1. Introduction
Fluid flow that exhibits turbulence is more of a rule than an exception. It occurs when the Reynolds number of the flow
is sufficiently large. The number is specified as
where
U [m/s] is the fluid velocity,
[m
2/s] is the kinematic viscosity of the fluid and
L [m] is the spatial dimension of the flow configuration, e.g., the diameter of a tube, length of an air foil, or height above the earth’s surface. Values for
in the cases of water and air are typically 10
and 10
m
2/s, with the corresponding velocities 0.1 and 1 m/s. A configuration where
m results in a value of
of
. This exceeds, by far, the critical value of approximately
, where turbulence starts to occur.
Turbulence can be considered as a statistical process. General descriptions of the statistical parameters have yet to be found. What is known are partial results, such as the solutions for the log layer by Von Karman and the theory of the small viscous scales by Kolmogorov: e.g., Monin and Yaglom [
1]. However, a general description for the statistical parameters of the large scale is missing. The key problem is the description of the statistics of the fluctuations of the convective accelerations in the governing conservation equations.
The averaged representations of the conservation equations lack well-founded statistical descriptions of the non-linear convective terms. Instead, semi-empirical versions are used, which are adapted and calibrated from case to case. These are a common feature of the methods used in fluid mechanics, including computational fluid mechanics (CFD), which are widely used in engineering and environmental analysis (Bernard and Wallace [
2], Hanjalic and Launder [
3]). The presented analysis does not resort to empirical construction. Instead, statistical descriptions are derived by applying the methods of stochastic analysis (Stratonovich [
4], Van Kampen [
5]) and obeying the basic laws of physics.
The first part of the analysis is a presentation and update of previous work [
6,
7,
8,
9] concerning the Langevin and diffusion equations for the motion of passively marked fluid particles. In the Langevin equation, the autonomous universal Lagrangian-based Kolmogorov constant
appears. Its reciprocal value is about 0.14. Its smallness forms the basis for approximation. Solutions are given in descending powers of
where the leading and next to leading terms are retained.
All these solutions comply with the known laws of physics. The Lagrangian-based descriptions are subsequently converted into Eulerian-based fixed-point expressions by matching using
as the small parameter. They can directly be employed in the averaged equations of fluid mechanics. The outcome of the
expansion is tested through comparison with the results of Hoyas et al. [
10,
11] and Kuerten et al. [
12] for direct numerical simulations (DNS) of turbulent channel flow at a high Reynolds number.
2. Langevin Equation including Kolmogorov Similarity
Turbulent flow occurs for large values of Reynolds numbers,
, a situation that is frequently encountered in practice. For
, the time over which fluid particle accelerations decorrelate compares to the decorrelation times of particle velocity as
to 1, e.g., [
1]. This forms the basis for assuming that the velocity process can be represented by a Markov process, where accelerations are modelled as delta correlated. The corresponding Langevin equation reads as
where the time-dependent position of the moving fluid particle is described by
and
. In the above equations:
Fluid velocities at a fixed point in a fixed frame of reference using the Eulerian description are indicated by
, while velocities of fluid particles that move with the flow using the Lagrangian description, are indicated by
. The coordinate
x is used to denote a fixed position in the non-moving fixed coordinate system, while
is the position of a moving particle. The turbulent flow field is considered to be stationary in a fixed frame of reference. Statistical averages of Eulerian flow variables can be calculated by time averaging, which is indicated by angled brackets or superscript
. The white-noise amplitude can be specified by implementing the Lagrangian version of Kolmogorov’s similarity theory of 1941, also referred to as K-41 theory: [
13] and [
1] Section 21.3. This yields
where
is a universal Lagrangian-based Kolmogorov constant, and
is the mean energy dissipation rate averaged at a fixed position
and evaluated at particle position
when applied in Equation (
4):
where
is a fluctuating component of Eulerian velocity at fixed position
.
The observation that second-order correlations of fluid particle accelerations tend to those of a delta-correlated process, when
, is, in itself, not sufficient to justify the Langevin model [
9]. The description of the forcing term by Gaussian white noise leads to applying ordinary non-intermittent Kolmogorov (K-41) theory. The effects of intermittency, apparent in corrections in higher-order structural functions, are not accounted for in the Langevin model [
9]. For that purpose, one can adopt a fractal model based on Kolmogorov’s refined similarity theory: [
1] Section 25.2.
