Numerical Simulation on Flow Dynamics and Pressure Variation in Porous Ceramic Filter
Abstract
:1. Introduction
2. Numerical Method
2.1. Lattice Boltzmann Method
2.2. Inner Structure of Filter Substrate
2.3. Numerical Domain
3. Results
3.1. Flow Field and Filter Backpressure
3.2. Flow Path Length inside DPF
4. Discussion
5. Conclusions
- (1)
- Inside DPFs, a complex flow pattern appears, with the large flow acceleration and the flow recirculation. In some areas, the maximum filtration velocity is over ten times larger than the inlet velocity of 1 cm/s. It is because the flow forcibly needs to go through the narrow pores along the porous filter wall, resulting in the large filter backpressure. By comparing 5 samples, it can be seen that the resultant pressure drop through the filter wall is smaller when the porosity or the pore size of the filter is larger.
- (2)
- To further discuss the flow field, the path length inside the DPF was estimated quantitatively. We followed the flow trajectory by tracing the particle motion in the fluid. The flow path length ratio to the filter wall thickness was almost the same for all samples, and its value was only 1.2. Therefore, independent of the porous material, the flow path length is almost constant under the present flow conditions.
- (3)
- The filter backpressure closely depends on the flow pattern inside the filter, which is due to the local substrate structure. In the modified filter substrate, by enlarging the pore size and reducing the resistance for the net flow, the pressure drop is largely suppressed. Therefore, when the local porosity is not varied much, the smooth and constant flow could be achieved, ensuring that the large velocity fluctuation is avoided. For the reduction of the filter backpressure, the uniform pore structure is suitable.
Author Contributions
Funding
Conflicts of Interest
Abbreviation
Notation | |
c | advection speed in lattice Boltzmann spacing |
pα | distribution function of pressure |
p | pressure |
t | time |
u | flow velocity of three components, u, v, w |
Uin | inlet velocity |
X | flow direction along the inflow |
Y | direction perpendicular to X |
Z | direction perpendicular to X |
ε | porosity |
ν | kinematic viscosity |
ρ | density |
τ | relaxation time |
Subscripts | |
0 | reference condition at the atmosphere |
in | value at inlet of numerical domain |
p | value of particle |
α | number of advection speed in LB coordinate |
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Sample No. | 1 | 2 | 3 | 4 | 5 |
---|---|---|---|---|---|
Material | Al2TiO5 | Al2TiO5 | Al2TiO5 | SiC | Cordierite |
Porosity, ε (%) | 56 | 50 | 49 | 37 | 60 |
Mean pore size (μm) | 17 | 10 | 17 | 11 | 14 |
Cell density | 230 | 230 | 230 | 300 | 300 |
Wall thickness, δw (μm) | 372 | 351 | 374 | 361 | 265 |
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Yamamoto, K.; Toda, Y. Numerical Simulation on Flow Dynamics and Pressure Variation in Porous Ceramic Filter. Computation 2018, 6, 52. https://doi.org/10.3390/computation6040052
Yamamoto K, Toda Y. Numerical Simulation on Flow Dynamics and Pressure Variation in Porous Ceramic Filter. Computation. 2018; 6(4):52. https://doi.org/10.3390/computation6040052
Chicago/Turabian StyleYamamoto, Kazuhiro, and Yusuke Toda. 2018. "Numerical Simulation on Flow Dynamics and Pressure Variation in Porous Ceramic Filter" Computation 6, no. 4: 52. https://doi.org/10.3390/computation6040052
APA StyleYamamoto, K., & Toda, Y. (2018). Numerical Simulation on Flow Dynamics and Pressure Variation in Porous Ceramic Filter. Computation, 6(4), 52. https://doi.org/10.3390/computation6040052