], Kraichnan and Herring [
43], Kaneda [
44], and Gotoh et al. [
45] used transformations of the fluid dynamical equations into quasi-Lagrangian coordinates to develop alternatives to the Eulerian closures. Unfortunately, unlike the Eulerian DIA, the equations and results of the quasi-Lagrangian closures depend on the choice of field variables used and whether the formulation is in terms of labelling time derivatives [
41] or measuring time derivatives [
44] as reviewed by Frederiksen and Davies [
37]. The quasi-Lagrangian closures attempt to avoid the spurious convection effects by non-unique transformations and choices of variables but are still second order in perturbation theory and do not fundamentally address the problem of vertex renormalization. Martin et al. [
26] asserted that “the whole problem of strong turbulence is contained in a proper treatment of vertex renormalization”. A fundamental resolution of the vertex renormalization problem would certainly be a phenomenal achievement for the theory of HIT. However, in the meantime a one parameter non-Markovian theory with
, as discussed above, or a one parameter Markovian closure such as the EDQNM and EDMIC, discussed in
Section 7, may suffice.
There is an equally important issue, stressed by McComb [
9], and that is “Ultimately, if closures are to be useful, they must be capable of application to real-life situations”. This requires the development of computationally tractable closure theories for inhomogeneous systems. Second-order inhomogeneous closures have traditionally required the computation of the full covariance and response function matrices to close the mean field equation. This is the case for closures based on the renormalized perturbation theory approach of Kraichnan [
46,
47], on the functional approach of Martin et al. [
26], on the path integral approaches [
30,
31], and on the corresponding Schwinger–Dyson and Schwinger–Keldysh methods for quantum field theory [
2].
The computational costs of computing the full covariance and response function matrices at every timestep are currently too large, for high-dimensional systems, and are prohibitive for the non-Markovian closures with potentially long time-history integrals. Thus, to date, closures that require full covariance matrices including time-history information, i.e., correlations in time, such as Kraichnan’s [
46,
47] inhomogeneous DIA (IDIA) have not been applied to studies of real-life inhomogeneous turbulence problems. Some progress has been made in tackling these two important issues of (1) the size of the covariance and response function matrices and (2) the potentially long time-history integrals.
The quasi-diagonal direct interaction approximation (QDIA) closure, formulated by Frederiksen [
48] for inhomogeneous turbulence interacting with mean flows and topography, represents the full covariance and response function matrices, and the three-point function, in terms of the diagonal elements and the mean flow and topography in spectral space. It thus reduces the computational problem of second order inhomogeneous closure from the computation of
covariance and response function elements at each time step to
where
is the total number of components of the dynamical fields. In addition, the coupled mean field and covariance and response function equations are much simpler than Kraichnan’s [
46,
47] IDIA closure and the related inhomogeneous closure formulations discussed above [
2]. The QDIA closure has subsequently been generalized to include non-Gaussian initial conditions [
39], to include Rossby waves on a
-plane [
49], to general classical field theories with first order time derivatives [
50,
51] and to classical and quantum field theories with first or second order time derivatives and non-Gaussian noise and non-Gaussian initial conditions [
2].
The QDIA has been numerically implemented and extensively tested against large ensembles of direct numerical simulations (DNS) and shown to be only slightly slower than the DIA for homogeneous turbulence. It has been implemented, in the bare vertex approximation and, at higher resolution and Reynolds numbers, in regularized form with
; it has been used to study the statistical dynamics of the interaction of inhomogeneous turbulent flows with topography on
-planes [
39] and
-planes [
49]. It has been tested in predictability studies for atmospheric blocking transitions [
49,
52], in data assimilation studies with square root and Kalman filters [
53,
54], and for developing subgrid scale parameterizations [
55,
56]. The structure of the QDIA closure equations has also been used as a framework for developing subgrid scale parameterizations for atmospheric and oceanic turbulent flows [
57].
Progress has also been made on second major issue noted above, viz., reducing the cost of computing the potentially long time-history integrals of the non-Markovian closures that scale like
where
is the total integration time. The cumulant update restart procedure [
10,
58] for homogeneous turbulence that uses non-Gaussian terms in the periodic restarts has been generalized for the QDIA closure to also improve its computational efficiency [
39,
49]. Recently, Frederiksen and O’Kane [
1] formulated and implemented Markovian inhomogeneous closures (MICs) and showed that they performed very well compared with large ensemble of DNS and with the non-Markovian QDIA.