However, the statistical averages of particle displacement that determine turbulent dispersion change little under such an approach: [
1] and Borgas [
14]. The effect of intermittency is apparent in small viscous scales, which govern the acceleration process, rather than in large energetic scales, which govern the velocity process of turbulence. In many applications, a Langevin model resting on K-41 theory can be considered to be a sound approach for describing the mean dispersion on distances of large-scale turbulence.
Individual values of displacement
and velocity
obtained from Equations (
2) and (
3) do not represent the actual values of fluctuating displacements and velocities of fluid particles as they occur in turbulent flow. Instead, they are dummy variables that enable the specification of statistical averages of actual fluid flow. This is achieved by generating many realizations using
as a random generator and averaging the results. In the case of passive marking of fluid particles all starting at position
at
, the fluctuating velocities
should, for every realization, be selected randomly in accordance with the distribution of the Eulerian fluctuating velocity at position
:
During a simulation, the coefficients in Equations (
2) and (
3) vary in magnitude with the particle position in accordance with their value at
. A probabilistic description of particle displacement and its velocity is obtained after performing many simulations and averaging the result at every moment in time. This enables evaluating the average spatial distribution of particles with time. This type of Lagrangian averaging is denoted by an overbar: In the case of the simulated variable
, it can be written as
where
is the value of
f at time
t in the case of simulation
n.
As alternative to time simulation using the Langevin equation the same statistical distributions of fluid particle velocity and position can be obtained from the Fokker–Planck equation associated with Equations (
2) and (
3). It is given by
where
is the joint probability density function of velocity and position at time
t.
3. Specification of Damping Function by -Expansion
Thus far, I have not specified the damping term
in the Langevin equation. The specification of the damping term in a form that is generally applicable has long been an issue [
6,
7,
8,
9,
15]. A method was proposed in which Kolmogorov constant
is used as the basis for an expansion. Solutions are described in terms of an expansion [
7,
8,
9] in consecutive powers of
. The expansion is not related to a dimensionless combination of parameters, which can attain a vanishingly small or large value. Such a combination does not exist. Instead,
is used as a scaling parameter, facilitated by its autonomous position in statistical turbulence at a large Reynolds number [
9].
The scaling parameter enters by the white-noise term and results in specific powers of
in each of the terms on the basis of the required balances between them. The accuracy of the expansion depends on the truncation of subsequent terms. According to the measurements and data from numerical simulations,
has a value of about 7: Sawford [
16] and
Section 9. The accuracy of the resulting expressions is discussed in
Section 8 and
Section 9.
Realistic solutions in the limit of
are obtained from the Langevin equation when all terms scale in the same manner with
. For this to happen, the damping term must scale as
, and the time of correlation, which is the statistically relevant time as
; thereby, noting that the white noise term
scales as
. The displacement due to fluctuations during correlation scales is
. This initial scaling allows for a number of approximations [
9]. To the leading order in
, the displacement of a particle is small, and values of fixed-point statistical quantities used in the parameters of the Langevin equation can be represented by their values at the marking point
.
We can thus discuss a homogeneous statistical process in the initial stages after marking [
6,
7,
8,
9]. During that short time, the dissipation of energy by viscous action is small. The change in the Hamiltonian by viscous dissipation
is small and proportional to
. The statistical process is initially one that can be described by Einstein’s fluctuation theory, e.g., Reichl [
17]. In the leading order formulation in powers of
, the damping term is linear in velocity, satisfies Onsager symmetry, and its magnitude is determined by the fluctuation–dissipation theorem [
8,
9]. As a result,
where
is the inverse of the covariance tensor of the Eulerian velocity field
4. Higher-Order Formulation of the Langevin Equation
Until now, attention has been focused on the leading-order term in the expansion with respect to
. The resulting descriptions involve a truncation error of
. Such an error will become smaller, the larger
is. However, in turbulence, the value of
is limited to about 7. This corresponds to
and implies that the truncation error can become large. Deriving expressions for higher-order terms is, thus, desired [
7]. For that purpose, one can resort to the well-mixed principle of Thomson [
15]. Given an initial distribution, particles will, in the course of time, mix up with the fluid and attain the distribution of fluid velocity. This equilibrium distribution satisfies the Eulerian interpretation of Equation (
8), which is given by [
7]
where
and
is the distribution of the fluctuating component of the fixed-point Eulerian fluid velocity
. There is no time derivative in Equation (
11) when considering stationary turbulence: Statistical averages at a fixed point do not vary with time. Note further that
is not a statistical variable but a fixed position. Statistical averages can be obtained from time averaging at fixed point
. Derivatives of
with respect to
attain values whenever the statistical parameters of
(covariances, etc.) vary in space (inhomogeneous turbulence).
