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Robust and efficient identification of optimal mixing perturbations using proxy multiscale measures.

Conor Heffernan1, Colm-Cille P Caulfield1,2.   

Abstract

Understanding and optimizing passive scalar mixing in a diffusive fluid flow at finite Péclet number [Formula: see text] (where [Formula: see text] and [Formula: see text] are characteristic velocity and length scales, and [Formula: see text] is the molecular diffusivisity of the scalar) is a fundamental problem of interest in many environmental and industrial flows. Particularly when [Formula: see text], identifying initial perturbations of given energy that optimally and thoroughly mix fluids of initially different properties can be computationally challenging. To address this challenge, we consider the identification of initial perturbations in an idealized two-dimensional flow on a torus that extremize various measures over finite time horizons. We identify such 'optimal' initial perturbations using the 'direct-adjoint looping' method, thus requiring the evolving flow to satisfy the governing equations and boundary conditions at all points in space and time. We demonstrate that minimizing multiscale measures commonly known as 'mix-norms' over short time horizons is a computationally efficient and robust way to identify initial perturbations that thoroughly mix layered scalar distributions over relatively long time horizons, provided the magnitude of the mix-norm's index is not too large. Minimization of such mix-norms triggers the development of coherent vortical flow structures which effectively mix, with the particular properties of these flow structures depending on [Formula: see text] and also the time horizon of interest. This article is part of the theme issue 'Mathematical problems in physical fluid dynamics (part 1)'.

Entities:  

Keywords:  direct-adjoint-looping; ergodic theory; mixing; optimization

Mesh:

Year:  2022        PMID: 35465721      PMCID: PMC9035879          DOI: 10.1098/rsta.2021.0026

Source DB:  PubMed          Journal:  Philos Trans A Math Phys Eng Sci        ISSN: 1364-503X            Impact factor:   4.019


Introduction

Understanding how fluids mix together is of central importance in the modelling of the climate, the environment and myriad industrial processes. Mixing of a passive scalar is composed of an initial stirring action and then diffusion [1] to homogenize the concentration field. At finite Péclet number, (loosely the ratio of advective to diffusive transport, more precisely defined below), diffusion is stronger in areas of high shear caused by the stirring in a mechanism known as ‘Taylor dispersion’ [2,3]. However, there is as yet no unified mathematical theory and thus quantifying and describing the phenomenon of mixing is still of research interest. A first step in describing mixing is how to quantify the ‘mixedness’ of a passive scalar. Classically, the norm has been used as when applied to a mean-zero field the variance is essentially a measure of homogenization [4]. Mathematically, this choice of norm fails in the absence of diffusion and so a different measure must be sought [5]. This issue motivated the development of the so-called mix-norm, as a way to quantify mixing using a Sobolev norm of index [6]. This work was extended to show that any negative index Sobolev norm (i.e. for a variety of values of the index ) is consistent with the rigorous ergodic theory of mixing [7]. The mix-norm is a Sobolev norm of negative index, and here we define it for a passive zero-mean scalar on a two-dimensional torus as where is the index, is the wave vector and are the Fourier coefficients of . Definition (1.1) will be the mix-norm we refer to for the remainder of this paper with the variance (for zero-mean scalars) corresponding to the special case [5]. Quantifying mixing is also clearly necessary in circumstances where it is of interest either to enhance or suppress mixing. It has been conjectured that an appropriate way to enhance mixing is through maximization of the time-averaged energy growth using a cost functional approach [8,9]. While this does indeed lead to a well-mixed result, the problem is actually not designed to maximize mixing directly and it is natural to ask whether a more direct approach can lead to a more ‘efficient’ well-mixed solution with less energy injection. In order to examine this problem, an optimization method based on the fully nonlinear Navier–Stokes equations is desirable. Such a method involving ‘adjoint’ Lagrange multipliers (that impose the governing equations) has been developed to consider a variety of optimization problems arising in fluid dynamics [10,11], and is often referred to as the ‘direct-adjoint-looping’ (DAL) method. In particular, the DAL method [12] has been used to study mixing problems in a variety of flows [13-15]. These studies have been based on a minimization of the mix-norm (typically with ) and compared with the results for variance minimization as well as energy maximization. It was observed that inferior mixing of the passive scalar occurs in the case of energy growth maximization for perturbations of the same initial energy. It was also shown that such mix-norm minimization appears to act well as a proxy for the variance-optimized strategy at finite target time, which is the natural measure for the case. Specifically, perturbations that minimized the mix-norm (with index ) over relatively short target times led to time-variation of the variance (and hence the mixing properties of the flow) typically very similar to the perturbations that minimized the variance over relatively long target times. This apparent property has several attractions, in particular in that the required computational demands using the DAL method are significantly smaller and more robust for the short-target-time mix-norm calculations compared with long-target time variance calculations, especially for flows at higher . In this paper, we are interested in answering three questions that have naturally arisen from these previous studies. Firstly, is there a range of indices We find that there are indeed indices that work well in this respect while others are not suitable, as they lead to sub-optimal flow behaviour, which we refer to as ‘demixing’, and is physically associated with long-lived vortical coherence in the time-evolving flow. Secondly, how does the choice of index qualitatively change the mixing dynamics of the flow? It is observed that changing the index can deprecate or enhance small-scale structures which can enhance or deprecate the mixing, depending on the particular choice of index . Thirdly, what comparisons, if any, can be made between the variation of the index at relatively low and high As one might expect, the higher Péclet number flows tend to favour small-scale structures, due to the lesser initial influence of diffusion. This actually makes the phenomenon of demixing more clearly apparent at higher , and the observation of deprecating certain scales leading to inferior mixing holds even more clearly than in the lower Péclet number case. The rest of this paper is structured as follows. In §2, we state the problem and methodology following the work of [16]. In §3, we present the results of our work. Specifically, in §3a, we study the use of mix-norm with various indices as proxies for variance minimization. In particular, we show that a flow field that minimizes a mix-norm for relatively small target time can lead to similar and in some cases eventually superior mixing to those fields that minimize variance at larger times. In §3b, we show the results of how changing the index and the target time corresponds to a qualitative change in the mixing paradigm at a relatively low choice of . We discuss analogous results for flows at higher in §3c, comparing the two cases. Finally, in §4, we present brief conclusions and suggest further avenues for future study.

