Discrete Element Method simulations of the saturation of aeolian sand transport
Abstract
The saturation length of aeolian sand transport (Ls), characterizing the distance needed by wind‐blown sand to adapt to changes in the wind shear, is essential for accurate modeling of the morphodynamics of Earth's sandy landscapes and for explaining the formation and shape of sand dunes. In the last decade, it has become a widely accepted hypothesis that Ls is proportional to the characteristic distance needed by transported particles to reach the wind speed (the “drag length”). Here we challenge this hypothesis. From extensive numerical Discrete Element Method simulations, we find that, for medium and strong winds,
, where Vs is the saturated value of the average speed of sand particles traveling above the surface and g is the gravitational constant. We show that this proportionality is consistent with a recent analytical model, in which the drag length is just one of four similarly important length scales relevant for sand transport saturation.
1 Introduction
Aeolian transport of sand occurs when a sufficiently strong wind blows over a sand bed [Bagnold, 1941; Shao, 2008; Durán et al., 2011; Kok et al., 2012]. The two dominant transport modes are saltation, referring to particles hopping along the sand surface in characteristic trajectories [Bagnold, 1941], and creep, referring to particles rolling and sliding along the sand surface [Bagnold, 1937]. Wind‐blown, initially flat sand beds may evolve into bed forms, such as ripples and dunes, due to different kinds of instabilities [Claudin and Andreotti, 2006; Andreotti et al., 2010; Fourrière et al., 2010; Parteli et al., 2011; Charru et al., 2013; Durán et al., 2014a].
For instance, dunes are thought to form due to an aerodynamic instability, namely, a slight phase difference between topography and wind shear maxima on a periodically perturbed sand bed [Jackson and Hunt, 1975; Hunt et al., 1988; Kroy et al., 2002a, 2002b]. If this phase difference is larger than the phase difference between sand transport and wind shear maxima, which is characterized by the saturation length (Ls) [Sauermann et al., 2001; Parteli and Herrmann, 2007a; Andreotti et al., 2010; Pähtz et al., 2013, 2014], the perturbations grow. This is one of the reasons why Ls plays an important role in aeolian dune formation. Indeed, Ls controls the length of the smallest (“elementary”) dunes evolving from a flat sand bed and the minimal size of crescent‐shaped barchans [Parteli et al., 2007; Claudin and Andreotti, 2006; Fourrière et al., 2010]. In contrast, the steady state dune dimensions are controlled by the aerodynamic roughness (
) [Pelletier, 2009]. Ls is also a key parameter in morphodynamic models of Earth's sandy landscapes, such as aeolian dune models [Kroy et al., 2002a, 2002b; Schwämmle and Herrmann, 2003; Parteli and Herrmann, 2007b; Narteau et al., 2009; Parteli et al., 2009, 2014].
It has been a challenging task to predict Ls as a function of wind and particle parameters, such as the wind shear velocity (u∗), the mean particle diameter (d), the particle (ρp) and fluid density (ρf), and the kinematic air viscosity (ν). In fact, the main difficulty has been to understand which of the involved relaxation mechanism is the slowest and thus the most important one. Sauermann et al. [2001] derived an expression for Ls based on the assumption that Ls corresponds to the length needed to eject particles from the sand bed. Based on measurements of the size of both subaqueous and aeolian barchan dunes, Hersen et al. [2002] proposed that Ls is proportional to the drag length (Ld=(ρp/ρf)d), which characterizes the distance transported particles need to reach the flow speed. Estimations of the wavelength of elementary dunes by Claudin and Andreotti [2006] and measurements by Andreotti et al. [2010] later supported this proposition. Indeed, these measurements confirmed that Ls is approximately proportional to d and essentially independent of u∗, as predicted by Ls∝Ld. However, there is a considerable room for alternative interpretations of these measurements. The analytical model for the saturation length of both subaqueous and aeolian particle transport recently proposed by Pähtz et al. [2013, 2014] is also consistent with these measurements (without fitting), even though the model predicts that Ls varies with u∗. In this model, the four potentially most important relaxation mechanisms are all accounted for (ejection of bed particles and particle deceleration in particle‐bed collisions, fluid drag acceleration of particles, and relaxation of the fluid speed), and it turns out that neglecting any of them entirely changes the model predictions [Pähtz et al., 2014]. This shows that the identity of the most important relaxation mechanisms remains an open problem.