Orszag [
59] formulated the eddy damped quasi-normal Markovian (EDQNM) closure for HIT for which the computational cost scales with integration time
like
. It is a one-parameter realizable closure that avoids the potential negative energy problems [
60,
61] of quasi-normal closures [
62]. It can also be formally reduced from the Eulerian DIA by replacing the response function equation by an analytical form incorporating the eddy damping, with an empirical damping timescale parameter, and replacing the two-time cumulant equation by that determined from the
current-time FDT
for
. At about the same time Kraichnan [
63] introduced a slightly more complex Markovian closure for homogeneous turbulence, the test-field model (TFM), which, like the EDQNM, is consistent with the inertial range power laws for two-dimensional and three-dimensional turbulence. These Markovian closures have been extensively employed in the study of both isotropic and homogeneous anisotropic turbulence including in the presence of waves [
17,
18,
21,
22,
64,
65,
66,
67,
68,
69,
70,
71,
72].
Bowman et al. [
68] made an important point about the EDQNM for the interaction of homogeneous turbulence with waves demonstrating that the closure may not be realizable if a time-dependent analytical response function is employed rather than the oft-used asymptotic form. They noted that this is the case irrespective of whether a Markovian form is derived using the current-time FDT in Equation (2) or the prior-time FDT in Equation (1). Instead, they established a realizable Markovian closure (RMC) using an FDT that contains both current- and prior-time cumulants and that we call the
correlation FDT
for
. It is clear from Equation (3) that the response function and correlation function are equal. The RMC statistical equations consist of a Markovian equation for the single-time cumulant, in which appears a triad relaxation function, coupled to a Markovian equation for the triad relaxation function. Bowman et al. [
68] also formulated the theory for multi-field versions of the homogeneous RMC and Hu et al. [
73] applied it to the two equation Hasegawa–Wakatani model of plasma physics. A related realizable test-field model (RTFM) closure was developed by Bowman and Krommes [
74] who employed it and the RMC to studies of the interaction of homogeneous turbulence and plasma drift waves (essentially Rossby waves) in the Charney–Hasagawa–Mima equation (essentially the barotropic vorticity equation with long wave stabilization).
Frederiksen and O’Kane [
1] developed and examined the performance of three new versions of Markovian Inhomogeneous Closures (MICs) using the three FDTs in Equations (1)–(3). These FDTs were combined to the form
for
and
for
. The current-time FDT corresponds to
, correlation FDT to
and the prior-time FDT to
. In principle, realizability is only guaranteed for the variant employing the correlation FDT in Equation (3). However, for the numerical experiments carried out, the performance of all three variants was very similar with remarkable agreement with results of the non-Markovian QDIA and with large ensembles of DNS.
The broad aim of this article is to make further advances in the development of efficient closures for inhomogeneous turbulent flows. We focus on an issue that complicates the formulation of MICs derived from the non-Markovian QDIA: the fact that the closure equations for the QDIA require the complete trajectory of the mean field in the time history integrals of both the single-time cumulant equation and mean field equation. This dependence on the mean field trajectory is carried through to one of the three auxiliary relaxation functions in each of the three MIC variants of Frederiksen and O’Kane [
1]. As we show in this study, if the decay of the two-time cumulants and response functions in the time history integrals can formally be assumed to be faster than the change in the mean field then the MIC equations simplify and become more efficient. The abridged MIC equations involve just two relaxation functions for each closure. Importantly, the new relaxation functions do not involve the trajectory of the mean field and, equally importantly, for the MIC employing the current-time FDT in Equation (2), the relaxation functions only involve the response functions as is the case for the EDQNM for homogeneous turbulence. In the case of HIT, the EDQNM triad relaxation function can be calculated analytically rather than through time integration and thus the EDQNM is computationally even more efficient. If the problem of possible non-realizability of the EDQNM for homogeneous anisotropic turbulence (HAT) with response functions involving the bare wave frequency [
1,
68] could be overcome by a suitable renormalized form then, again, the MIC with analytical relaxation functions would be vastly more computationally efficient.