Methods

There are three control parameters that determine the optimal initial flow field in this paper. These are the mix-norm index , the target time of the optimization problem and the Péclet number (defined below). We keep the Schmidt number (where is the kinematic viscosity and is the scalar diffusivity) fixed, so that the flow Reynolds number , and also fix the initial perturbation energy density. Solutions of the optimization algorithm corresponding to these parameters will be denoted by . We choose to study problems with and 500, for the index of the mix-norm and . We also consider for comparison the behaviour of solutions for the variance with target time for the two choices of , i.e. and . We use the nonlinear DAL method [12] to compute the initial velocity field that will minimize the value of the mix-norm (for various indices ) and variance (i.e. for ) at a given target time . The flow takes place in a two-dimensional torus of length with and denoting the horizontal and vertical directions, respectively. The velocity field and pressure are governed by the incompressible Navier–Stokes equations and the passive scalar field is governed by a conventional advection–diffusion equation. Therefore, the non-dimensionalized equations governing the evolution of these variables are where and denote the Péclet number and Reynolds number, respectively, and are defined by where are the characteristic velocity and length scales and are the kinematic viscosity and scalar diffusivity, respectively. As already noted, since we require , . As the scalar field is passive, we may solve equations (2.1)–(2.3) separately. As an initial scalar distribution, we choose This corresponds to a smooth zero-mean scalar distribution with a vertical stripe, centred at of width of positive , bordered by stripes of negative . We also require an initial condition for the velocity field in order to solve the system. For the very first loop of the DAL method, we set to be random noise. After each iteration of the loop, we update to give us our initial condition to evolve the system (2.1)–(2.3). In order to identify the initial perturbation that optimizes the mixing of the initially striped fluid, we seek to minimize an objective functional subject to a constraint on the kinetic energy of the initial perturbation where is the perturbation energy density and denotes the ‘volume’ (i.e. the area) of the flow domain . This perturbation energy density is chosen to be sufficiently large to allow for the identification of non-trivial initial flow structures, and yet sufficiently small so that there is still the possibility to distinguish the mixing efficacy of different initial perturbation structure. We define the objective functional as i.e. (half) the value of the Sobolev norm of (negative) index (which we refer to as the mix-norm of index ) at the target time . We may then define the constrained optimization problem of interest as where solve the system (2.1)–(2.3). The initial condition does not appear explicitly in the objective functional, but nevertheless it affects through the evolution of the flow variables which are constrained by the system (2.1)–(2.3). These constraints must be imposed of course. This is done by the use of Lagrange multipliers, the spatially and temporally evolving so-called adjoint variables denoted by . This is explained in detail in (for example) [16] and we follow their approach here. We may define a Lagrangian as where Variation with respect to adjoint variables yields equations (2.1)–(2.3). Similarly, variation with respect to the direct variables results in the so-called adjoint Navier–Stokes equations At we also produce the following terminal and initial conditions: where are the Fourier coefficients of and the denotes real part. Due to the negative diffusion terms and , equations (2.14)–(2.16) must be integrated backwards in time to avoid numerical instability. These equations are then integrated backwards from to , thus forming a ‘direct-adjoint loop’. Using a numerical technique from [17] and with and known as the direct and adjoint velocities at after loops of this DAL method, the updated guess can be calculated