Here we use Discrete Element Method (DEM) simulations for the particle phase to investigate aeolian sand transport saturation. This modeling technique considers interparticle interactions above and also with the sand bed and is thus more realistic than older modeling techniques [e. g., Almeida et al., 2007, 2008; Kok and Renno, 2009], which usually consider the sand bed as a flat, rough wall. However, it is also computationally more costly, which is the main reason that this technique had not been used for modeling particle‐laden flows until a few years ago [Carneiro et al., 2011; Durán et al., 2012; Carneiro et al., 2013; Durán et al., 2014b, 2014a; Schmeeckle, 2014; Pähtz et al., 2015]. From our simulations, we find that the total mass of particles transported above the sand bed (M) relaxes significantly slower toward its saturated value (Ms) than the average particle velocity above the sand bed (V = Q/M, where Q is the sand transport rate above the sand bed) toward its saturated value (Vs), indicating that the drag length is not the dominant saturation length scale. Moreover, we find that
, where g is the gravitational constant, when u∗>4ut, where ut is the dynamic threshold of sand transport (i.e., the extrapolated value of u∗ at which the saturated sand transport rate (Qs) vanishes). This finding is consistent with the analytical model by Pähtz et al. [2013, 2014], supporting the hypothesis that the aforementioned four potentially most important relaxation mechanisms are all similarly relevant.
This paper is organized as follows. First, we present the modeling technique we used to simulate aeolian particle transport in section 2. Afterward we show our numerical results in section 3, which are then discussed and compared with the analytical model for the saturation length recently proposed by Pähtz et al. [2013, 2014] in section 4. Finally, we draw conclusions in section 5.
2 Modeling Technique
In this section, we briefly describe the three‐dimensional numerical model which we used to model sand transport. A more detailed description can be found in Carneiro et al. [2013], particularly its supplementary material.
(1)
).
It is important to note that equation 1 is applied to calculate the wind velocity profile at every time step because we assume that the flow adapts to local drag decelerations of the wind speed within the integration time (Δt=0.005s). This standard assumption led to several previous numerical results in agreement with experiments [Carneiro et al., 2011; Durán et al., 2012; Carneiro et al., 2013; Durán et al., 2014b; Pähtz et al., 2015]. Nevertheless, we argue why it is reasonable to make such assumption in the following.
There are actually two time scales involved. First, the time needed to transmit the drag force between fluid and particles. As the drag force is transmitted via collisions between air molecules (which are extremely small) and the sand grains, this time scale is much smaller than the integration time. The second time scale is related to the propagation of this perturbation to the entire system. As perturbations of a fluid typically travel at the speed of sound (in air, c≈340 m/s) and the maximum distance they need to travel to reach all relevant locations of the simulated saltation layer is of the order of 100d=0.02 m (the height of the saltation layer), the maximal time needed for this perturbation to influence all relevant locations of the simulated saltation layer is around 0.0006 s, which is around a factor 10 smaller than Δt and around a factor 103smaller than the saturation time. Even if the necessary time for the flow to accommodate to a perturbation is larger than the necessary time a perturbation needs to travel to reach all relevant locations, it is hard to imagine that this time comes any close to the saturation time. Moreover, since particle and flow velocity are of the same order of magnitude, also the length needed for the flow to adapt to the perturbation should be much smaller than the saturation length.
Trajectories and velocities of particles are obtained from solving Newton's equations of motion through the velocity‐Störmer‐Verlet scheme [Griebel et al., 2007], considering gravity and wind drag as the external forces acting on the particles. Interparticle contacts are modeled through a dissipative spring dashpot potential (coefficient of restitution, e = 0.65), while frictional contacts are neglected (no particle rotation). The system dimensions are length × height × width =50d×400d×7.5d, and 1410 particles with normally distributed diameters (dp=(1 ± 0.1)d) are simulated. Most of these particles constitute a bed of around 12 particle layers. This is sufficiently thick to suppress the reflection of shock waves from the dissipative (e = 0.5) bottom wall [Rioual et al., 2000, 2003]. The simulation top is open and the side boundaries periodic. In fact, particles never reach the top of the system.
