Drag Force Model for DEM-CFD Simulation of Binary or Polydisperse Bubbling Fluidized Beds

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Engineering Conferences International ECI Digital Archives The 4th International Conference on Fluidization From Fundamentals to Products Refereed Proceedings Drag Force Model for DEM-CFD Simulation of Binary or Polydisperse Bubbling Fluidized Beds Francesco P. Di Maio University of Calabria, Italy Alberto Di Renzo University of Calabria, Italy Follow this and additional wors at: http://dc.engconfintl.org/fluidization_xiv Part of the Chemical Engineering Commons Recommended Citation Francesco P. Di Maio and Alberto Di Renzo, "Drag Force Model for DEM-CFD Simulation of Binary or Polydisperse Bubbling Fluidized Beds" in "The 4th International Conference on Fluidization From Fundamentals to Products", J.A.M. Kuipers, Eindhoven University of Technology R.F. Mudde, Delft University of Technology J.R. van Ommen, Delft University of Technology N.G. Deen, Eindhoven University of Technology Eds, ECI Symposium Series, (). http://dc.engconfintl.org/fluidization_xiv/94 This Article is brought to you for free and open access by the Refereed Proceedings at ECI Digital Archives. It has been accepted for inclusion in The 4th International Conference on Fluidization From Fundamentals to Products by an authorized administrator of ECI Digital Archives. For more information, please contact franco@bepress.com.

DRAG FORCE MODEL FOR DEM-CFD SIMULATION OF BINARY OR POLYDISPERSE BUBBLING FLUIDIZED BEDS Francesco P. Di Maio a and Alberto Di Renzo a * a University of Calabria; Department of Environmental and Chemical Engineering Via P. Bucci, Cubo 44A; 876 Rende (CS); Italy *T: +9 984 496654; F: +9 984 496655; E: alberto.direnzo@unical.it ABSTRACT Consideration of solids polydispersion is still lacing in DEM-CFD simulations of fluidized beds. Theoretical formalism for the drag force in size-distributed particle systems was recently proposed, but only for low-re flows. Extension of the same formalism to overcome such limitations is discussed. Fully-resolved flow through regularly arranged binary particle systems is computed to assess the formalism, observing consistency for low to moderate voidage value and some discrepancy for higher voidage values. INTRODUCTION The multiphase hydrodynamics in fluidized beds exhibits well nown complex features, lie spatial inhomogeneities (e.g. bubbles, clusters) as well as rich dynamics in the time signal of operating variables (e.g. pressure drop). In beds containing different solids at the same time, solids mixing or segregation issues further complicate the hydrodynamics, rendering the predicting capability of macroscopic models very limited at present. Particle-scale numerical simulations, lie DEM-CFD, have proven capable of representing several aspects of the twophase hydrodynamics in fluidized beds and their use is receiving considerable attention in basic research as well as in industrial applications (). DEM-CFD simulations are based on nearly first-principle microscopic models, which allow overcoming the simplifying assumptions of macroscopic models, and are capable of reproducing the overall behavior of fluid-solid systems as a result of the simulation of very large numbers of particles and computational cells. Apart from the numerical difficulties generally associated to large-scale simulations, there are a number of physical issues that still remain to be solved. One of these is accounting for size dispersion of the solids in the two-phase flow. Indeed, accurate and generally valid formulations of the fluid-to-particle interaction term in polydisperse system are still a relatively open problem. It is worth mentioning that typical DEM-CFD approaches do not model the fluid flow at full resolution, i.e. describe the flow through the particle-particle interstices. Rather, the computational cells are a few particle sizes large and fluid motion is modeled (locally) as a flow through porous medium. Interphase momentum exchange is computed via semi-empirical expressions for the drag force acting on particles, which are valid for monodisperse suspensions. Therefore, the need for an expression of such force valid for polydisperse systems appears evident. In the present contribution we review a formulation of the drag force acting on a particle immersed in a bidisperse system, similar to that proposed by van der Hoef et al. (4), and investigate specifically two aspects: firstly, we examine under what conditions the expression, originally derived under the limiting condition of viscous-flow, can be extended to any flow-regime; secondly, we compare the model predictions against fully resolved finite-element computations of the fluid flow through regular bi-disperse arrays of spheres at various size ratios, volume fractions and voidage values.