In this study we focus on the case of two-dimensional inhomogeneous turbulent flows interacting with Rossby waves and topography on a generalized -plane. Our specific goals are:
Formulate the abridged QDIA closure equations in the case of formally slowly varying mean field components in the time history integrals;
Examine the realizability of the abridged QDIA variant and its consistency with canonical equilibrium;
Formulate more efficient abridged MICs for each of the FDT in Equations (1)–(3) based on the abridged QDIA;
Evaluate the performance of the abridged QDIA and the three abridged MICs compared with large ensembles of DNS;
Formulate an Eddy Damped Markovian Inhomogeneous Closure that has analytical representations of the relaxation functions similar to the EDQNM for homogeneous turbulence.
Although our abridged more efficient formulations assume that the mean field in the time history integrals varies more slowly than the decay of the two-time cumulant and response functions, we test these new non-Markovian and Markovian closures in situations where the mean field is spun up rapidly from very small amplitude. These simulations thus are severe tests of the closures as energy is drained from the large-scale flow and the turbulent eddy field to generate Rossby wave trains via topographic interactions.
The article is organized as follows. The equations for two-dimensional flows, consisting of a large-scale eastward wind and smaller scale circulations, interacting with topography on a generalized
-plane, are presented in
Section 2. The large-scale wind evolves according to the form-drag equation and the smaller scales satisfy the barotropic vorticity equation on the doubly periodic domain. In
Section 3 the flow fields are represented by Fourier series and equations for the spectral coefficients are detailed. In
Section 4, the statistical dynamical equations for the non-Markovian QDIA closure are documented and the abridged QDIA formulated in which the current-time mean field replaces its complete trajectory from initial-time to current-time in the time history integrals. Three variants of abridged MIC models are derived in
Section 5 from the abridged QDIA by employing the current-time, prior-time, and correlation FDTs for the two-time cumulants as well as a Markovian form of the response function. The auxiliary Markovian prognostic equations for the relaxation functions needed for the MICs are formulated in
Section 5. In
Section 6, numerical simulations with the abridged closures are described and the results compared with very large ensembles (with 1800 members) of DNS and with results from the original QDIA and MICs [
1]. A new Markovian closure, the Eddy Damped Markovian Inhomogeneous Closure (EDMIC), is formulated in
Section 7 from the abridged MIC using the current-time FDT. It has analytical forms for the relaxation functions, rather than prognostic equations, like the EDQNM for homogeneous turbulence, and is a generalization of the EDQNM to inhomogeneous turbulent flows with statistical equations for both the mean flow and the second order cumulant. In
Section 8 we discuss the import of our findings and conclusions and ideas for a sequel to this work. The interaction coefficients for the spectral equations are presented in
Appendix A. Relationships between the diagonal and off-diagonal spectral elements of the two-point and three-point cumulants and response functions, which are needed for deriving the QDIA closure, are listed in
Appendix B.
Appendix C presents the Langevin equation for the abridged QDIA for slowly varying mean field and
Appendix D presents the Langevin equation for the EDMIC model.
5. Statistical Dynamical Equations for Abridged Markovian Inhomogeneous Closure
The EDQNM for homogeneous turbulence is a Markovian equation for the single time cumulant that incorporates a triad relaxation time with an empirical eddy damping. It does not evolve the mean field. In this Section, where we formulate Markovian inhomogeneous closures (MICs) we start with the single-time cumulant equation and then follow with the mean field equation. We consider three variants of the single-time MICs that are formulated from the non-Markovian abridged QDIA in Equation (25), denoted
, with the replacements
and
in Equation (28a,b). We denote these abridged MICs by the notation
to distinguish them from those of Frederiksen and O’Kane [
1] that we shall refer to as
since one of their relaxation functions involve the whole trajectory of
for
. Here, the superscript
relates to that used in the combined FDT in Equation (4) with
being the current-time FDT,
correlation FDT, and
the prior-time FDT.
