CFD-DEM Study of Bridging Mechanism of Particles in Ceramic Membrane Pores under Surface Filtration Conditions
Abstract
:1. Introduction
2. Model and Methods
2.1. Numerical Models
2.1.1. Fluid Phase Equation
2.1.2. Particle Phase Equation
2.2. Geometry and Computational Domain
2.3. Boundary Conditions and Parameter Settings
3. Results and Discussion
3.1. Bridging Process
3.2. Effect of Suspension Concentration on Bridging Process
3.3. Influence of Inlet Velocity on Bridging Process
4. Conclusions
- (1)
- Particle bridging is a continuous and dynamic process. In the early filtration stage, the deposited particles are uniformly deposited on the ceramic membrane surface. As the filtration process progresses, the deposits extend into the membrane pores to form a dendritic-like structure and continue to develop until they are connected to form bridges in the membrane pores.
- (2)
- At a constant inlet velocity, the bridging time of particles decreases with increasing particle concentration, and the decrease is smaller and smaller. However, decreasing particle bridging time does not result in an increased filtration efficiency. An increase in particle concentration will cause more particles to flow through the pores before bridging is complete, decreasing filtration efficiency. Therefore, the particle concentration should be reasonably selected to achieve high-efficiency filtration in the actual filtration process. Furthermore, there was no apparent relationship between the average porosity of the filter cake, particle bridge porosity, and interference resistance and the particle concentration.
- (3)
- At a constant particle generation rate, the particle bridging time and filtration efficiency are related to the inertial collision of particles and the scouring effect of the fluid. When the inlet velocity is , the inertial collision of particles dominates, so the bridging time and filtration efficiency increase with the increase in inlet velocity. When the inlet velocity is , the inertial collision of particles and the scouring effect of the fluid are counteracted, so that the bridging time and filtration efficiency no longer change with the inlet velocity. When the inlet velocity , the scouring effect of the fluid is more prominent, resulting in the failure to form the bridge and the filtration efficiency first increases and then decreases with the inlet velocity. In addition, when the inlet velocity is , the pressure drop increases with increasing inlet velocity. The inlet velocity also affects the interference resistance of the filter media. As the inlet velocity increases, the particles pack more tightly on the ceramic membrane, leading to an increase in the interference resistance.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Physical Parameters | Value | Unit | |
---|---|---|---|
Fluid viscosity | 1.79 × 10−5 | Pa·s | |
Gas phase | Fluid density | 1.23 | kg/m3 |
Time step | 1 × 10−7 | s | |
Particle radius | 1 | μm | |
Particle mass density | 1451 | kg/m3 | |
Particle phase | Shear modulus | 2 × 107 | Pa |
Poisson’s ratio | 0.25 | - | |
Time step | 1 × 10−9 | s | |
Membrane density | 3100 | kg/m3 | |
Membrane | Shear modulus | 7 × 1010 | Pa |
Poisson ratio | 0.2 | - |
Collision Parameters | Coefficient of Restitution | Coefficient of Static Friction | Coefficient of Rolling Friction | Surface Energy (J/m2) |
---|---|---|---|---|
Particle–particle | 0.3 | 0.15 | 0.05 | 0.085 |
Particle–membrane | 0.3 | 0.15 | 0.05 | 0.1 |
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Wang, H.; Wu, J.; Fu, P.; Qu, Z.; Zhao, W.; Song, Y. CFD-DEM Study of Bridging Mechanism of Particles in Ceramic Membrane Pores under Surface Filtration Conditions. Processes 2022, 10, 475. https://doi.org/10.3390/pr10030475
Wang H, Wu J, Fu P, Qu Z, Zhao W, Song Y. CFD-DEM Study of Bridging Mechanism of Particles in Ceramic Membrane Pores under Surface Filtration Conditions. Processes. 2022; 10(3):475. https://doi.org/10.3390/pr10030475
Chicago/Turabian StyleWang, Hao, Junfei Wu, Ping Fu, Zhiping Qu, Wenjie Zhao, and Yixuan Song. 2022. "CFD-DEM Study of Bridging Mechanism of Particles in Ceramic Membrane Pores under Surface Filtration Conditions" Processes 10, no. 3: 475. https://doi.org/10.3390/pr10030475