FLUID-PARTICLE INTERACTION IN DEM-CFD MODELS In DEM-CFD simulations, the simultaneous presence of the discrete solid phase and the continuous fluid phase is contemplated by means of different frames of reference and models: the Lagrangean framewor is adopted for DEM, following each individual grain, along with the Eulerian framewor for the fluid phase, in which the flow is computed by solving the locally-averaged equations of continuity and momentum balance. In DEM, the translational motion of a particle is obtained by solving Newton s second law of dynamics in the following form: M Nc d x = Mg + f dt i= c, i + f fp () in which particle acceleration is computed nowing, as listed in the left-hand-side of Eq. (), the gravitational force, the sum of the contact forces and the fluid-particle interaction force, respectively. An analogous equation is solved for the angular acceleration. Particle velocities and positions are obtained by integrating once and twice the accelerations. The fluid flow is obtained by solving the spatially-averaged equations of continuity and momentum balance: ε + εu = t εu ρ f + ρ f εuu = P + σ t + S FP + ρ f g t () () Model closures for the interphase momentum term S FP are obtained starting by the computation of the hydrodynamic force on each particle, using one of the many semi-empirical models available (e.g. Gidaspow (), Di Felice ()). Then, in the simplest form, the closure term is obtained as the sum of forces acting on the particles in each computational cell, divided by the cell volume, i.e.: S FP = i f Ω fp, i (4) The fluid-particle force can be decomposed into pressure-gradient and pure drag terms, leading to: f = V P + f (5) fp p d Reasoning in terms of f fp or f d is equivalent, provided the necessary adaptations are considered. In monodisperse systems, expressions for the drag force exhibit dependence on the particle size, fluid velocity, viscosity and local voidage, and different formulas may be used for different flow regimes or voidage ranges. FLUID-PARTICLE FORCE IN POLYDISPERSE SYSTEMS The presence of a mixture of differently-sized solids (polydispersion) complicates the flow through the interstices among particles, rendering traditional drag formulations physically inconsistent. An example of missing aspects is the independence of both the size ratio and local composition. More recently, it has been shown that expressions including such dependences can be constructed

(4), although formally derived for the viscous flow regime, and lattice-boltzmann simulation results confirm their validity (4). Slight modifications of them have been proved accurate for characterizing species segregation in gas- and liquid-fluidized beds (5,6). The original version was also utilized to derive a forceequilibrium-based segregation map for gas-fluidized mixtures (7) in the viscousflow limit. A somewhat different derivation has been proposed in Ref. (8). Physical consistency Gas-solids systems are considered, so the effect of the Archimedean buoyancy can be neglected. Following an argument similar to Ref. (4), we start by a wellnown result that relates the overall pressure drop to the force acting on individual particles, which for monodisperse systems reads: ( ε ) dp f fp 6 f fp = ( ε ) = (6) dz V π D p The same principle, in a system involving t solids of different size (each one assumed for simplicity monodisperse), reads: dp dz 6 = t ( ε ) π = x f D fp, (7) where x is the (fluid-free) volume fraction of the species. Let us consider the surface-to-volume average diameter for the solids mixture as: = t x D (8) = D and, in analogy with the monodisperse case, let us define an equivalent average force, acting on an average particle, in the bed by setting that: f fp ( ε ) dp 6 f fp = (9) dz π D It is convenient to relate the force actually exerted on each particle to the average force in the system by a specification coefficient α : f fp, = α f fp () with the coefficient α still to be defined. Introducing for convenience an index of polydispersion defined by: D y = D () we eventually obtain a constraint for physical consistency that can be expressed in terms of the specification coefficients α, i.e.:

t = x α y = () In searching for a definition of α, it can be easily verified that by setting α = y or α = y Eq. () is fulfilled quite trivially. In addition, the same is obtained with any linear combination of the two terms just mentioned. Therefore, a generic expression for the specification coefficient is: ( a) y + α = ay () in which the factor a remains to be derived. Table lists some possibilities for the values of a, and the corresponding expressions for α, all of which comply with the requirements of Eq. (). Tendency for an extreme case In searching for the correct value of a, it is convenient to examine the tendency of the specification coefficients for extreme cases. A useful case is when we consider the force balance acting on a (very) large sphere immersed in a fluidized bed of fine material. It is well nown that such a sphere will be at equilibrium, i.e. it will neither be pushed upwards nor downwards, if its density equals the bul density of the bed. Such physical condition can be cast in analytical terms using the concepts described earlier. In particular, we will assume to have a binary mixture in which the fine solid and the large particle are species and, respectively. We then have an extreme size ratio and also a volume fraction of the fine material that tends to unity, i.e. D D and x. As a result, D D and y D D. The force balance on the large particle can be set by equating the hydrodynamic force pushing it upwards to its weight, i.e.: πd α f fp = ρ g (4) 6 In this case the bed is essentially composed of the fine particles, and the average fluid-particle force corresponds to the value necessary to suspend (i.e. fluidize) one fine particle. By introducing also the general definition of α, we obtain: Table. Examples of expressions for the factor a (see Eq. ()) and the specification coefficients α compatible with the constraint as set out in Eq. (). Case a α y y + ε y ε y + εy y ε ( ) ε ( ) 4 ε