The non-Markovian single-time covariance equation can be written in the form
where
is real. Here, with Equation (26) employed, we no longer need to split up the
and
terms into their mean vorticity, topographic and cross terms for developing MICs. This results in considerable simplification and efficiency of the subsequent Markovian closures derived from the QDIA closure. Some algebra shows that the
and
functions have the following expressions
The nonlinear noise and damping terms in Equations (30a–e) and (31a–c) simplify on applying the FDTs in Equation (4) with the time history integrals expressed through the relaxation functions
and
. Importantly, the relaxation functions can alternatively be determined by time dependent differential equations and effect the Markovianization. Thus,
We can simplify the single-time cumulant equation further by defining
so that
Now, to complete the Markovianization, the response function equation (23) with
must also be replaced by
We note from Equation (25), with the current-time expressions in Equation (28a,b), and from Equations (29), (33a–f) and (34) that
with
determined by the FDT in Equation (4). Thus, under these same conditions, the response function in Equation (36) is equivalent to
As foreshadowed above, with the response function equation having the simpler form in Equation (36), the integral forms for the relaxation functions
and
can be replaced by differential equations. Thus, the integral expression for the relaxation time
can equally be calculated by forward integration of the ordinary differential equation
with
. As well
can be calculated from
with
.
The statistical dynamics of the single-time cumulant is now determined by the Markovian form in Equation (35) with auxiliary Markovian equations for the relaxation times in Equation (39b,d).
Next, we aim to formulate manifestly Markovian equations for the mean field and thereby have a system of coupled Markovian equations for the mean and two-point cumulant. Again, we approximate the mean field
by the current-time mean field
in the time history integrals as in Equation (26). Then, from Equation (21) we have
Here, the nonlinear damping acting on the mean field and eddy-topographic force are given by
Therefore, with
defined in Equation (30d),
and
Now, implementing the FDT in Equation (4) these expressions become
where
and
The relaxation function
is again calculated through the auxiliary Markovian form in Equation (39d) and the mean field prognostic in Equation (40) simplifies to the abridged Markovian equation
Equation (44), for the mean flow
, and Equation (35), for the single-time cumulant
, together with the auxiliary Equation (39b,d) for the relaxation functions
and
, form the prognostic equations for the three abridged MICs with
. For the abridged MICs there are two relaxation functions to be calculated while for the original MICs of Frederiksen and O’Kane [
1] there were three. This of course reduces the computational task for the abridged MICs correspondingly. Importantly, from the abridged MIC with
we derive the EDMIC model with analytical representation of the relaxation functions in
Section 7. It is a generalization of the EDQNM to inhomogeneous turbulent flows and like the EDQNM is still more computationally efficient because the prognostic equations for the relaxation functions do not need to be solved.
6. Comparison of Non-Markovian and Markovian Closure Integrations with DNS
In this Section, we compare the performance of the non-Markovian abridged
closure, and the three abridged
Markovian closures, with each other, and with an ensemble of 1800 direct numerical simulations. These results are also compared with those of Frederiksen and O’Kane [
1] for the
and
models. Between them, these numerical simulations provide insights into the robustness of the inhomogeneous closure calculations to Markovianization, with three versions of the FDT, and to whether the time history integrals, or equivalent relaxation functions, are significantly impacted by the full trajectory of
for
or not.
Our aim is to provide severe tests of these different formulations in situations where the mean flow is rapidly evolving and interacting with turbulence and topography. This is achieved using the setup of Frederiksen and O’Kane [
1] where a large-scale mean eastward flow
interacts with topography in a turbulent environment. Because of the differential rotation on a
-plane, Rossby waves are generated that interact with the topography to provide a form drag on the large-scale flow
. There is a rapid transfer of energy from the large-scale flow to the smaller scale mean field, which spins up rapidly, as well as wave-turbulence interactions and changes in the wavenumber distribution of transient energy.
The experimental setup is as follows. We use length and time scales of one half the earth’s radius,
, and the inverse of the earth’s rotation rate,
, respectively. At the initial time the mean eastward flow
has a speed of
(non-dimensional
), the
-effect is
(non-dimensional
) representative of the earth at 60° latitude, and the coefficient of viscosity
is
(non-dimensional
). Additionally, the forcing
, the drag on the large-scale flow
and
. The topography is a 2.5 km high cone centered at 30° N, 180° E with and a diameter of 45° latitude [
49] (
Figure 1) and might be seen as an idealized representation of the Himalayas. The DNS and closure calculations are performed at a resolution of circular truncation C16 where
and all integrations proceed for 10 days with a time step of
(non-dimensional
).
