1. Introduction
Under quite general conditions, the fluctuation-dissipation theorem relates the response of a system to an external perturbation with its equilibrium dynamics [
1]. However, the theorem’s predictions do not apply either in the nonlinear response regime, when higher order corrections to the response functions grow appreciably, or out of equilibrium, when the detailed balance is broken and currents flow across the system [
2]. The theorem can then be generalized in various ways [
3].
An archetypal example of nonlinear response is represented by the dynamics of a tracer particle moving in a complex medium under the action of an external force
. Two common response quantifiers are the tracer’s mobility,
, and its diffusion constant,
D, in the force direction. Upon increasing
F, both observables are strongly affected by the interaction between the tracer and its surrounding medium. This approach has inspired active microrheology techniques [
4], whereby the local and bulk mechanical properties of a complex fluid, such as emulsions, suspensions, polymers, and micellar solutions, are extracted from the motion of probe particles embedded within it.
Among the most surprising effects of the nonlinear response in nonequilibrium systems are negative differential mobility [
5] and absolute negative mobility [
6]. The former is due to the changes of the medium caused by the driven tracer, whereas the latter results from a more subtle combination of time memory, spatial asymmetry, and driving fields [
7]. Negative differential mobility is a relatively more frequent phenomenon [
8]. It has been detected in geometries characterized by the emergence of entropic channels, with a driven particle squeezing its way through a periodic array of rigid pores. These are effective barriers of an entropic nature [
9], which oppose the action of the external drive with height dependent on the drive itself [
10]. Another instance of negative differential mobility has been reported for driven tracers in crowded environments [
11,
12], whereas the magnitude and extension of the effect is controlled by the density and diffusion time of the obstacles.
A somehow related problem is particle transport in arrays of convection rolls. Here, geometric constraints [
13,
14,
15] are replaced by advection cells. This is a recurrent problem in today’s nanotechnology [
16,
17] with promising applications in chemical engineering [
18]. Under quite general conditions, the combined action of advection and thermal fluctuations in the suspension fluid is known to accelerate particle diffusion, an effect known as advection enhanced diffusion (AED) [
19,
20]. However, the effects of an external drive on the mobility and diffusion constant of an advected passive tracer have been scarcely investigated in the current literature [
21].
Let us consider a massless Brownian particle suspended in a square lattice of counter-rotating convection rolls with periodic stream function (
Figure 1),
Here,
L is the size of the flow unit cell,
the maximum advection speed at the roll separatrices,
the maximum vorticity at their centers, and
an intrinsic flow diffusion constant. The mobility of an overdamped Brownian particle in an incompressible flow is
, regardless of the applied force
[
21]. Conversely, our numerical simulations show that the diffusion constant depends on both the modulus and the orientation of
. The nonlinear nature of the system response is apparent since
is isotropic in the plane
x-
y, whereas
D is strongly anisotropic, with maxima in the diagonal direction. Moreover,
D exhibits huge peaks for
F of the order of the advection drag,
, which we interpret as excess diffusion peaks due to the interplay of drive and advection along the roll separatrices of
.
This paper is organized as follows. In
Section 2, we present our model and briefly recap recent results on AED in unbiased laminar flows [
22]. In
Section 3, we summarize some new numerical results obtained in the presence of an external planar force of tunable intensity and orientation. We focus on the profile of the
curves, namely on their horizontal asymptotes and remarkable excess diffusion peaks. Three drive orientations deserve special attention, namely diagonal with respect to the main axes of the square roll array and parallel to them. Such special cases are discussed in
Section 4 and
Section 5, respectively. In
Section 6, we anticipate future venues for this line of research.