3 Results
Using the model described in section 2, we carried out simulations for typical sand transport conditions on Earth (g = 9.81 m/s2, d = 200 μm, ρp=2650 kg/m3, ρf=1.174 kg/m3, ν = 1.59 × 10−5 m2/s). For these conditions, we varied u∗ between two and nearly ten times the threshold shear velocity (ut=0.195 m/s). For each u∗, 15 runs were performed, starting from different initial condition. Indeed, while the sand bed in all samples was exactly the same at the start of each simulation (t = 0), 10 particles with velocity vx=vz=1 m/s were randomly placed sufficiently high above the surface (z > h + 20d). Each of these samples evolved in time toward the saturated state. The supporting information contains a movie showing the time evolution of a given sample (u∗=0.8 m/s) between t = 0 and t = 0.35 s.
From averaging the particle locations and velocities over the 15 samples corresponding to each u∗ and further over the horizontal (x) and lateral (y) direction, we obtain the vertical profiles of the local mass density (ρ) and the mass‐weighted average particle velocity 〈v〉the particle velocity at each time. The time evolution of
(red, dashed line),
(blue, solid line), and V = Q/M(green, dash‐dotted line) further obtained from these profiles relative to their saturated values is plotted in Figure 1 for u∗=1.2 m/s (for different u∗, it looks similar).

It can be seen that the time transient behavior of Q is similar to that determined in older studies [Spies et al., 2000; Ma and Zheng, 2011]. Furthermore, one immediately recognizes that M relaxes significantly slower toward Ms than V toward Vs (this is also true for our simulations with other values of u∗). This means that our simulations do not confirm the hypothesis that drag is the dominant mechanism controlling sand transport saturation, which would instead require that M always relaxes much faster toward Ms than V toward Vs [Pähtz et al., 2014]. Moreover, this observation can be used to extract the saturation length (Ls) from the time evolution of Q, as we explain in the following.
(2)
(3)
) of equation 2 for steady and laterally homogeneous conditions (∂/∂t = ∂/∂y = 0). Since Γ(Qs) = 0, Ls corresponds to the negative inverse Taylor coefficient (−[Γ′(Qs)]−1). By definition equation 3, describing the spatial relaxation of Q toward Qs, is only applicable near saturation (|1 − Q/Qs|≪1).
(4)
(i.e., d/dx = Vd/dt) is used to relate them. In fact, fitting (nonlinear least squares method) Qs, xo, and Ls to best agreement with the analytic solution
(5)
(6)
describes the data with u∗>4ut very well, the scaling
does not (see the dotted line in Figure 2, corresponding to the best fit of
to data with u∗/ut>4), indicating that Vs and not u∗ is the relevant parameter controlling Ls. Only when one allows a small offset, a good fit can be obtained. This is shown by the dashed line in Figure 2, which corresponds to
, where the offset (Lso=0.13 m) is expected to have a complex dependency on particle and wind parameters (except u∗).

m and the dotted line to
. The inset shows Ls as a function of
for the same conditions, whereby the solid line corresponds to
. The error bars correspond to the 95% confidence intervals obtained from the best fits to equation 5.
4 Discussion
In this section, we first briefly describe the analytical model for the saturation length proposed by Pähtz et al. [2013, 2014] in section 4.1. We then compare the model predictions with our numerical results shown in Figure 2 and with the scaling in equation 6.
4.1 Analytical Model by Pähtz et al. [2013, 2014]
(7)
(8)
(9)
.
4.2 Comparison Between Analytical and Numerical Model Predictions
It can be seen that equation 9 predicts
, which resembles the scaling in equation 6 obtained from our simulations. Since both equations are only valid for sufficiently large values u∗/ut, this resemblance supports the analysis by Pähtz et al. [2013, 2014]. In this analysis, the four potentially most important relaxation mechanisms are all accounted for (ejection of bed particles and particle deceleration in particle‐bed collisions, fluid drag acceleration of particles, and relaxation of the fluid speed), as described in section 4.1. Since neglecting any of them entirely changes the model predictions [Pähtz et al., 2014], the resemblance between the analytical and numerical model predictions suggests that these four relaxation mechanisms are all similarly relevant. This is just another indication that Ld is not the dominant length scale controlling sand transport saturation.