by where denotes the scaled (by the energy constraint) adjoint veclocity projected onto the hypersurface tangential to the energy hypersphere at , as described in detail in [18]. The angle of rotation is calculated by using a backtracking line search [19]. This looping procedure is repeated until convergence has been reached as measured by the normalized residual , defined by where the symbol denotes projection onto the hyperplane tangential to the energy hypersurface. Since the energy is fixed, a small residual () implies the gradient can only change by varying its magnitude which is not permissible due to the (explicitly imposed) energy constraint. The direct and adjoint equations are solved with a fourth-order mixed Crank–Nicholson Runge–Kutta scheme with incompressibility enforced through a fractional step method [13,20]. Simulations for and were performed with and grid points in both directions, respectively. For the plots, the mix-norm and variance are scaled by the evolution of the purely diffusive passive scalar defined as and where is the solution of equation (2.3) but with the advective term dropped, and the dependence of the (scaled) mix-norm on the index is labelled by the subscript.

Results

We now analyse the data obtained for various control parameter combinations. Mixing is measured by (scaled) variance decay as defined in equation (2.22), corresponding to the homogenization of the passive scalar.

Mix-norm as a proxy

The mix-norm was introduced to resolve the issue with variance as a mixing measure in non-diffusive systems [5]. In previous studies, the fields calculated via mix-norm minimization over short target times approach the long-time behaviour of variance-minimizing flows with significantly larger target times. This is an attractive feature of using mix-norms as objective functionals as they can produce very good (and robust) approximations to exact variance-based strategies over longer target times but at significantly cheaper computational cost. There are (apparently) two reasons for this cheaper computational cost. First, integrating around loops with shorter target times clearly is cheaper than integrating around longer time loops. Second, and somewhat more subtly, it appears that mix-norm iterations converge more rapidly towards the required optimal solution, apparently due to more efficient identification of appropriate flow structures which mix well. This also contributes to the ‘robustness’ of the method, in that the initial perturbations identified for shorter target time problems are still set ‘on the right path’ through time and continue to mix (through rapid variance reduction) for times significantly longer than the imposed target time. These characteristics are presumably related to the fundamental attractive property of multiscale measures such as mix-norms, in that large scales in the scalar distribution will correspond to large values of the mix-norm. Therefore, searching for flows that minimize mix-norms will tend to deprecate large scales within the flow, thus encouraging a cascade to smaller scales more conducive to homogenization and mixing. In this section, we investigate the mix-norm as a mixing proxy (in the sense described above) for various values of the index . Figures 1 and 2 show this comparison at and respectively. As can be seen from early times, the mix-norm optimal perturbations (for various ) follow a very similar path to the variance-optimized perturbations with , consistent with previous studies [13-15]. Interestingly, for , and a range of , the mix-norm-optimized perturbations significantly outperform the variance-optimized perturbations for times appreciably longer than its target time of , demonstrating the (valuable) robustness of using such mix-norms in the DAL method.
Figure 1

Evolution with time of scaled variance , as defined in (2.22) for flows initially seeded with perturbations that minimize mix-norms (for a variety of the values of index ) over different target times for flows with . For comparison, the dotted black line shows the evolution for the perturbation that minimizes the variance for in a flow with . (Online version in colour.)