2. Model
A point-like Brownian particle diffusing in the flow with stream function
, Equation (
1), obeys the Langevin equations,
where
x and
y are the particle’s coordinates,
is the incompressible advection velocity vector,
, and
a tunable, uniform field, termed here “force”, oriented at an angle
with respect to the
x axis. As illustrated in
Figure 1a, the array unit cell consists of four counter-rotating convection rolls. The random sources,
with
, are stationary, independent, delta-correlated Gaussian noises,
, modeling equilibrium thermal fluctuations in a homogeneous, isotropic medium. In our notation,
coincides with the particle’s free diffusion constant in the absence of advection. Upon adopting the flow parameters,
L and
, as convenient length and time units, the only remaining tunable parameters are the noise strength,
(in units of
), and the force parameters,
F (in units of
) and
.
The stochastic differential Equation (
2) were numerically integrated by means of a standard Mil’shtein scheme [
23]. To ensure numerical stability, numerical integration was performed using a very short time step,
–
. The stochastic averages reported here were computed over at least
samples (trajectories). Computing the asymptotic diffusion constants requires extra caution, because at low noise, the advected particle may take an exceedingly long time to exit a convection roll [
24]. Indeed, since the external force
breaches the
symmetry of
, we compute the diffusion constants along the
x and
y axes,
where
,
, and
denotes a stochastic average. These two diffusion constants will be investigated as distinct functions of
F and
in lieu of the diffusion constant in the force direction,
, introduced in
Section 1. Of course, in view of the
symmetry of the stream function of Equation (
1), one proves immediately that
and, more importantly,
.
Subject to thermal fluctuations of strength
, an unbiased advected particle with
undergoes normal diffusion with an asymptotic diffusion constant,
. AED takes place at high Péclet numbers,
, whereby
D turns out to be larger than the free diffusion constant,
. This effect has been explained [
19,
20,
21,
25,
26,
27] by noticing that, at low noise, an unbiased particle jumps between convection rolls thanks to advection, which drags it along the outer layers of the convection rolls, or flow boundary layers (FBLs), centered around the
separatrices. Thermal diffusion across such narrow FBLs favors particle roll jumping, thus enhancing spatial diffusion [
24].
At zero bias, the asymptotic diffusion constant,
D, changes from
for
to
for
. The constant
depends on the array geometry and boundary conditions [
19,
26]. For the unbiased, square free-boundary convection array of Equation (
1),
[
19], consistent with previous numerical results [
24]. The crossover between these diffusion regimes is well localized around
[
27]; hence, AED occurs for
. Many numerical and experimental papers support the FBL-based interpretation of AED [
28,
29,
30,
31,
32].
The relevant mobility functions are computed by taking the limits:
We numerically checked that
for any choice of
F and
, as to be expected in the notation of Equation (
2).
In a recent paper, we investigated the effect of a longitudinal force, say
, on the trajectories of a tracer particle [
22]. For small
F values, the tracer is advection dragged along the boundaries of a convection roll until, after completing several rounds, it jumps into an adjacent one (preferably in the force direction). The FBL width,
, is of the order of the length diffused by a free Brownian particle during a full convection round, that is
[
19,
20]. Upon increasing
F, the tracer’s circulation along the roll boundaries stops, while its trapping inside the convection rolls grows but is short lived. The underlying FBL breakup mechanism occurs at a certain threshold value of the drive,
. We estimated
by equating the FBL width,
, with the net displacement undergone by a driven tracer while being advected across a convection roll,
; hence [
22]:
More numerical evidence of the critical nature of the dynamical transition taking place at
will be provided in an upcoming full-length paper [
33].
3. Diffusion Anisotropy
The main results of this work are illustrated in
Figure 2, where several
curves are plotted versus the force intensity,
F, for increasing values of the angle
in the interval
. A few properties of the longitudinal diffusion constant for
are noteworthy:
(i) The limits
and
of all curves coincide respectively with the AED,
, and the free diffusion constant,
. While the former limit was anticipated and discussed in
Section 2, the horizontal asymptotes for
set in when advection grows negligible with respect to the external drive, so that the driven particle diffuses effectively advection-free [
34].
