The multiphase particle-in-cell method (MP-PIC) is a numerical method for modeling particle-fluid and particle-particle interactions in a
computational fluid dynamics
Computational fluid dynamics (CFD) is a branch of fluid mechanics that uses numerical analysis and data structures to analyze and solve problems that involve fluid flows. Computers are used to perform the calculations required to simulate t ...
(CFD) calculation. The MP-PIC method achieves greater stability than its
particle-in-cell
In plasma physics, the particle-in-cell (PIC) method refers to a technique used to solve a certain class of partial differential equations. In this method, individual particles (or fluid elements) in a Lagrangian frame are tracked in continuous ph ...
predecessor by simultaneously treating the solid particles as computational particles and as a continuum. In the MP-PIC approach, the particle properties are mapped from the
Lagrangian coordinates
__NOTOC__
In classical field theories, the Lagrangian specification of the flow field is a way of looking at fluid motion where the observer follows an individual fluid parcel as it moves through space and time. Plotting the position of an indiv ...
to an
Eulerian grid through the use of
interpolation functions. After evaluation of the continuum derivative terms, the particle properties are mapped back to the individual particles.
This method has proven to be stable in dense particle flows, computationally efficient,
and physically accurate.
This has allowed the MP-PIC method to be used as particle-flow solver for the simulation of
industrial-scale chemical processes involving particle-fluid flows.
History
The multiphase particle-in-cell (MP-PIC) method was originally developed for a one-dimensional case in the mid-1990s by P.J. O'Rourke (
Los Alamos National Laboratory
Los Alamos National Laboratory (often shortened as Los Alamos and LANL) is one of the sixteen research and development laboratories of the United States Department of Energy (DOE), located a short distance northwest of Santa Fe, New Mexico, i ...
),
who also coined the term MP-PIC. Subsequent extension of the method to two-dimensions was performed by D.M. Snider and O'Rourke.
By 2001, D.M. Snider had extended the MP-PIC method to full three-dimensions.
Currently, the MP-PIC method is used in
commercial software
Commercial software, or seldom payware, is a computer software that is produced for sale or that serves commercial purposes. Commercial software can be proprietary software or free and open-source software.
Background and challenge
While s ...
for the simulation of particle-fluid systems and also available in MFiX suite by NETL.
Method
The MP-PIC method is described by the
governing equations The governing equations of a mathematical model describe how the values of the unknown variables (i.e. the dependent variables) change when one or more of the known (i.e. independent) variables change.
Mass balance
A mass balance, also called ...
,
interpolation operators, and the
particle stress model.
Governing equations
Fluid phase
The multiphase particle-in-cell method assumes an incompressible fluid phase with the corresponding continuity equation,
:
where the
is the fluid volume fraction and
is the fluid velocity. Momentum transport is given by a variation of the
Navier-Stokes equations where
is the fluid density,
is the fluid pressure, and
is the body force vector (gravity).
:
The laminar fluid viscosity terms, not included in the fluid momentum equation, can be included if necessary but will have a negligible effect on dense particle flow. In the MP-PIC method, the fluid motion is coupled with the particle motion through
, the rate of momentum exchange per volume between the fluid and particle phases. The fluid phase equations are solved using a finite volume approach.
Particle phase
The particle phase is described by a
probability distribution
In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomeno ...
function (PDF),
which indicates the likelihood of finding a particle with a velocity
, particle density
, particle volume
at location
and time
. The particle PDF changes in time as described by
:
where
is the particle acceleration.
A numerical solution of the particle phase is obtained by dividing the distribution into a finite number of "computational particles" that each represent a number of real particles with identical mass density, volume, velocity and location. At each time step, the velocity and location of each computational particle are updated using a discretized form of the above equations. The use of computational particles allows for a significant reduction in computational requirements with a negligible impact on accuracy under many conditions. The use of the computational particle in the Multiphase Particle-in-Cell method allows a full particle size distribution (PSD) to be modeled within the system as well as the modeling of polydisperse solids.
Identities of the particle probability distribution function
The following local particle properties are determined from integrating the particle probability distribution function:
*Particle volume fraction:
*Average particle density:
*Mean particle velocity:
Interphase coupling
The particle phase is coupled to the fluid phase through the particle acceleration term,
, defined as
:
In the acceleration term,
is determined from the particle drag model and
is determined from the interparticle stress model.
The momentum of the fluid phase is coupled to the particle phase through the rate of momentum exchange,
. This is defined from the particle population distribution as
:
Interpolation operators
The transfer of particle properties between the Lagrangian particle space and the Eulerian grid is performed using linear interpolation functions. Assuming a
rectilinear grid
A regular grid is a tessellation of ''n''-dimensional Euclidean space by congruent parallelotopes (e.g. bricks).