Figure 2

Evolution with time of scaled variance , as defined in (2.22) for flows initially seeded with perturbations that minimize mix-norms (for a variety of the values of index ) over different target times for flows with . For comparison, the dotted black line shows the evolution for the perturbation that minimizes the variance for in a flow with . (Online version in colour.)

Evolution with time of scaled variance , as defined in (2.22) for flows initially seeded with perturbations that minimize mix-norms (for a variety of the values of index ) over different target times for flows with . For comparison, the dotted black line shows the evolution for the perturbation that minimizes the variance for in a flow with . (Online version in colour.) Evolution with time of scaled variance , as defined in (2.22) for flows initially seeded with perturbations that minimize mix-norms (for a variety of the values of index ) over different target times for flows with . For comparison, the dotted black line shows the evolution for the perturbation that minimizes the variance for in a flow with . (Online version in colour.) In the case of , combining a high index with sufficiently long target time gives the best proxy. This is apparent for with , for example, as the initial variance decay in these cases is very similar to the variance-optimizing perturbation but continues to decay significantly beyond , implying a higher quality mixture. Clearly, then, this near identical initial behaviour followed by further mixing gives further evidence that the mix-norm is an excellent proxy for the variance measure and motivates its use in optimization problems. However, one must be cautious with the index and target time choice, as certain combinations perform better than others. The mix-norm also appears to be a good proxy at larger . As shown in figure 2, for flows with , we can see that the optimal perturbation has the steepest decay for early times, unlike in the case where all fields had a similar decay. In fact, we observe that the variance-optimal field continues to decay up until at least the time . This is in contrast to what was observed at where the plot approaches a constant value, indicating purely diffusive mixing, with no advection-enhanced homogenization. This is due to the persistence of small-scale structures in flows at higher which continue mixing after the chosen target time. For later times , there are also choices of that yield better mixing properties than the variance-based optimal perturbations. Mix-norms with any of the choices of index with a large enough target time appear to outperform the mixing properties of the flow associated with the variance-optimal perturbation . Interestingly, in some cases, particularly with smaller target times, such as , these superior mixing properties are only temporary, eventually being outperformed by the mixing properties associated with the variance-optimal perturbation . Furthermore, in the cases of larger indices for , i.e. the optimal perturbations and , there are clear bumps in the scaled variance decay for , which will be discussed in the next sections. Using any of the indices with the intermediate target time proves to be a good proxy for the variance-based strategy and, as in the lower case, can actually lead to superior mixing properties at later times.

Mix-norm evolution for

We now analyse in more detail how the time evolution of the mix-norm differs qualitatively with index for flows with the lower Péclet number , as shown in figure 3. We observe that increasing target time leads to smaller values of the mix-norm across all values of . However, larger values of also appear to produce a qualitative change in the dynamics. For example, despite approaching pure diffusion as , the time evolution of for the optimal initial perturbation exhibits demixing, in the specific sense that does not monotonically decay at intermediate times as seen in figure 3. This is an undesirable quality as a solution is only ergodic mixing if the mix-norm decays with time, and appears to be associated with the (relatively) poor decrease in the variance for this perturbation as can be seen in the fourth panel of figure 1.
Figure 3

Evolution with time of scaled mix-norm , as defined in (2.21) for flows initially seeded with perturbations that minimize mix-norms (for a variety of the values of index ) over different target times for flows with . (Online version in colour.)