D a D πd πd + 6 6 D D ( a) ρ g = ρ g (5) whence, after some manipulations, we get: ( ) ρ a = ρ (6) The left-hand side of Eq. (6) is obviously the bul density of the fine material provided that a = ε, which corresponds to case of Table. Under the assumption that such result is not restricted only to the limiting condition considered, i.e. it also applies for multicomponent mixtures in general, we get the following final formulation for the specification coefficient: ( ) y + α = ε y ε (7) It can be noted that the formulation closely resembles the expression derived by van der Hoef et al. (4). Indeed, accounting for the fact that Eq. (7) is obtained as a specification coefficient with respect to the average force (instead of the force in the monodisperse system) and in dimensional terms, the two results turn out to be equivalent. Yet, a difference remains and it is the way the result is derived. In the original introduction the terms were obtaining using the Carman-Kozeny equation (4), thereby assuming low-re flows, while here in no step of the derivation has the flow regime entered any expressions. Therefore, the result assumes properties of general validity, at least in the theoretical context in which it has been derived. COMPARISON WITH RESOLVED FLOW THROUGH REGULAR ARRAYS Since the result obtained in Eq. (7) is rather general, although not necessary universal, its implications should be verified and verifiable for any condition of flow through bi- or polydisperse systems, irrespective of the values of the size ratio, bed composition, voidage or the flow regime. It maes sense to test the formalism against simple cases in which the variables can be changed with relative ease, lie for flow through static, regular arrays of bidisperse spherical particles. Comparison of the results of fully-resolved simulations of the flow through periodic array of bidisperse sphere systems with the model predictions for the specification coefficients are carried out at various size ratios and voidage values (see Table ). Geometrical particle arrangements are obtained starting from the body-centered configuration for monodisperse systems, in which the particle located at the center of the cubic structure is reduced progressively in size in order to get the bidisperse system at different size ratios. Various voidage values are obtained by taing different distance between the particles. Note that because the geometrical arrangement is fixed the solid composition is directly related to the size ratio considered. Indeed, denoting the size ratio by d = D D, the volume fraction of the small component is obtained as: d x = (8) + d

The CFD module of the finite-element commercial software Comsol Multiphysics v. 4. is used. A slice of the overall domain is considered, with periodic boundary conditions for the flow variables between the inlet and outlet surfaces, including an overall pressure drop of Pa. Symmetry is used on the four side boundaries. The investigated ranges of variables are listed in Table. A typical result with the geometry and the flow field is shown in Fig.. The conditions considered correspond to low-re flow conditions and grid refinement studies have been carried out to ensure independence of the spatial discretization. Fig. shows a comparison of predictions and numerical results for the most significant cases studied. The data plotted in Fig. show that at voidage values up to.6 the force ratio obtained by the model, which equals the ratio of the specification coefficients α/α, reproduces the actual ratio of the forces experienced by the small particle over that of the large particles with very good accuracy in the entire range of size ratios considered. Table. Ranges of variables investigated in periodic bidisperse arrays. Large particle diameter, D µm Size ratio, d = D/D.5,.,.,.,.4,.5,.6,.7,.8,.9 Bed composition, x (= f(d)) -4 - Voidage, ε -.,., 7.9,.6,.6,.,.8,.6,.4,.4,.5.5,.55,.6,.65,.7,.75,.8,.85,.9,.95,.975,.99 Figure. Flow field through regularly arranged spheres resulting from finite-element simulation. Due to geometrical regularity the spatial domain is sliced and sections of the particle surfaces (in blac) appear for larger (the two parts in the bac) and smaller particles (the one in the front). Fluid streamlines are shown along with the (periodic) inlet and outlet surfaces with velocity-proportional coloring.

