Algorithm for Virtual Aggregates’ Reconstitution Based on Image Processing and Discrete-Element Modeling
Abstract
:1. Introduction
2. Image Preprocessing and Shape Measurement
3. Image Preprocessing and Shape Measurement
3.1. Triangle Area Divisions
3.2. Filling Area Judgments
- ①Start the ball generation from Point A with the coordinate of (0, 0);
- ②Determine the variable . It is calculated as the following equation:
- ③Determine the variable h, calculated as shown in Equation (4):
- ④Generate uniform balls with coordinates of (, 0), (, ), (, ), (, ) … until the Y-coordinate exceeds h;
- ⑤Start to generate the next column of balls by cycling from Steps 2–4 until the X-coordinate exceeds .
- ①Start the ball generation from Point A with the coordinate of (0,0);
- ②Determine the variable . It is calculated as Equation (3):
- ③Determine the variable , calculated as shown in Equations (5) and (6):
- ④When , generate uniform balls with coordinates of (, 0), (, 2 rad), (, 4 rad), (, 6 rad) … until the Y-coordinate exceeds ; when , generate uniform balls with the coordinates of (, ), (, ), (, ), (, ) … until the Y-coordinate exceeds ;
- ⑤Start to generate the next column of balls by cycling from Step 2–4 until the X-coordinate exceeds .
3.3. Coordinate Systems’ Conversion
4. Algorithm for Developing Virtual Specimens
4.1. Mapping Area Calculation for Two-Dimensional Specimens
- ①The differences of the densities among particles were not obvious, so the same density value of can be assigned to all the virtual particles in the simulations;
- ②The virtual specimens consist of particles and voids only without any water.
4.2. Generation Process for Virtual Particles with Random Shapes and Sizes
- ①If , only 4.75-mm particles would be generated;
- ②If , only 9.5-mm particles would be generated;
- ③If , only 13.2-mm particles would be generated;
- ④If , only 16-mm particles would be generated;
- ①If , only 4.75-mm particles with the angularity index ranging from 1500–2000 would be generated;
- ②If , only 4.75-mm particles with the angularity index ranging from 2000–2500 would be generated;
- ③If , only 4.75-mm particles with the angularity index ranging from 2500–3000 would be generated;
- ④If , only 4.75-mm particles with the angularity index ranging from 3000–3500 would be generated;
- ⑤If , only 4.75-mm particles with the angularity index ranging from 3500–4000 would be generated;
- ⑥If , only 4.75-mm particles with the angularity index ranging from 4000–4500 would be generated;
4.3. Example of Generating a Virtual Specimen
5. Performance Prediction of the Rebuilt Models
5.1. Experiments
5.2. Simulations for Performance Prediction
6. Conclusions
- (1)
- The scanning images from the AIMS are significant and guarantee the precise modelling of the coarse aggregates. The realistic shapes of the aggregates were captured and quantified through the inner software within AIMS. By generating the balls in the shape contours and then filling the inner area with balls by the proposed triangle-dividing algorithm, the virtual particles could be rebuilt, which had the same shapes as the realistic ones;
- (2)
- The mapping area was calculated to convert the three-dimensional volume to a two-dimensional area. Two random variables drawn from the uniform distribution (0, 1) were utilized to control the particles’ generation randomly. It was shown that the developed virtual specimen had a good accordance with the required gradations with minor errors of 5.51%, 3.86% and 3.70% for the 13.2-, 9.5- and 4.75-mm coarse aggregates, respectively. Thus, not only the particle shape, but also the heterogeneous composition within the structures could be modelled accurately;
- (3)
- Based on the calibrated micro-parameters, the mechanical performance of the aggregate skeleton could be well predicted through the proposed algorithm, which was verified by the virtual penetration test of the coarse aggregate skeleton with the SMA-13 gradation.
Author Contributions
Acknowledgments
Conflicts of Interest
References
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Sample | Angularity | Reduction Scale | Particle Area (m2) |
---|---|---|---|
1 | 2864.41 | 4109.07 | 0.00033 |
2 | 3358.80 | 2882.90 | 0.00040 |
3 | 1803.25 | 1692.92 | 0.00045 |
4 | 2354.54 | 2015.89 | 0.00053 |
5 | 4329.94 | 2174.40 | 0.00038 |
6 | 3641.75 | 1925.21 | 0.00056 |
7 | 2192.07 | 3589.41 | 0.00036 |
8 | 3716.14 | 3527.46 | 0.00043 |
9 | 2040.78 | 4591.80 | 0.00028 |
Sample | Adjustments of X-Coordinate | Adjustments of Y-Coordinate |
---|---|---|
1 | −74.53354 | −100.6707 |
2 | −75.23496 | −103.149 |
3 | −76.80114 | −100.0369 |
4 | −74.9621 | −104.7988 |
5 | −75.26646 | −102.7743 |
6 | −72.68012 | −100.83 |
7 | −78.78299 | −98.05279 |
8 | −74.50542 | −101.9675 |
9 | −80.44268 | −105.0318 |
Gradation | Passing Ratio (%) for Different Sieving Sizes (mm) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
16 | 13.2 | 9.5 | 4.75 | 2.36 | 1.18 | 0.6 | 0.3 | 0.15 | 0.075 | |
SMA-13 | 100 | 95 | 79.5 | 48.9 | 36.7 | 25.8 | 16.7 | 9.7 | 7.1 | 6.5 |
Sieving size (mm) | 13.2 | 9.5 | 4.75 |
Required mapping area () | 11.44 | 35.21 | 70.06 |
Total area of generated particles () | 12.07 | 36.57 | 72.65 |
Error (%) | 5.51 | 3.86 | 3.70 |
Sieving Size (mm) | Particle Density (g/cm3) | Density of Compacted Specimen (g/cm3) | Void Contents of Compacted Specimens (%) |
---|---|---|---|
13.2 | 2.744 | 1.625 | 39.55 |
9.5 | 2.730 | 1.616 | 39.66 |
4.75 | 2.729 | 1.594 | 40.70 |
Size/mm | μ | |||
---|---|---|---|---|
ball | 4.75 | 2.2e6 | 1.5e6 | 0.6 |
9.5 | 2.5e6 | 2.5e6 | 0.55 | |
13.2 | 1.2e6 | 1.2e6 | 0.5 | |
wall | 1e10 | 1e10 | 0.6 |
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Wang, D.; Ding, X.; Ma, T.; Zhang, W.; Zhang, D. Algorithm for Virtual Aggregates’ Reconstitution Based on Image Processing and Discrete-Element Modeling. Appl. Sci. 2018, 8, 738. https://doi.org/10.3390/app8050738
Wang D, Ding X, Ma T, Zhang W, Zhang D. Algorithm for Virtual Aggregates’ Reconstitution Based on Image Processing and Discrete-Element Modeling. Applied Sciences. 2018; 8(5):738. https://doi.org/10.3390/app8050738
Chicago/Turabian StyleWang, Danhua, Xunhao Ding, Tao Ma, Weiguang Zhang, and Deyu Zhang. 2018. "Algorithm for Virtual Aggregates’ Reconstitution Based on Image Processing and Discrete-Element Modeling" Applied Sciences 8, no. 5: 738. https://doi.org/10.3390/app8050738
APA StyleWang, D., Ding, X., Ma, T., Zhang, W., & Zhang, D. (2018). Algorithm for Virtual Aggregates’ Reconstitution Based on Image Processing and Discrete-Element Modeling. Applied Sciences, 8(5), 738. https://doi.org/10.3390/app8050738