Evolution with time of scaled mix-norm , as defined in (2.21) for flows initially seeded with perturbations that minimize mix-norms (for a variety of the values of index ) over different target times for flows with . (Online version in colour.) Studying the plots of time variation of scaled mix-norm and variance proves that the choice of control parameters can produce qualitatively different results for mixing fluids. It is therefore natural to ask exactly how these choices, particularly for the index , determine the structure of the initial condition and thus at what scales mixing occurs. A deeper understanding of this question can distinguish between desirable and undesirable structures to homogenize a particular passive scalar distribution. A natural way to consider the flow dynamics is to calculate the vorticity, , defined for such a two-dimensional flow as The vorticity for the various initial perturbations calculated for flows with are shown in figure 4. These plots show two different types of initial structure. The first type, associated with optimizations for low index and target time , has a large number of small-scale alternating sign vortices arranged along the interfaces of the passive scalar. The second type, associated with optimizations for high index and , has a significantly smaller number of larger-scale alternating sign vortices along the interface. This trend also appears to hold when varying just one of and and keeping the other parameter fixed. Comparing figure 4 with the plots in figure 1, it is clear that more vortices yield the optimal result over shorter times, but actually lead to less thorough mixing at long times. Increasing the initial size and reducing the number of the vortices leads to lower variance at a later time. However, there is a ‘sweet spot’, as if there are too few vortices then the demixing phenomenon occurs and the homogenization process actually slows and leads to weaker mixing overall.
Figure 4

Vorticity distribution of the optimal perturbations identified for mix-norm minimization for flows with with various combinations of index (rows) and target time (columns). (Online version in colour.)

Vorticity distribution of the optimal perturbations identified for mix-norm minimization for flows with with various combinations of index (rows) and target time (columns). (Online version in colour.) To show how these initial distributions actually affect the time-dependent mixing dynamics, we plot in figure 5 the evolution of the passive scalar at various snapshots during the flow (with animations available as electronic supplementary material). We consider the evolution of the flows associated with the initial conditions shown along the diagonal of figure 4. For the flow associated with the optimal perturbation , shown in the first column of figure 5, we see the large number of small-scale vortices rapidly expend the available kinetic energy to distort the two interfaces leading to the dominance of diffusion for the rest of the evolution. Significantly, the vortices are too small to disrupt completely the initial vertically striped structure, and the vertical striping survives to later times. This dynamical evolution is largely similar to the evolution of the flow associated with , as shown in the second column. However, for this flow, the vortices in this case are fewer and larger which leads to more disruption of the interfaces between the regions of high and low concentration and thus a somewhat better mixing outcome at later times as shown in figure 1. In both of these cases, the kinetic energy is still used up too quickly to disrupt completely the central stripe and so diffusion becomes the dominant factor in the mixing process early in the evolution.
Figure 5

Snapshots at various times (rows) of the evolution of the passive scalar fields mixed by optimal initial perturbations for various choices of (columns). (Online version in colour.)

Snapshots at various times (rows) of the evolution of the passive scalar fields mixed by optimal initial perturbations for various choices of (columns). (Online version in colour.) The behaviour of the other two flows is qualitatively different. The vortices associated with the initial optimal perturbation clearly act on a larger scale, and in particular the dynamics generated manage to fold and stretch the interfaces to break the central stripe with diffusion dominating at later times leading to a close to well-mixed scalar. The flow induced by the initial perturbation (shown in the right-most column) is similar, but in this case the lower number of initial vortices does not disrupt the central stripe as quickly. The passive scalar is homogenized quite well but the final panel shows that the larger vortices have actually led to sustained patchiness (and hence poorer mixing) for the flow associated with the largest index . This is a manifestation of the demixing phenomenon mentioned above, in particular in that the originally negative values of the scalar, initially associated with the edges of the flow domain (and coloured blue) have been advected in the central region, without being thoroughly mixed with the positive scalar (coloured yellow), which conversely has been advected from the centre to the edges of the flow domain. We also note that there are some qualitative differences in the symmetry of the optimal initial perturbations identified by the DAL method. A particular clear example is shown in the column of figure 4, where the optimal perturbation is antisymmetric about the vertical midline, while the optimal perturbation is symmetric. It is worth asking whether or not these symmetry properties have an important role in the mixing of the passive scalar. To investigate this, we plot in figure 6 the evolution of the passive scalar (left columns) and the vorticity (right columns) for the flows associated with the (antisymmetric) and (symmetric) indices for (with animations available as electronic supplementary material). As can be seen from these plots, the symmetrically aligned vortices mix the passive scalar essentially antisymmetrically, while the antisymmetric vortices mix the passive scalar essentially symmetrically. Furthermore, the symmetrically-aligned vortices break the central stripe somewhat more easily as it results in more stretching and folding and hence both filamentation and regions of high scalar gradient, naturally conducive to enhancement of mixing at later times. Conversely, the initially antisymmetrically aligned vortices lead to counter-rotating vortices approaching one another along the same horizontal level, making the folding more difficult, and so the mixing less thorough.
Figure 6