Its opposite is irregular grid.
Grids of this type appear on graph paper and may be used in finite element analysis, finite volu ...
consisting of rectangular
cuboid
In geometry, a cuboid is a hexahedron, a six-faced solid. Its faces are quadrilaterals. Cuboid means "like a cube", in the sense that by adjusting the length of the edges or the angles between edges and faces a cuboid can be transformed into a cu ...
cells, the scalar particle properties are interpolated to the cell centers while the vector properties are interpolated to cell faces. In three dimensions, tri-linear interpolation functions and definitions for the products and gradients of interpolated properties are provided by Snider for three-dimensional models.
Particle stress model
The effects of particle packing are modeled in the MP-PIC method with the use of a function of particle stress. Snider (2001) has suggested calculating the particle stress
, as
:
where
is the close-pack volume fraction and
,
, and
are constants.
Limitations of the multiphase particle-in-cell method
*Particle shape - In the MP-PIC method, all particles are assumed to be spherical. Corrections for non-spherical particles can be included in particle drag model but for highly non-spherical particles, the true interactions may not be well represented.
*Particle size with respect to grid size - The size of particles must be small compared to the Eulerian grid in the MP-PIC approach for accurate interpolation.
Extensions
*Chemical reactions – Coupling the local Eulerian values for fluid velocity in the MP-PIC method with equations for
diffusional mass transfer allows the transport of a chemical species within the fluid-particle system to be modeled. Reaction kinetics dependent on particle density, surface area, or volume can be included as well for applications in
catalysis
Catalysis () is the process of increasing the rate of a chemical reaction by adding a substance known as a catalyst (). Catalysts are not consumed in the reaction and remain unchanged after it. If the reaction is rapid and the catalyst recycl ...
,
gasification
Gasification is a process that converts biomass- or fossil fuel-based carbonaceous materials into gases, including as the largest fractions: nitrogen (N2), carbon monoxide (CO), hydrogen (H2), and carbon dioxide (). This is achieved by react ...
,
or
solid deposition.
*Liquid Injection - MP-PIC method was extended by Zhao, O'Rourke, and Snider to model the coating of particle with a liquid.
*Thermal Modeling - Conductive and convective heat transfer can be included by coupling MP-PIC variables with equations for heat transfer. Commercial implementations of MP-PIC method include radiative heat transfer as well.
Applications
*Biomass gasifiers
*
Chemical looping combustion
Chemical looping combustion (CLC) is a technological process typically employing a dual fluidized bed system. CLC operated with an interconnected moving bed with a fluidized bed system, has also been employed as a technology process. In CLC, a met ...
(CLC)
*
Circulating fluidized bed combustion
The circulating fluidized bed (CFB) is a type of Fluidized bed combustion that utilizes a recirculating loop for even greater efficiency of combustion. while achieving lower emission of pollutants. Reports suggest that up to 95% of pollutants C ...
*
Coal gasifiers
*
Cyclones
In meteorology, a cyclone () is a large air mass that rotates around a strong center of low atmospheric pressure, counterclockwise in the Northern Hemisphere and clockwise in the Southern Hemisphere as viewed from above (opposite to an ant ...
*
Fluid catalytic cracking reactors and regenerators
*Fluidized bed dryers
*
Fluidized bed reactor
A fluidized bed reactor (FBR) is a type of reactor device that can be used to carry out a variety of multiphase chemical reactions. In this type of reactor, a fluid (gas or liquid) is passed through a solid granular material (usually a catalyst) ...
s
*Liquid-solid settlers
*
Metal casting
In metalworking and jewelry making, casting is a process in which a liquid metal is delivered into a mold (usually by a crucible) that contains a negative impression (i.e., a three-dimensional negative image) of the intended shape. The metal is ...