The Eulerian distribution
is equivalent to the non-equilibrium steady state distribution in statistical mechanics. Equation (
11) represents the general form of the fluctuation–dissipation theorem that is appropriate for turbulence. Given
, Equation (
11) can be used to derive expressions for the damping function
. Noting the leading-order formulation with respect to
, cf. Equation (
9), we have
where
is to be determined. The Eulerian velocity distribution can be taken as Gaussian to the leading order,
where
is the zero-mean Gaussian while
is the correction on the Gaussian behavior. Values of the zero, first-, and second-order moments are fully captured by the Gaussian part of the description,
values of cumulants higher than second order are determined by
. Substituting the description for
and Equation (
12) into Equation (
11), one obtains, for
, the equation
where there are dropped terms of relative magnitude
in the contributions due to non-Gaussianity, i.e., the second term on the right-hand side of Equation (
15). Equation (
15) is exact, i.e., it does not involve any approximation or truncation with regard to
in the case of Gaussian Eulerian velocities
. The solution of Equation (
15) is [
7]
where
,
where
is the solution of the homogeneous problem
A variety of solutions exists for
, linear and nonlinear in
; however, each of them contains a degree of indeterminacy apparent in unspecified constants. When confining the damping function to linear representations in
, the solution of Equation (
18) is
where
is the alternating unit tensor. Solution (
19) constitutes an antisymmetric extension to the symmetric damping tensor derived in the previous section as described by the first term of solution (
12). In this solution
are three dimensionless constants whose values are unknown. It is a reflection of the nonuniqueness problem: Except for isotropic turbulence, it is impossible to fully specify the damping function on the basis of a specified fixed-point Eulerian velocity distribution. Yet, there is a practical way out of the nonuniqueness problem [
7,
8,
9].
It appears that
yields only contributions of relative magnitude
compared to the previously determined leading terms in the statistical distributions of particle displacement. This conclusion is arrived at when deriving the diffusion equation from the Langevin equation: see
Section 5. This reveals the contributions of relative magnitude
in diffusivity and convection only. The same result is obtained for the other term in solution (
17), which describes the effect of non-Gaussianity. In general, the contribution of
in solution (
16) can be disregarded in any description, which allows for a relative error of
in the diffusion limit. Setting
, we arrive at a Langevin model, which has, as a damping function,
While the first term in this solution corresponds to the result of the Hamiltonian base case, the second and third terms represent the correction due to inhomogeneity in an otherwise locally homogeneous statistical field. The corrections can be related to the change of energy, which was disregarded in the leading-order formulation where underlying particle mechanics can be considered Hamiltonian [
7,
8]. The second term describes the change of energy due to changes of covariances in the direction of the mean flow. Accelerating or decaying the mean flow results in non-zero values of the second term. The third term describes the effects of the spatial gradient of the fluid velocity covariance. This can be associated with shearing due to external forcing.
Solution (
20) corresponds to a previous result of Thomson [
15]. It was one of several proposals made for the damping functions, which all satisfy the well-mixed criterion and which correspond to an entirely Gaussian Eulerian velocity distribution. This is a reflection of indeterminacy because of the nonuniqueness. The present analysis provides an answer. It reveals descriptions for statistical displacement obtained from Equation (
20), which are unique up to an error of
.