Snapshots of the evolution of the passive scalar (left) and vorticity (right) for the flows associated with the optimal perturbations on the first two columns and on the second two columns. Snapshot times are . (Online version in colour.)

Snapshots of the evolution of the passive scalar (left) and vorticity (right) for the flows associated with the optimal perturbations on the first two columns and on the second two columns. Snapshot times are . (Online version in colour.)

High Péclet number

We now compare and contrast the behaviour of the flows with with the flows associated with . The evolution of the various mix-norms for flows with are shown in figure 7. (The equivalent time evolution of the variance for these flows is shown in figure 2.) For the fields, we observe that initially all follow the same decay for early times . After this initial decay, there is some separation, with decaying the quickest. The solutions for do not follow this behaviour, with and eventually decaying the quickest. Interestingly, the various optimal perturbations with target time behave in a very similar fashion, all leading to very small values at relatively early times. Finally, the qualitative picture is different again for the various perturbations for the target time . As seen in the low Péclet number case, demixing (in that is non-monotonic) occurs for the larger indices and 5, clearly associated with the ‘bump’ observed in the fourth panel of figure 2.
Figure 7

Evolution with time of scaled mix-norm , as defined in (2.21) for flows initially seeded with perturbations that minimize mix-norms (for a variety of the values of index ) over different target times for flows with . (Online version in colour.)

Evolution with time of scaled mix-norm , as defined in (2.21) for flows initially seeded with perturbations that minimize mix-norms (for a variety of the values of index ) over different target times for flows with . (Online version in colour.) As in the case of , variation of the control parameters produces qualitatively different mixing for flows with , with again a tendency for optimal perturbations with short target times being associated with smaller scales and more rapid dissipation of perturbation kinetic energy. To investigate further the differences and similarities between flows with and , we plot in figure 8 the initial vorticity of the various optimal perturbations for . Similarly to the optimal initial perturbations for , increasing target time decreases the number of vortices and thus increases the length scale. With the exception of the case, changing index does not appear to have as large an effect on the initial structure, in contrast to the optimal perturbations for flows with (shown in figure 4).
Figure 8

Vorticity distribution of the optimal perturbations identified for mix-norm minimization for flows with with various combinations of index (rows) and target time (columns). (Online version in colour.)

Vorticity distribution of the optimal perturbations identified for mix-norm minimization for flows with with various combinations of index (rows) and target time (columns). (Online version in colour.) An apparent difference between the perturbations for lower and higher is the shape of the vortices. For initial perturbations in flows with , the vortices are (close to) circular counter rotating vortices aligned along the interface between regions of low and high passive scalar. However, this is not the case for the perturbations in flows with , where the vortices take more of a diamond quadrilateral shape, with finer-scale structure being apparent, with two different types of structure for the perturbations associated with shorter and longer target times. For the perturbations associated with shorter target times, the vortices take on a quadrilateral shape with sharp corners, while for longer target times, two of the quadrilateral ‘corners’ become somewhat elongated. To investigate the difference between these two structures, we plot in figure 9 the evolution of the vorticity and passive scalar for optimal perturbations (with the ‘pure’ quadrilateral initial vortices) and (with the ‘cornered’ initial vortices). (Once again, animations are available as electronic supplementary material.) For both these higher Péclet number flows, the vortices stretch and fold the interfaces of the passive scalar effectively by . The vortices then deform to increase further the stretching and folding of the interface, acting with diffusion to mix the fluid. The difference between the ‘pure’ and ‘cornered’ quadrilateral initial vortices becomes more apparent in the range , with a clearer ‘V’ developing in the flow associated with the initial perturbations, which remain more organized than those associated with the initial perturbations, and thus more able to mix the initial vertical striping of scalar. However, for both flows, it is apparent that the scalar field is imperfectly mixed, with the initial vortices still remaining too small to disrupt and homogenize entirely the initial vertical striping of the scalar field.
Figure 9

Snapshots of the evolution of the passive scalar (left) and vorticity (right) for the fields on the first two columns and on the second two columns. Snapshot times are . (Online version in colour.)