Table 1 specifies the initial transient isotropic spectrum and initial ‘small-scale’ mean field, which is localized over the topography and of small amplitude. The closure calculations start from
and Gaussian initial conditions with
in
Table 1. For the DNS, an ensemble of 1800 simulations is started from the mean field plus different Gaussian isotropic perturbations with spectrum
in
Table 1. Further details on the setup of the DNS perturbations are given in [
49] (
Section 6). The time stepping in both DNS and closures is performed with a predictor-corrector procedure and the time history integrals in the non-Markovian closures are calculated using the trapezoidal rule [
10,
49].
The evolved DNS and closure results are compared in terms of the similarity of the mean flow fields, their pattern correlations, and their mean and transient kinetic energy and palinstrophy spectra. The mean, transient, and total kinetic energy spectra, averaged over circular bands, are defined by
and the set
is defined by
The band-average is over all
within a band of unit width at a radius
; the energy of the large-scale flow is plotted at zero wavenumber. Similarly, the band-averaged mean, transient, and total palinstrophy spectra are defined by
The initial mean non-zonal streamfunction for the simulations is shown in part (a) of
Figure 1. The other panels in
Figure 1 show the day 10 evolved mean streamfunctions for the non-Markovian and Markovian abridged closures and the ensemble of DNS. The substantial evolution in terms of magnitude and structure from the initial mean field is very evident in all simulations with large scale Rossby wavetrains primarily downstream of the conical mountain. There is little that can be said to distinguish between the panels apart from slight variations in the magnitude of the peaks and troughs of the wavetrains. We note that, at the first and largest peak downstream of the conical mountain, the value for the
(at 0.0139) agrees best with the ensemble of DNS (at 0.0137). The values for the
(at 0.0128),
(at 0.0128) and
(at 0.0129) are slightly smaller. We also note from
Table 2 that, of the abridged closures, the pattern correlation of the DNS mean non-zonal streamfunctions is largest with the
at 0.9999. We also see that the pattern correlation is the least with the
(at 0.9789) and nearly equal with the
(at 0.9994) and
(at 0.9995). In general, these results are only slightly less notable than those of Frederiksen and O’Kane [
1] where the full trajectory of
was used in the time history integrals. The corresponding pattern correlations of the DNS field with
is identical to that with
at 0.9999, and with all of
,
and
it is 0.9998. It is interesting that the replacement
has most effect on the non-Markovian QDIA closure that does not employ any of the FDTs and least effect on the
which uses the current-time FDT. Of course, in all cases the pattern correlations are remarkably high particularly given the dramatic evolution the flow field has undergone.
Next, we consider the energy and palinstrophy spectra of the non-Markovian
and each of the Markovian
models with
.
Figure 2 and
Figure 3 show the initial and 10-day evolved mean and transient kinetic energy spectra and palinstrophy spectra, respectively, for these closures and for comparison also the results for the ensemble of DNS. The palinstrophy spectra amplify any differences at small scales as expected. The
,
and
have slightly larger evolved transient energy near the peak at
while for
it is underestimated. However, all the closures perform remarkably well compared with the ensemble of DNS. Using the current-time mean field in the time history integrals does not significantly degrade the abridged closure simulations compared with those of Frederiksen and O’Kane [
1].
For higher resolution and higher Reynolds numbers we expect that the Markovian closures, like the Eulerian homogeneous non-Markovian DIA [
37] and inhomogeneous QDIA [
39], will need to incorporate a regularization, or empirical vertex renormalization, in order to yield the correct small-scale spectra. This regularization of the MICs is described in Appendix C of Frederiksen and O’Kane [
1]. Briefly, it is achieved by replacing the interaction coefficients
by
and
by
in the response function and two-time cumulant equations, but not in the single-time cumulant or mean field equations. Here,
is the Heaviside step function and
is a wavenumber cut-off parameter which plays the same role as the
in the eddy damping for the EDQNM closure in Equation (54) of
Section 7. As noted in the Introduction, a value of
appears to be essentially universal, or only weakly flow dependent, for two-dimensional homogeneous and inhomogeneous turbulence and for three-dimensional HIT.
The performance of all the abridged Markovian inhomogeneous closures studied in this Section are very encouraging, given the very rapidly changing flow evolution in the simulations. This includes the results for the model which uses the current-time mean field and the current-time FDT, such as the EDQNM closure. From the it is possible to develop a generalized EDQNM closure for inhomogeneous turbulent flows, through suitable analytical specifications of generalized eddy damping.