5. The Diffusion Limit
The diffusion limit concerns the description of random particle displacements on a time scale that is much larger than the correlation time of the fluctuating velocity. As indicated by a balance between the acceleration term and damping term in the Langevin equation, the correlation time can be expressed as
where
is the magnitude of velocity flucutations and
is the characteristic time of large scales or of the eddy turn-over time. The description of the time scale
is known as coarse graining, e.g., [
1] vol.I, Section 10.3. The magnitude of the fluctuating fluid particle displacement during correlation can be represented by
where
represents the size of the eddies, which is also the distance over which the statistical parameters vary in magnitude.
The Langevin model is centered around the fluctuating particle velocity relative to the mean Eulerian velocity: cf. Equations (
2) and (
3). In line with this representation, the displacement of a fluid particle by the sum of a component due to the mean flow and a component representing the zero-mean random displacement are described (see also [
18] and [
5] Section XVI.5):
where
is the particle track according to the Eulerian mean velocity:
For general inhomogeneous turbulent flow, the Eulerian-based coefficients in the Langevin model vary in magnitude with the space coordinates. This makes the coefficients time-dependent in the Langrangian-based description of the Langevin model. Representing displacement by Equation (
23), the time dependency occurs in two ways [
8]: (i) through spatial variations when following the particle according to the mean velocity
and (ii) through dependency on random displacement
In the next analysis, I shall disregard the dependency on
. Furthermore, I disregard the non-linear third term in the damping function as well as
. Requiring the Gaussian behavior in the leading order formulation and mixing for next-to-leading order, all these terms yield contributions of relative magnitude
in the diffusion model: see Appendix of [
8]. The Langevin model, which specifies diffusion to the leading order and next-to-leading order now follows from Equations (
2) and (
3) as
From Equations (
3), (
23) and (
24), we obtain
Fluctuating Equations (
26) and (
27) can be transformed into a Fokker–Planck equation for the joint probability of
and
. The solution is a multi-dimensional Gaussian distribution with time-dependent parameters: [
5] Section VIII.6. The zero-mean probability density distribution for the fluid particle position in the fixed coordinate system
, which moves with the mean Eulerian velocity
is specified by the diffusion equation
subject to a suitably chosen initial distribution at
, i.e., the delta pulse
in the case of passive marking of particles at
and
. Note that the time derivative in the above Eulerian description applies to the coordinate system, which moves with the mean velocity according to Equations (
23) and (
24)
. To evaluate the diffusion coefficient
, note that
where the latter term can be calculated by multiplying Equation (
26) with
and averaging
There is no contribution of the last term of Langevin Equation (
26) because
is only correlated with
. Substituting Equation (
30) into the r.h.s. of Equation (
29) results in the following first-order differential equation for the diffusion coefficient
subject to the initial condition
at
. The equation describes the transient of the diffusion coefficient towards its value valid in the diffusion limit when
. This limit value can be time-dependent on the time-scale
and can be obtained by iteration using
as the small parameter [
8]. The leading order follows from a balance between the second term on the l.h.s. and the first term on the r.h.s. Substituting this solution into the neglected other terms and noting that, according to our definitions,
when
, we obtain, in terms of the Eulerian coordinates of the non-moving frame [
8]
The leading order term in the diffusion tensor is symmetric; however, the terms that are next to the leading order are not. However, the non-symmetric part of the tensor is found to make contributions of
in the convection of fluid particles and admixture only: [
8]. The non-symmetric part makes no contribution to the next-to-leading order terms in the diffusion coefficient.
In the above derivation, I considered the limit
by which velocities de-correlated from their initial value at
. At the same time, one can take
, which is the time scale of the large eddies and the time scale of inhomogeneous behavior. Under this condition, the values of parameters can be represented by their values at the initial marking:
. As one can repeat the derivation for any other point of marking, one can replace
by
: i.e.,
and
in (
32).
The diffusion equation in a non-moving Eulerian frame now follows from Equations (
28) and (
32) as
where
is the probability density of a marked fluid particle at position
and time
t. The probability distribution applies equally to parameters whose values are linearly connected to the value of the particle position: i.e., concentrations of passive or almost passive admixtures, such as aerosols or the temperature in incompressible or almost incompressible fluids; see also
Section 7. To determine the distributions from (
33), the mean values
, co-variances
and mean dissipation rates
need to be known. These can be obtained using techniques of Computational Fluid Dynamics.