(ii) Most
curves exhibit huge excess diffusion peaks for values of
F ranging between
, Equation (
5), and:
denotes the position of the diffusion peak for
and can be estimated by equating the drag time across a
unit cell,
, with the advection drag time around a roll, i.e., a circle of radius
,
[
22].
We also observe that the height of the excess diffusion peaks in
Figure 2,
, is inverse proportional to the noise strength,
(see the inset), and diminishes with increasing
from zero to
.
(iii) The profile of the curves described in (ii) holds for all force orientations with three remarkable exceptions: (1) , where the diffusion peak is the most pronounced and so broad that overshoots also for . (2) , where bridges the AED and free-diffusion constants smoothly, without going through a maximum. Its step-like profile is centered at . We recall that is the transverse diffusion constant corresponding to the longitudinal diffusion peak for . (3) , where longitudinal and transverse diffusion constants coincide and grow monotonically with F until they level off to form a plateau, which can be higher than the diffusion peak at .
With these exceptions, the diffusion peaks illustrated in
Figure 2 can be regarded as a manifestation of the so-called excess diffusion mechanism [
35,
36,
37]. Let us consider diffusion in the
x direction. The applied force,
, has a twofold action. Its transverse component,
, helps break up the advection FBL, thus forcing the particle to diffuse along easy flow paths represented by the horizontal
separatrices,
, with
n an integer. Its longitudinal component,
, pulls the particle along the above horizontal paths, contrasted by advection. Longitudinal diffusion is then modeled by the effective Langevin equation
; see Equation (
2). This approximate equation holds good under the assumption that after FBL breakup, the
x and
y coordinates can be regarded as decoupled. At low noise,
, the particle thus moves in the longitudinal direction subject to the advection washboard potential of amplitude
. Depinning occurs for
and is marked by a conspicuous enhancement of the relevant diffusion constant,
. Along the easy flow paths,
. The magnitude of this effect, termed excess diffusion, in a washboard potential is inversely proportional to the noise strength,
[
37]. In the present case, this argument is necessarily restricted to drive intensities with
, in agreement with our simulation results.
The case of an advected particle driven diagonally across the convection rolls is rather unique and is treated in
Section 4. The broad diffusion peak of a particle dragged parallel to the main axes of the square convection array is the focus of
Section 5.
4. Diagonal Diffusion
Driven diffusion in the diagonal directions across the convection rolls,
, is characterized by a unique
F-dependence of the diffusion constant. As shown in
Figure 3, the curves
grow asymptotically independently of
F, up to a very high plateau. This points to a specific diffusion mechanism, which only holds in a narrow
interval centered around
. In particular, we checked that this effect does not occur along any other axes of the square convection array, that is for
, with
m and
n coprime integers different from one. What makes the diagonal directions so special? Let us consider a couple of parallel straight paths,
, with
and
(
Figure 1a), and take the average,
, of the advection velocity along them,
, with
and
defined in Equation (
2). A simple integration with respect to
x yields
, for
, and
otherwise.
This result suggests that the particle is advected in the opposite direction along any two parallel paths with offset
. Accordingly, upon neglecting advection for
and low noise,
, diffusion in the diagonal direction is mostly due to path switching. Indeed, propelled by thermal noise, the particle switches paths by diffusing the distance
between them in a time of the order of [
34]
. This results in a contribution
to the longitudinal diffusion constant. Finally, averaging
with respect to
in the interval
yields:
with
. Of course, our average applies to any pair of adjacent diagonal paths vertically spaced by multiples of
.
Our estimate, Equation (
7), for the asymptote of
is in close agreement with the simulation data of
Figure 3. In
Figure 4, we plot the curves of
obtained for the same parameter values, except the noise strength was lowered by one order of magnitude. As expected,
approaches a plateau ten times higher as an effect of the path switching mechanism advocated above.