This then removes the need for the auxiliary prognostic equations for the relaxation functions and and yields a very efficient closure. By analogy, we call this closure the Eddy Damped Markovian Inhomogeneous Closure (EDMIC) that we formulate next.
8. Discussion and Conclusions
We have formulated statistical dynamical closure equations for inhomogeneous turbulent flows interacting with Rossby waves and topography, at several levels of simplification, and tested their performance against large ensembles of direct numerical simulations on a
-plane. Firstly, the non-Markovian Quasi-diagonal Direct Interaction Approximation (QDIA) closure [
48,
49],
, has been abridged to the
variant in which the current-time mean field
replaces the complete mean field trajectory
between the initial and current times,
, in the time history integrals. Secondly, from the abridged
closure, three variants of Markovian Inhomogeneous Closures (MICs) have been formulated based on different versions of the Fluctuation Dissipation Theorem (FDT). These are the current-time FDT, the prior-time FDT and the correlation FDT. The computational cost of the abridged MICs, like the original MICs formulated by Frederiksen and O’Kane [
1], scales like
where
is the total integration time. In contrast, the cost for the QDIA closures scales like
. The MICs do however need to compute auxiliary prognostic equations for the relaxation functions, which replace the time history integrals of the QDIA, and contain similar information. The abridged MICs have the computational advantage of there only being two such relaxation functions while for the original MICs [
1] there are three.
The efficacy of the abridged closures in capturing the evolved statistical dynamics of large (1800-member) ensembles of direct numerical simulations (DNS) has been tested in stringent numerical experiments with rapidly developing mean fields on a -plane. The numerical experiments start with a large-scale eastward mean flow impinging on a mid-latitude conical mountain in the northern hemisphere within a turbulent environment and with an initial small-scale mean field of much lesser amplitude. Simulations are performed for 10 days during which the non-zonal streamfunction of the mean field rapidly develops into a large-scale Rossby wavetrain downstream of the mountain and wave-turbulence and eddy-eddy interactions change the transient kinetic energy and palinstrophy wavenumber distribution.
Pattern correlations of the 10-day evolved mean non-zonal streamfunction between the abridged closures and DNS ensemble range from 0.9789 for
, through 0.9994 for
and 0.9995 for
to 0.9999 for
. Interestingly, for the original closures of Frederiksen and O’Kane [
1] the pattern correlation is identical, at 0.9999, for the
and 0.9998 for the
,
, and
. Thus, the QDIA is most sensitive to using the current-time mean field and the MIC that also employs the current-time FDT is least sensitive. However, the mean field results are remarkably good in all cases, abridged or original. This also extends to the transient kinetic energy and palinstrophy spectra where there are just slight differences with DNS near the peak at wavenumber
.
The fact that the abridged closures perform so well even when the mean flow is rapidly evolving indicates that the perturbation fields are also rapidly decorrelating. This suggests that rapid Rossby wave growth is associated with rapid error growth and loss of deterministic predictability. Indeed, this agrees with the finding of Frederiksen [
82] that instabilities tend to grow fastest when storms and blocks intensify. It also agrees with the results of ensemble weather forecasts where errors tend amplify when dynamical development of Rossby waves is fastest, as shown in Figure 9 of Frederiksen et al. [
83] and further discussed by O’Kane and Frederiksen [
52].
The robustness of the performance of the inhomogeneous closures suggest that it may be possible to replace the auxiliary prognostic equations for the relaxation functions by analytic expressions as in the Eddy Damped Quasi Normal Markovian (EDQNM) for homogeneous turbulence. We demonstrate that the abridged model, with both the current-time mean field and current-time FDT, can be adapted to an Eddy Damped Markovian Inhomogeneous Closure (EDMIC) consisting of a mean field equation and single-time cumulant equation with analytical expressions for the relaxation functions. We suggest that the EDMIC is the natural generalization to inhomogeneous turbulence of the EDQNM including its very high computational efficiency. We note that the EDMIC model is realizable under the same conditions as the EDQNM.
In a sequel to this work, we plan to study the performance of the EDMIC model, and its dependence on the eddy damping parameters, and we aim to include wave renormalization effects that ensure realizability in the presence of time dependent waves for both the EDMIC and EDQNM models.