Snapshots of the evolution of the passive scalar (left) and vorticity (right) for the fields on the first two columns and on the second two columns. Snapshot times are . (Online version in colour.) In flows associated with the longest target time considered, i.e. with , the dynamical significance of the ‘cornered’ initial vortices becomes apparent. In figure 10, time evolution of the flows associated with (left-most columns) and (right-most columns) are shown. As can be seen from figure 7, the exhibits ‘demixing’ behaviour, which can now be understood in terms of the observed physical flow evolution. For both the flows shown in figure 10, the cornered vortices become sufficiently horizontally elongated to perturb the entirety of the scalar field. For the flow evolving from the optimal initial perturbation , the vortices are both sufficiently small and sufficiently regular to lead to a smooth, organized, perturbation and diffusion of the scalar field, leading to homogenization at relatively early time. On the other hand, the vortices associated with the are larger, and so actually remain more coherent at . As they remain (more) coherent, they advect the scalar field too strongly, leading to an inversion in the vertical striping, leading to a negative scalar field stripe (shown in blue) in the middle of the flow domain at intermediate time, an even stronger demixing effect than seen before in figure 5 for the flows with high index . This organized inversion of the scalar field distribution manifests itself in the non-monotonic variation in the mix-norm as shown in figure 7, and demonstrates that the ‘best’ choice of index for such optimization problems is in general likely to be -dependent, particularly if the mixing problem of interest has a finite time horizon of interest.
Figure 10

Snapshots of the evolution of the passive scalar (left) and vorticity (right) for the optimal perturbations (shown in the two left-most columns) and (shown in the two right-most columns). Snapshot times are . (Online version in colour.)

Snapshots of the evolution of the passive scalar (left) and vorticity (right) for the optimal perturbations (shown in the two left-most columns) and (shown in the two right-most columns). Snapshot times are . (Online version in colour.)

Conclusion

We have used the DAL method to identify optimal initial perturbations for passive scalar mixing in a two-dimensional toroidal geometry for different choices of the key parameters: the index of the mix-norm, target time and Péclet number of the flow . We have demonstrated that mix-norms (with various indices) can indeed be used as a proxy for variance-based strategies, which both converge relatively rapidly and robustly identify flow evolutions that minimize variance over times significantly longer than the chosen target time . We have also investigated the qualitative change in mixing dynamics at both low and high Péclet number, demonstrating substantial qualitative variability both in the optimal initial perturbations and the subsequent flow evolution. Specifically, for flows with , a highly symmetrical arrangement of initial vortices leads to optimal mixing. However, for flows with , there is evidence of a trade-off, in that larger, highly organized vortices can actually lead to ‘demixing’, with too vigorous advection not allowing diffusive processes to homogenize the scalar distribution, at least at intermediate times. Since higher values of the mix-norm index strongly deprecate small scales, this behaviour strongly suggests that the mix-norm is most useful in such mixing optimization problems when the index used is not too large, i.e. choosing seems the most practical choice. It would clearly be of interest if that could be established rigorously. We therefore conjecture that the mix-norm may be used to identify organized initial perturbations that lead to a flow evolution that is optimal for mixing (for a given initial energy cost), and highlighted, particularly for the flows with , the importance of initial vortical perturbations with fine-scale structure, which we referred to as ‘corners’, apparent in figure 8 for higher target times. However, initial energy density and Schmidt number were kept constant at and respectively. We suggest that further studies should vary these parameters as well to get a more comprehensive picture of the structure of perturbations that actually lead to optimal mixing. We also suggest varying the index in different geometries and applying an external force to compare with existing studies. We conclude with the observation that despite having different indices, different mix-norms lead to very similar temporal evolution of variance (and hence mixing properties). This appears to be evidence in support of a hypothesis from [21] that there exists a range of indices that decay at very similar rates, although of course further detailed investigation is necessary.
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