*Particle jets
*Polysilicon deposition
*Spray coating
Software
*''Barracuda'' b
CPFD Software*''MFiX'' b
NETL
References
{{Reflist, refs=
[Snider, D.M. (2001). An Incompressible Three-Dimensional Multiphase Particle-in-Cell Model for Dense Particle Flows. ''Journal of Computational Physics'', 170:523–549.][Andrews, M.J. and O'Rourke, P.J. (1996). The Multiphase Particle-in-Cell (MP-PIC) Method for Dense Particle Flows. ''International Journal of Multiphase Flow'', 22(2):379–402.][Snider, D.M., O'Rourke, P.J., and Andrews, M.J. (1997). An Incompressible Two-Dimensional Multiphase Particle-In-Cell Model for Dense Particle Flows, NM, LA-17280-MS (Los Alamos National Laboratories, Los Alamos, NM)][Williams, K., Snider, D., Badalassi, V., Reddy Karri, S.B., Knowlton, T.M., and Cocco, R.A. (2006). Computational Particle Fluid Dynamics Simulations and Validation for Cyclones: High and Low Loadings. ''AIChE 2006 National Meeting'' http://aiche.confex.com/aiche/2006/preliminaryprogram/abstract_76001.htm Retrieved Feb. 19, 2011][Snider, D.M., Clark, S.M., O'Rourke, P.J. (2011). Eulerian–Lagrangian method for three-dimensional thermal reacting flow with application to coal gasifiers. ''Chemical Engineering Science'' 66:1285–1295.][Snider, D., Clark, S.(2009). CPFD Eulerian-Lagrangian Method for Three Dimensional Thermal Reacting Flow. ''2009 AIChE National Meeting'', http://www.aicheproceedings.org/2009/Fall/data/papers/Paper149130.html Retrieved Feb 19, 2011][O'Rourke, P.J., Snider, D.M. (2010). An improved collision damping time for MP-PIC calculations of dense particle flows with applications to polydisperse sedimenting beds and colliding particle jets. ''Chemical Engineering Science'', 65:6014–6028.][Williams, K., Snider, D., Guenther, C. (2010) CFD Simulations of the NETL Chemical Looping Experiment, ''AIChE 2010 National Meeting'', http://www.aicheproceedings.org/2010/Fall/data/papers/Paper202402.html Retrieved Feb 8, 2011][Snider, D. and Banerjee, S. (2010). Heterogeneous gas chemistry in the CPFD Eulerian–Lagrangian numerical scheme (ozone decomposition). ''Powder Technology'' 199(1):100–106][Zhao, P., O'Rourke, P.J., Snider, D. Three-dimensional simulation of liquid injection, film formation and transport, in fluidized beds. ''Particuology'' 7:337-346][CPFD Software, LLC. ''Barracuda 14.4 Released''. http://www.cpfd-software.com/news/barracuda_14.4_released Retrieved Feb 8, 2011][Snider, D., Guenther, C., Dalton J., Williams, K. (2010) CPFD Eulerian-Lagrangian Numerical Scheme Applied to the NETL Bench-top Chemical Looping Experiment. ''Proceedings of the 1st International Conference on Chemical Looping''][Cocco, R. and Williams, K. (2004). Optimization of Particle Residence Time Inside Commercial Dryers with Arena-flow. ''AIChE 2004 National Meeting''][Weng, M., Nies, M., and Plackmeyer, J. (2010). Comparison between Measurements and Numerical Simulation of Particle Flow and Combustion at the CFBC Plant Duisburg. ''5. Internationaler VGB-Workshop "Betriebserfahrungen mit Wirbelschichtfeuerungen 2010"''][Snider, D. (2007). Three fundamental granular flow experiments and CPFD predictions. ''Powder Technology'' 176: 36-46.][Schleg, P. (2003). Technology of Metalcasting, ''American Foundry Society'', Des Plaines, IL, pp. 1 and 39.][Blaser, P., and Yeomans, N. (2006). Sand Core Engineering & Process Modeling, ''Japan Foundry Society'', Vol. 2, No. 2, February 2006, pp. 420–427.][Yeomans, N., and Blaser, P. (2006). Predicting the Process, ''Foundry Management & Technology'', January 2006, pp 48–49.][Winartomo, B., Vroomen, U., and Buhrig-Polaczek, A., Pelzer, M. (2005). Multiphase modeling of core shooting processes, ''International Journal of Cast Metals Research'', Vol. 18, No. 1.][Lefebvre, D., Mackenbrock, A., Vidal, V., and Haigh, P. (2005). Development and use of simulation in the design of blown cores and moulds, ''Foundry Trade Journal'', February 2005.][Blaser, P. and Chandran, R. (2009). Computational Simulation of Fluidization Dynamics Inside a Commercial Biomass Gasifier. ''AIChE 2009 Annual Meeting.''][Karimipour, S. and Pugsley, T. (2009). Application of the Particle-in-Cell Approach for the Simulation of Bubbling Fluidized Beds of Geldhart A Particles, ''Seventh International Conference on CFD in the Minerals and Process Industries''.][Sundaresan, S. (2010). Challenges in the Analysis of High-Velocity Gas-Particle Flows in Large Devices, ''University of Houston Neal Amundson Memorial Lecture Series, 2010''.][Parker, J. (2011). Validation of CFD Model for Polysilicon Deposition and Production of Silicon Fines in a Silane Deposition FBR, ''International Journal of Chemical Reactor Engineering'', Vol. 9, A40][Parker, J., LaMarche, K., Chen, W., Williams, K., Stamato, H., Thibault, S. (2013) CFD simulations for prediction of scaling effects in pharmaceutical fluidized bed processors at three scales, ''Powder Technology'', 235: 115-120.]
Numerical differential equations
Computational fluid dynamics