6. Statistical Descriptions of Momentum Flux
Momentum flux plays a central role in the conservation equations of fluid mechanics. An issue is the specification of the Reynolds stresses, i.e., the mean value of the fluctuating components of the momentum flux tensor. The conservation equations are typically formulated with respect to a fixed coordinate system, viz. the Eulerian formulation. The aim of the present analysis is to derive expressions for the mean value of the fluctuating components that fit in the Eulerian frame. First, the Lagrangian-based momentum flux tensor is considered where are the velocities of moving fluid particles that all pass at through the surface at (alternatively, one can choose the velocity and the surface but with ultimately the same Eulerian result due to the symmetry of the diffusion tensor).
Statistical averages are determined at close distance from using Lagrangian-based expressions for , which were derived in the previous sections. Taking the diffusion limit of the Lagrangian-based solutions and letting the distance from approach zero on the coarse scale of the diffusion approximation, a connection can be made with the Eulerian-based value of the tensor: . This enables the completion of the description of the averaged representation of the conservation equations of momentum for fluid mechanics.
The displacement of a marked fluid particle that is at position
at time
follows from (
3) as
where
is value of the Eulerian mean velocity at particle position
and
To describe the position of the particle at times close to
, expand the r.h.s. of (
35) as:
where
is the Eulerian mean velocity at
. Neglected terms on the r.h.s. of (
36) are larger than the quadratic in
t and
. It can be shown that these terms only contribute to
in the diffusion approximation. In accordance with the above expansion, the particle velocity is described by
The objective is to describe the average momentum of particles that approach the surface at with velocity . The particles are situated in an area that is small compared to the size of the large eddies so that Eulerian statistical averages can be treated as homogeneous in space. Furthermore, the area considered is large compared to the area where the particle velocities are correlated. For these conditions to be satisfied, , which is the condition for the diffusion limit to apply. This involves a limit process whereby time approaches zero but on the time scale of coarse graining of the diffusion limit: , where is the correlation time of the particle velocities.
The momentum for small negative times is given by
The average value of the momentum of all particles passing the surface
is
with the property that
and
at
. Fluid particles will cross the plane
at different positions. However, the particles under consideration are in an area whose size is limited. The spatial variations of the mean Eulerian velocities are small and can be disregarded within the order of approximation of the developed perturbation scheme. In (
39), they are taken to be equal to the value at the point of the crossing
of (
38).
When applying Langevin Equation (
2) to negative values of
t, the damping term has to change sign in order to yield the required decay with
. Hence,
,
, and
The correlation
can be determined in accordance with (
31) and (
32), where the energy dissipation rate and the co-variances can be taken to be equal to their values at
under the limit process of the diffusion limit. The result equals the expression for the diffusion coefficient of (
32).
When shear and mean flow gradients are absent, an isotropic state exists, a feature that is seen in grid turbulence. In this case,
where
is the kinetic energy of the isotropic state. Invoking (
40)–(
42) in (
39), we have
Result (
43) applies in an area where the diffusion limit holds. The area is of volume
where
and where
is the length of velocity correlations and
L is the size of the large eddies or flow configuration. The presented descriptions are valid in the limit of
,
. The smallness of
is limited:
. Yet, comparison with a range of results of measurements and direct numerical simulations shows fairly good agreement (
Section 9). The reason is that terms of order
are incorporated into the expansion, and the correlations decay exponentially with time
where
is the eddy turnover time (cf. Equation (
21)).
Reducing the volume of the area
to zero, it becomes identical to a point in the Eulerian description of the flow field. We can, thus, take
Noting that
where
is covariance or Reynolds stress, we have from (
43)–(
46)
The mean value of the fluctuating kinetic energy
k is given by
where repeated indices
n imply summation. Substituting (
47) into (
48), one obtains
which can be used to eliminate
from (
47) with the result
Similar to the analysis in the previous section, one can repeat the above procedures for any other point
and extend the results (
45) and (
50) to all positions
by replacing
by
. The resulting statistical descriptions account for inhomogeneity of the turbulence field.