However, one must also note that there are differences between these models. First, the qualitative model predictions for small u∗/ut slightly differ from each other. While the numerical model predicts that Ls remains nearly constant between 2ut and 4ut, the analytical model predicts a slight increase with u∗ [Pähtz et al., 2013, 2014]. This might be a result of the aforementioned uncertainty of the parameter cU. Second, while the analytical model predictions are consistent with the measurements by Andreotti et al. [2010], the numerical model predictions shown in Figure 2 are not. This can be entirely linked to differences in the model parameters μ and cM, as we explain in the following. First, from fitting equation 7 to our numerical data (it fits very well, not shown), we obtain μ≈2, in contrast to μ≈1, which Pähtz et al. [2013, 2014] obtained from experimental data. Second, since M relaxes much slower toward Ms than V toward Vs in the simulations (see Figure 1), cM becomes very large, while cM≈1 was estimated by Pähtz et al. [2013, 2014] from theoretical arguments. In fact, using μ≈2 and cM→∞ in equation 9 yields the prefactor (2 + cM)cv/(cMμ)→≈0.65 close to the prefactor α = 0.48 in equation 6. This means the numerical model and the analytical model seem quantitatively consistent with each other since the differences in the parameters μ and cM are likely the results of simplifications in the numerical model. For instance, the difference in the value of μ between simulations and measurements can be linked to the interparticle contact model, which is known to have considerable influence on the frictional behavior of solids [Campbell, 2006]. Indeed, the model neglects particle rotation and uses rather soft particles (stiffness k = 1 kg/s2), which allows particle overlaps of about 20%, while in reality the stiffness is several orders of magnitude larger. Also, the coefficient of restitution used in our simulations (e = 0.65) might have been too small. Comparable studies usually use larger values [e.g., Durán et al., 2012, e = 0.9] and obtain a Coulomb friction coefficients near unity.
5 Conclusion
We simulated aeolian sand transport using DEM simulations. From these simulations, we obtained the saturation curves in Figure 1 of the total mass of particles transported above the sand bed (M), their average velocity (V), and the associated sand flux (Q = MV). These numerical data indicate that M saturates much slower than V, challenging the widely accepted hypothesis that the drag length (Ld = (ρp/ρf)d) is the dominant length scale controlling aeolian sand transport saturation, which would require the opposite, namely, that M saturates much faster than V. Since Ld does not change with u∗, the same hypothesis is further challenged by the numerical data in Figure 2 showing that the saturation length (Ls) significantly increases with the wind shear velocity (u∗) for medium and strong winds (u∗>4ut). Moreover, this increase follows the scaling relation
(see inset of Figure 2), qualitatively consistent with the limit u∗/ut≫1 of the recently proposed analytical model by Pähtz et al. [2013, 2014]. In section 4, we showed that this analytical model also predicts the proportionality factor in
to be about 0.65, which is close to the numerically obtained value α = 0.48. This adds another piece of doubt on a dominating role of Ld because the model accounts for the four potentially most important relaxation mechanisms (ejection of bed particles and particle deceleration in particle‐bed collisions, fluid drag acceleration of particles, and relaxation of the fluid speed), and neglecting any of them entirely changes the model predictions [Pähtz et al., 2014].
The scaling relation
, found for medium and strong winds, might itself become an important step toward modeling of dune and dune field evolutions in sand storms. For this purpose, one would need a model predicting Vs. In fact, there are a considerable number of analytical models predicting Vs as function of u∗ [e.g., Bagnold, 1941; Kawamura, 1951; Owen, 1964; Bagnold, 1973; Kind, 1976; Lettau and Lettau, 1978; Ungar and Haff, 1987; Sørensen, 1991, 2003; Durán et al., 2011; Pähtz et al., 2012; Lämmel et al., 2012], some of them might be applicable to sand storm conditions.
Finally, it is worth to note that aeolian dunes are often superimposed by ripples. Compared to the flat sand bed condition present in our simulation, the presence of such ripples leads to a strong increase of the aerodynamic roughness (
), which corresponds to a smaller wind and thus saturated particle velocity (Vs) in the saltation layer. The relation
, found for medium and strong winds, would thus imply that the formation of superimposed ripples on the surface of aeolian dunes is associated with a simultaneous decrease of Ls.
Acknowledgments
The data displayed in Figures 1 and 2 are available from the authors. This work was partially supported by the National Natural Science Foundation of China (grant 41350110226), the Brazilian Council for Scientific and Technological Development CNPq, ETH (grant ETH‐10 09‐2), the European Research Council (grant FP7‐319968), and the Portuguese Foundation for Science and Technology (FCT) under contracts EXCL/FIS‐NAN/0083/2012, PEst‐OE/FIS/UI0618/2014, and IF/00255/2013.
The Editor thanks two anonymous reviewers for their assistance in evaluating this paper.





