Advanced Laguerre Tessellation for the Reconstruction of Ceramic Foams and Prediction of Transport Properties
Abstract
:1. Introduction
2. Materials and Methods
2.1. Reconstruction
2.1.1. Branch Sampling
2.1.2. Branch Sampling
2.1.3. Branch Generation and Allocation
- Let ;
- Let ;
- Let .
2.2. Determination of the Sphere Size Distribution
2.3. Pore and Throat Size Distributions
- A Euclidean distance transform (EDT) is operated on the three-dimensional image matrix. In this case, for each voxel belonging to the void phase, the maximum inscribed sphere radius from the center of the voxel, i.e., the one that touches the solid phase at one point, is assigned to each void voxel.
- For each void voxel, all the previously generated inscribed spheres containing it in full are then indexed. A void voxel is potentially contained in several inscribed spheres from adjacent void voxels. The center and radius of the largest inscribed sphere that fully contains the voxel (the maximum containing sphere, as defined in Dong et al. [37]) is then assigned to this particular voxel.
- Chamber pores are identified. The previous step generates a 3D map of the maximum encompassing sphere radius for each voxel, and the pore chamber attribute is given to the largest contiguous group of voxels with this sphere center and radius. The center of the maximum encompassing sphere radius is assigned as the pore (chamber) center.
- Pore propagation is performed through the encompassing sphere radii originating from the central pore voxels, to map the boundary voxels of each chamber-type pore. For each pore seed, an iterative process that expands the pore boundaries is performed. At each iteration, the 26 closest neighbors of the pore seed voxel are checked and if a neighbor (i) is void, (ii) doesn’t belong to the current pore, or (iii) its maximum inscribed radius is not larger than the maximum inscribed radius of a current boundary voxel, then this neighbor is identified as belonging to the current pore and is included in the list of boundary voxels for the next iteration. Voxels that form the boundary at any current iteration step are considered as boundaries of the pore for the next iteration. The iterations are terminated when the list of boundary voxels is emptied. However, when this iterative process is ended, each voxel can belong to multiple pores—in this case, the shared voxels are treated as pore throats, i.e., as void space connecting the chamber-type pores.
- Watershed segmentation is performed at overlapping chamber-type pore regions. In 3D, the overlapping volume of adjacent spherical pores are larger and often comparable to the individual pores, a property that is often not desirable. As a further issue, this property increases the coordination number of the pores artificially, due to the fact that pores spread largely and have a lot of connections with other pores. A remedy to the problem of having too large coordination numbers is the modification of the algorithm to produce single-pixel thick, shared pixel boundaries by implementing a straightforward watershed algorithm.
2.4. Effective Transport Properties
2.4.1. Effective Diffusivity
2.4.2. Effective Water Permeability Factor
2.5. Permeability and Tortuosity Estimation
2.5.1. Permeability Comparison Using Empirical Expressions
2.5.2. Tortuosity Factor from Analytical Expressions
2.5.3. Specific Surface Area from Analytical Expressions
3. Results
3.1. Extraction of the Cell Diameter
3.2. Domain Reconstructions
3.3. Model Validation
3.4. Pore Size Distribution
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Sample | KC (m2) | KHD (m2) | KDM (m2) | KSIM (m2) | Kexp (m2) [30] |
---|---|---|---|---|---|
PPI8 | 3.99 × 10−8 | 7.02 × 10−8 | 5.79 × 10−8 | 5.4 × 10−8 | 4.61 × 10−8 |
PPI20 | 3.7 × 10−9 | 1.05 × 10−8 | 4.69 × 10−9 | 3.28 × 10−8 | 3.22 × 10−8 |
PPI45 | 4.61 × 10−10 | 2.6 × 10−9 | 3.31 × 10−10 | 7.9 × 10−9 | 8.74 × 10−9 |
Sample | τDP | τR | τsim | τexp [30] |
---|---|---|---|---|
PPI8 | 1.29 | 1.036 | 1.06 | 1.68 |
PPI20 | 1.43 | 1.088 | 1.11 | 1.71 |
PPI45 | 1.62 | 1.28 | 1.268 | 1.84 |
Sample | Sv1 | Sv2 | Sv,recon | Sv,exp [30] |
---|---|---|---|---|
PPI8 | 654 | 562 | 1526 | 1680 |
PPI20 | 2659 | 1992 | 1830 | 1920 |
PPI45 | 8355 | 4921 | 2502 | 2340 |
Sample | de (mm) | KC (m2) | KHD (m2) | KDM (m2) | KSIM (m2) | Kexp [30] |
---|---|---|---|---|---|---|
PPI8 | 1.88 | 2.66 × 10−8 | 4.69 × 10−8 | 3.87× 10−8 | 5.4 × 10−8 | 4.61 × 10−8 |
PPI20 | 1.39 | 1.11 × 10−8 | 3.18 × 10−8 | 1.41 × 10−8 | 3.28 × 10−8 | 3.22 × 10−8 |
PPI45 | 0.54 | 1.03 × 10−9 | 5.86 × 10−9 | 7.46 × 10−10 | 7.9 × 10−9 | 8.74 × 10−9 |
Sample | dh (mm) | KC (m2) | KHD (m2) | KDM (m2) | KSIM (m2) | Kexp [30] |
---|---|---|---|---|---|---|
PPI8 | 2.23 | 3.97 × 10−8 | 6.22 × 10−8 | 5.48× 10−8 | 5.4 × 10−8 | 4.61 × 10−8 |
PPI20 | 1.92 | 2.14 × 10−8 | 6.09 × 10−8 | 2.71 × 10−8 | 3.28 × 10−8 | 3.22 × 10−8 |
PPI45 | 1.31 | 6.37 × 10−9 | 3.45 × 10−9 | 4.43 × 10−10 | 7.9 × 10−9 | 8.74 × 10−9 |
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Stiapis, C.S.; Skouras, E.D.; Burganos, V.N. Advanced Laguerre Tessellation for the Reconstruction of Ceramic Foams and Prediction of Transport Properties. Materials 2019, 12, 1137. https://doi.org/10.3390/ma12071137
Stiapis CS, Skouras ED, Burganos VN. Advanced Laguerre Tessellation for the Reconstruction of Ceramic Foams and Prediction of Transport Properties. Materials. 2019; 12(7):1137. https://doi.org/10.3390/ma12071137
Chicago/Turabian StyleStiapis, Christos S., Eugene D. Skouras, and Vasilis N. Burganos. 2019. "Advanced Laguerre Tessellation for the Reconstruction of Ceramic Foams and Prediction of Transport Properties" Materials 12, no. 7: 1137. https://doi.org/10.3390/ma12071137