Equation (
50) allows all six co-variances to be determined for given values of
k,
,
and
. Having implemented Equations (
32), (
45), (
46) and (
50), the values of the mean velocities
can be derived from the averaged versions of the equations of conservation of momentum. To obtain a closed set of equations, two equations determining
k and
have to be included. In this respect, it is noted that relation (
48) is implied by (
50) and does not represent an extra relation for
k. The extra equations are provided by the two equations of the
model that describes these variables [
2,
3]. The closed system of coupled equations, thus, obtained is a straightforward extension of the equations of the widely used
model. The model may be termed the anisotropic
model, and this enables the mean values of the statistical parameters of an anisotropic inhomogeneous turbulent flow to be calculated.
7. Statistical Descriptions of Scalar Flux
Examples of scalar flux are the dispersion of substances immersed in fluids and of temperature distributions in incompressible and almost incompressible fluids. Turbulence is known to have a significant effect on these phenomena. Similar to the analysis of the previous section, consider an area that is small to the area of inhomogeneity but large compared to the area where particle velocities are correlated. The Lagrangian scalar flux is described by
, where
are the velocities of marked fluid particles that all pass at
through a surface at
, and
is the value of the scalar quantity at the position of each moving particle. When considering the velocities of particles at a short distance, the time from the surface of passing (
37) can be employed. For the value of the scalar quantity at the position of the particle, we have
The first and second term on the right-hand side represent dispersion of the scalar quantity due to fluid particle displacement whereby the scalar does not vary in magnitude while moving with the fluid particle. The third term is autonomous random changes of the value of the scalar quantity while moving with the fluid particle. For the first term, take the Eulerian-based mean value at . Similar to the analysis of the previous section, particles pass through different positions at the surface . However, all these positions are at a limited distance from each other in accordance with the coarse graining of the diffusion limit.
On this scale, spatial variations in value of the first term of the expansion can be disregarded. They can be taken to be equal to the Eulerian mean value at the single point . Furthermore, the first term is allowed to vary deterministically with time , where is the time in the Eulerian fixed frame of reference: . Lagrangian averaging can take place by adding the simulation results of the Langevin equations at a fixed value of and subsequently repeating for every other value of . The variation with is considered to be slow compared to the rapid variation of the random fluctuations of .
Multiplying the right-hand sides of Equations (
37) and (
51), replacing
t by
, applying Lagrangian averaging and letting
after applying the diffusion limit, one obtains (similar to the procedure of the previous section)
The third and fourth terms on the right-hand side are contributions due to autonomous fluctuation of the scalar when moving with the fluid particles. To determine the values of these terms, fluctuation equations of
need to be known. No attempts will be made to derive such equations. We assume that
is a conserved quantity whose value does not change while moving with the fluid particle:
. Noting that
and implementing (
41) then yields
where
equals the Eulerian-based value at
. As the relation holds for every position
x, we have
where
is a conserved quantity that satisfies the Eulerian-based conservation equation
Applying equation ensemble averaging to the above, substituting Equation (
55) and replacing
by
t, yields
where I employed the averaged version of continuity:
. The above result equals the equation for fluid particle distribution given by Equation (
33). This is consistent with the feature that the distribution of the particle must be equal to the distribution of a conserved quantity whose value does not change with value of
following the path of a fluid particle.
8. Decaying Grid Turbulence
Decaying grid turbulence has been studied many times during the previous century, and many results are available. Turbulence is generated by a uniform mean flow that passes through a grid of squarely spaced bars. The grid is perpendicular to the incoming mean flow. At some distance behind the grid, a homogeneous field of isotropic turbulence develops and decays in the downstream direction with the mean flow. For grid turbulence, exact results for the Langevin and diffusion equations are known. In the present section, I recapitulate these results and compare them with the present results based on the two-term expansion.
