Characterization of Porous Cementitious Materials Using Microscopic Image Processing and X-ray CT Analysis
Abstract
:1. Introduction
2. Materials and Mix Proportions
3. Test Methods for Analyzing the Pore Structures
3.1. Water Absorption Test
3.2. Microscopic Image Processing
3.3. X-ray CT Analysis
4. Experimental Results and Discussion
4.1. Density and Water Absorption Capacity
4.2. Microscopic Image Processing Analysis
4.2.1. Image Binarization Using the Local Thresholding Method
4.2.2. Characteristics of Pores
4.3. X-ray CT Analysis
4.4. Comparative Analysis
5. Conclusions
- In microscopic image processing, the local thresholding method was adopted by considering non-uniform illumination images caused by a lateral light source. As a preliminary study, user-defined parameters of window size and sensitivity were carefully selected as 200 × 200 and 0.5, respectively. Consequently, microscopic image processing was successfully performed and various characteristics of pores were provided using high quality binary images. Furthermore, the linear relationship between the 2D pore ratio and the mean pore diameter was identified.
- X-ray CT analysis was conducted for the representative samples with a wide range of porosities. This 3D tomographic image-based analysis provided various unique characteristics of pores, such as open and closed pores and the distribution of pores in the 3D space. However, a high-resolution 3D tomographic image is required in order to obtain a more accurate analysis on the porous structures.
- To compare the properties of porosity obtained using different testing methods, the relationship of porosity with oven-dried density was investigated. The regression curves obtained for the water permeable porosity and the 3D pore ratio using X-ray CT showed similar trends. On the other hand, the results obtained using microscopic image processing provided a low 2D pore ratio for dense materials and a high 2D pore ratio for porous materials due to both the calculations used and the portion of closed pores that the samples contained.
Author Contributions
Funding
Conflicts of Interest
References
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Label | Mix Proportion (g) | ||||||
---|---|---|---|---|---|---|---|
w/b1 | Water | Cement | Silica Fume | NF2 | AP3 | SP4 | |
PCM1-1 | 0.3 | 660 | 2000 | 200 | 0 | 0 1.1 2.2 | 44.0 |
PCM1-2 | |||||||
PCM1-3 | |||||||
PCM2-1 | 28.6 | 0 1.1 2.2 | |||||
PCM2-2 | |||||||
PCM2-3 | |||||||
PCM3-1 | 85.8 | 0 1.1 2.2 | |||||
PCM3-2 | |||||||
PCM3-3 | |||||||
PCM4-1 | 143.0 | 0 1.1 2.2 | |||||
PCM4-2 | |||||||
PCM4-3 |
Measurement | Label | Aluminum Powder | ||
---|---|---|---|---|
0% | 0.05% | 0.10% | ||
2D Pore Ratio | PCM1 | 4.0% | 35.6% | 43.9% |
PCM2 (NF 1%) | 6.7% | 36.9% | 49.6% | |
PCM3 (NF 3%) | 19.3% | 34.7% | 54.2% | |
PCM4 (NF 5%) | 26.5% | 48.9% | 51.1% | |
Mean Pore Size (µm) | PCM1 | 103.2 | 167.3 | 200.9 |
PCM2 (NF 1%) | 91.7 | 161.0 | 242.1 | |
PCM3 (NF 3%) | 101.7 | 147.4 | 212.9 | |
PCM4 (NF 5%) | 141.2 | 173.3 | 215.0 | |
Total Number of Pores | PCM1 | 3568 | 10,317 | 8397 |
PCM2 (NF 1%) | 8234 | 11,669 | 4914 | |
PCM3 (NF 3%) | 18,421 | 13,384 | 5282 | |
PCM4 (NF 5%) | 10,513 | 7984 | 6023 |
Label | Volume (mm3) | 3D Pore Ratio (Open/Closed) | Mean Pore Size (μm) | ||
---|---|---|---|---|---|
Solid Phase | Closed Pore | Open Pore | |||
PCM1-1 | 114,451 | 5616 | 4933 | 8.4% (3.9%/4.5%) | 3472 |
PCM1-3 | 98,395 | 21,443 | 5162 | 21.3% (4.1%/17.2%) | 3022 |
PCM3-1 | 113,337 | 7325 | 4339 | 9.3% (3.5%/5.9%) | 3357 |
PCM3-3 | 95,860 | 18,312 | 9528 | 23.3% (8.7%/14.6%) | 3604 |
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Yoon, J.; Kim, H.; Sim, S.-H.; Pyo, S. Characterization of Porous Cementitious Materials Using Microscopic Image Processing and X-ray CT Analysis. Materials 2020, 13, 3105. https://doi.org/10.3390/ma13143105
Yoon J, Kim H, Sim S-H, Pyo S. Characterization of Porous Cementitious Materials Using Microscopic Image Processing and X-ray CT Analysis. Materials. 2020; 13(14):3105. https://doi.org/10.3390/ma13143105
Chicago/Turabian StyleYoon, Jinyoung, Hyunjun Kim, Sung-Han Sim, and Sukhoon Pyo. 2020. "Characterization of Porous Cementitious Materials Using Microscopic Image Processing and X-ray CT Analysis" Materials 13, no. 14: 3105. https://doi.org/10.3390/ma13143105
APA StyleYoon, J., Kim, H., Sim, S. -H., & Pyo, S. (2020). Characterization of Porous Cementitious Materials Using Microscopic Image Processing and X-ray CT Analysis. Materials, 13(14), 3105. https://doi.org/10.3390/ma13143105