Such a mechanism should not be mistaken for the excess diffusion mechanism recalled in
Section 3. Indeed, the latter requires that the transverse component of
is large enough to pull the particle out of the top (bottom) longitudinal FBL branches, which happens for
with
and
given in Equation (
5) [
33]. On the contrary, the path switching mechanism dominates in a small
interval around
,
. Our estimate for
is consistent with the data of
Figure 3 and
Figure 4, where
appears to shrink with increasing
.
5. Longitudinal and Transverse Diffusion
Advection impacts longitudinal
and transverse diffusion
, in a distinct manner, as illustrated in Panels (a) and (b) of
Figure 5. Simulation data for
and
at high Péclet numbers are plotted versus
, for different values of
. A few remarkable properties are apparent by inspection [
22]:
(i) Both diffusion curves approach the respective limits
for
and
for
, as already noticed in
Figure 2. The curves of the transverse diffusion constant,
, exhibit a smooth, step-like profile centered at
, whereas the longitudinal diffusion peaks are much broader than the excess diffusion peaks observed for
in
Figure 2.
(ii) As anticipated in
Section 3, the curves
peak around the same value of the force intensity,
, for a wide interval of the noise strength,
. Indeed, based on the definition of
, Equation (
6), for
, advection and external drag would nullify each other along one horizontal FBL branch, while doubling their action along the opposite one. Under this condition, the longitudinal diffusion constant is expected to attain a maximum [
38]. Moreover, at low noise, the peak height,
, is inverse proportional to
, as reported in the inset of
Figure 2.
(iii) The profiles of the
peaks are symmetric: Their left (right) sides rise (decay) proportional to
(
). A working fitting formula for the longitudinal diffusion peaks of
Figure 5 is:
where
and
are fitting parameters. Our best fits in
Figure 5 are obtained for
, which is close to the expected value of Equation (
6). The small discrepancy can be attributed to the action of thermal noise, which, at high Péclet numbers, differs significantly in the weak and strong drive regimes.
The fitting formula in Equation (
8) can be interpreted by means of a heuristic argument. The advection flows along the top and bottom array edge are spatially modulated with period
L and opposite in phase. Moreover, when trying to apply the edge switching approach leading to Equation (
7), we notice that the average of the advection drag,
, taken along the edges of a longitudinal channel of width
, with
, vanishes (see, e.g.,
Figure 1b). The ensuing edge switching process can then be regarded as an alternating renewal process [
39]. Accordingly, to calculate
for
, we need to replace [
22]:
Finally, the spatial averages over a channel unit cell yield a result qualitatively consistent with the fitting formula of Equation (
8).
6. Conclusions
The response of an overdamped Brownian particle driven-advected in a 2D square convection array shows large deviations from the predictions of the linear response theory. While the mobility is independent of the drive orientation, its diffusion turns out to be strongly anisotropic. Depending on the drive orientation, the diffusion constants along the main array’s axes exhibit distinct peaks for advection and external drags of comparable magnitude.
The anisotropic diffusion process investigated in this work should not be mistaken with the anisotropic dynamics of a driven Brownian particle suspended in a fluid at rest in a 2D lattice of obstacles of a given shape [
13,
14,
15] or in other constrained geometries [
40,
41]. In the present case, the response of a tracer particle is strongly affected by the stationary advection currents. Measuring its diffusion constants along special directions, parallel and diagonal to the array axes, allows a direct characterization of the convection pattern at hand. As mentioned in the Introduction, the generalizations of the fluctuation-dissipation theorem have been proposed [
3], which allow, at least in principle, a more refined analytic treatment of this problem. Interesting, in this respect, also is the multiscale scheme developed in [
42].
As a natural extension of the approach presented in this paper, we plan to investigate the anisotropic response of active Brownian particles next, either biological or synthetic, in convection arrays [
27,
43,
44]. We are confident that a better understanding of the diffusion of self-propelling particles in patterned convection flows is likely to play an important role in controlling the driven transport of active matter in microfluidic devices.