For convenience in presentation, turbulence is described in a frame that moves with the uniform mean velocity. I thus describe the equivalent situation where the grid moves with constant speed from right to left through a fluid that is initially at rest. When the grid has passed, a uniform field of isotropic zero-mean Gaussian fluctuations exists, which decays in time. The strength is the same in all three coordinate directions. Therefore, analysis is restricted to fluctuations in one direction only. Corresponding variables are indicated by a subscript of 1. Regarding the independence of fluctuations in three directions, a problem of nonuniqueness, as discussed in
Section 5, does not exist. The appropriate Langevin equation in one-dimensional form can be written as
where
is the Eulerian mean square of the fluctuations
Expressions for
and
can be derived from the Von Karman-Howarth equation for conservation of the mean kinetic energy of fluctuations. For large Reynolds numbers, these expressions are: [
19]
where
is the reference time, i.e., a moment in time where the grid has passed the observer at a fixed position. The value of
depends on the dimensioning of the grid and can be established by measurements at time
. Implementing (
60) into (
58), we have
From this result, one can derive (analogous to the derivation in
Section 5) the diffusion equation
where the diffusion coefficient is given by
Note that the diffusion coefficient does not decrease in the stream-wise direction. A decay in the strength of fluctuations is compensated for by an increase in the correlation time.
Results (
61)–(
63) were obtained without using the
expansion. The Langevin equation according to a two term
expansion is given by Equations (
2) and (
20). Introducing the features of grid turbulence results in an equation that is the same as Equation (
61). The diffusion coefficient according to the two term
expansion is given by Equation (
32). This reduces, in the case of grid turbulence, to
. Expanding the exact result given by Equation (
63) in powers of
yields
.
The first two terms in the diffusion coefficient of the exact result thus agree with the two-term expansion. The third term amounts to a relative contribution of 0.9% when . In conclusion, the two-term expansion complies with the corresponding expansion of the exact result, and the error of truncating the third term is small. The latter conclusion is, however, of limited value as the grid turbulence is isotropic and only slightly inhomogeneous in the stream-wise direction. In practice, turbulence is mostly anisotropic and appreciably inhomogeneous. The next section analyses such a case.
10. Conclusions
The presented statistical descriptions fit within the asymptotic structure of turbulence at a large Reynolds number with Kolmogorov theory. The descriptions apply to large scales, which determine the main flow outside small viscous boundary layers at adjoining walls of the configuration considered. The given representations of the velocity and position of marked fluid particles are Lagrangian-based and concern Langevin and diffusion equations. In these equations, the universal Kolmogorov constant appears with a value of about 7. This is used as an autonomous parameter in developing solutions by the first two terms of perturbation expansions in powers of . The leading solution complies with the conditions of Hamiltonian dynamics, Gaussian behavior and Onsager symmetry as . The second term of the solution satisfies mixing with the Eulerian-based statistical distribution of the flow field.
The Lagrangian-based descriptions were connected to Eulerian statistics through asymptotic matching. When considering a small but sufficiently large area around a fixed point in space where the diffusion limit applies, shrinking this area to a point accomplishes matching the Eulerian description at the corresponding point. The matching involves the limit process , where is required for obtaining the diffusion limit, and to ensure that the considered area is much smaller than the area of inhomogeneous behavior of the main flow.
The two-term descriptions meet the requirements that follow from the laws of physics and the methods of stochastic analysis. The presented solutions reveal the functional relationships between the statistical averages of various fluctuating quantities, such as turbulent diffusivity. They do not rely on semi-empirical hypotheses and fitted constants. Limiting factors include inaccuracies due to truncation of the higher order terms. For slowly decaying grid turbulence, these are small. However, in the case of strong inhomogenity, the matching of Lagrangian and Eulerian results appears to require small values of , . Yet, comparison with the DNS of turbulent channel flow at high Reynolds number reveals deviations of limited magnitude despite large inhomogeneity and anisotropy.
An underlying reason is likely the inclusion of next to leading terms and exponential decay of velocity correlations by
, where
is the eddy turnover time or characteristic time of large-scale turbulence: (
21).
The results for the main Eulerian statistical parameters in the case of channel flow are shown in
Figure 1,
Figure 2 and
Figure 3. They reveal fairly good agreement between the predictions of the
model when compared with those of DNS. This conclusion applies to turbulent channel flow, which is a case of turbulence that is significantly anisotropic and inhomogeneous. As the
model has a general basis, this entails the prospect of yielding reliable results for other cases of anisotropic inhomogeneous turbulent flow.