Force ratio, f fp, /f fp, [-] ε =.5.8.6.4...4.6.8 Size ratio, D /D [-] Force ratio, f fp, /f fp, [-] ε =.6.8.6.4...4.6.8 Size ratio, D /D [-] Force ratio, f fp, /f fp, [-] ε =.7.8.6.4...4.6.8 Size ratio, D /D [-] Force ratio, f fp, /f fp, [-] ε =.75.8.6.4...4.6.8 Size ratio, D /D [-] Force ratio, f fp, /f fp, [-] ε =.8.8.6.4...4.6.8 Size ratio, D /D [-] Force ratio, f fp, /f fp, [-] ε =.85.8.6.4...4.6.8 Size ratio, D /D [-] Force ratio, f fp, /f fp, [-] ε =.9.8.6.4...4.6.8 Size ratio, D /D [-] Force ratio, f fp, /f fp, [-] ε =.95.8.6.4...4.6.8 Size ratio, D /D [-] Figure. Fluid-particle interaction force ratio is plotted against the size ratio at various voidage values (see legends) for flow through regular arrays of bidisperse spheres. Solid symbols denote the results of the fully resolved simulations and the lines the model predictions. On the other hand, at voidage values of the order of.75, deviations between predicted and actual values become visible, particularly for size ratios in the range.-.7. As the voidage is further increased, it appears evident that model predictions are not able to capture the correct dependence of the force ratio with the size ratio. An explanation for the tendency to exhibit a linear dependence as the voidage tends to unity is suggested by the fact that the increased separation between the particles progressively leads to a condition in which each particle appears isolated. Consequently, the force exerted tends to the Stoes drag force, which is linearly dependent on the particle size. This behavior has not been

considered by previous authors who adopted the model proposed in (4). On the other hand, Yin and Sundaresan (8) recognized the need to account for this (and another one) effect and proposed to reformulate the problem in different terms, eventually basing the result on a fit of their Lattice-Boltzmann data. Overall, the problem of including the missing aspects in the original model (4) still remains essentially unsolved. The analysis presented above can provide directions for further developments. In any case, since gas-fluidized beds hardly wor at voidage values above about.6, at least in the emulsion phase, the inaccuracy highlighted above is unliely to determine large errors in simulations of multicomponent fluidized beds. However, for those cases in which loose regions play an important part in the process, a reconsideration of the model derivation should be taen into account in order to identify improved formulas that include the missing aspects. CONCLUSIONS A drag force formulation for the DEM-CFD simulation of polydisperse gas-solid fluidized beds has been derived in general terms. Comparison with detailed CFD results of flow through regular bidisperse arrays of spheres confirms the validity of the approach, but only in relatively dense regions (ε <.7). Additional developments are necessary to address discrepancies at higher voidage. NOTATION a coefficient in Eq. () t time, s D particle diameter, m u superficial relative velocity, m/s D mean particle diameter, m V p particle volume, m d diameter ratio (D /D ), - x particle position, m/s f c contact force, N x i solids volumetric fraction, - f d drag force, N y polydispersion index yi Di D f fp fluid-particle force, N z vertical coordinate, m f fp average fluid-particle force, N α specification coefficient, - g gravitational acceleration, m/s ε voidage, - t number of solid species, - ρ solid density, g/m M particle mass, g ρ f fluid density, g/m Nc number of contacts, - σ t deviatoric stress tensor, Pa P fluid pressure, Pa Ω cell volume S FP fluid-particle source term, N/m REFERENCES. N.G. Deen, M. van Sint Annaland, M.A. van der Hoef, J.A.M. Kuipers, Chem. Eng. Sci. 6 (7) 8.. D. Gidaspow, Multiphase flow and fluidization: continuum and inetic theory descriptions, Academic Press Inc., Boston, 994.. R. Di Felice, Int. J. Multiphase Flow. (994) 5. 4. M.A. van der Hoef, R. Beetstra, J.A.M. Kuipers, J. Fluid Mech. 58 (5). (see also: Erratum on AIChE J. 5 () (7), ) 5. R. Beetstra, M.A. van der Hoef, J.A.M. Kuipers, Chem. Eng. Sci. 6 (7) 46. 6. A. Di Renzo, F. Cello, F.P. Di Maio, Chem. Eng. Sci. 66 () 945. 7. F.P. Di Maio, A. Di Renzo, V. Vivacqua, Powder Technol. 6 () 8. 8. X. Yin, S. Sundaresan, AIChE J. 55 (6) (9) 5.