Effect of Smart Aggregate Size on Mesostructure and Mechanical Properties of Asphalt Mixtures
Abstract
:1. Introduction
2. Materials and Methods
2.1. Asphalt and Asphalt Mixture
2.1.1. Conventional Properties of Asphalt Binders
2.1.2. Gradation and Basic Properties of Asphalt Mixtures
2.1.3. Dynamic Modulus Test of Asphalt Mixtures
2.2. Establishment of Discrete Element Model for Asphalt Mixture
2.2.1. Establishment and Placement of Coarse and Smart Aggregates
2.2.2. Placement of Asphalt Mortar
- (1)
- Replacing the mortar with equal volumes of equal-diameter ball particles increases the overall volume of the mortar.
- (2)
- Using a diameter reduction factor (DRF) minimizes the overall volume-increasing effect of replacing the asphalt mortar with ball particles.
- (3)
- Considering the multiple volumetric indicators and contact characteristics of the mix, including particle overlap ratio, number of ball–wall contacts, and average wall stress, the DRF is recommended to be in the range of 0.8 to 0.86 in terms of both computational efficiency and accuracy.
2.2.3. Conversion of Macro-Micro Parameters in Discrete Element Models
2.2.4. Compaction of Discrete Element Specimens of Asphalt Mixtures
2.3. Void Distribution Contour Map of the Asphalt Mixtures
2.3.1. Void Distribution Contour Map in the Longitudinal Section
2.3.2. Void Distribution Contour Map in the Transverse Section
3. Results and Discussion
3.1. Verification of Discrete Element Model for Asphalt Mixture
3.2. Effect of Smart Aggregate Size on the Mesostructure of Asphalt Mixtures
- (1)
- With the increase in smart aggregate size, the mean void ratio in the longitudinal sections of asphalt mixture specimens embedded with three different sizes of smart aggregates are 37.86%, 30.59%, and 28.86%, respectively. Compared to the specimen without embedded smart aggregates, the variations are −5.25%, −23.45%, and −27.78%, respectively. The minimum values are 13.39%, 2.81%, and 2.16%, while the maximum values are 81.35%, 88.54%, and 89.63%, with standard deviations of 16.68, 19.78, and 22.86, respectively. These results indicate that as the size of the smart aggregates increases, the mean void ratio in the contour map decreases. It is inferred that the presence of smart aggregates within the selected section reduces the overall void ratio. However, the difference between the minimum and maximum void ratios increases, suggesting that the non-uniformity of the void distribution also increases.
- (2)
- With the increase in smart aggregate size, the mean void ratios in the transverse sections of asphalt mixture specimens embedded with three different sizes of smart aggregates are 38.90%, 29.01%, and 24.23%, respectively. Compared to the specimen without embedded smart aggregates, these values decreased by 12.24%, 34.57%, and 45.33%, respectively. The minimum values are 13.41%, 4.78%, and 2.83%, while the maximum values are 81.35%, 88.54%, and 89.63%, with standard deviations of 19.76, 20.46, and 27.11, respectively. The distribution results of the void ratio contour maps in the transverse sections show a trend similar to that observed in the longitudinal sections, with an even greater impact on the non-uniformity in the transverse sections.
3.3. Effect of Smart Aggregate Size on the Mechanical Properties of Asphalt Mixtures
3.3.1. Effect of Smart Aggregate Size on the Dynamic Modulus of Asphalt Mixtures
3.3.2. Internal Strain Rate of Asphalt Mixtures
4. Conclusions
- As the size of the smart aggregate increases, the average void ratio in the longitudinal section of the asphalt mixture decreases by 5.25%, 23.45%, and 27.78%, as compared to that of the specimen without embedded smart aggregate. With the increase in the smart aggregate, the average void ratio in the transverse section decreased by 12.24%, 34.57%, and 45.33%. Overall, the average void ratio of asphalt mixture decreases with increasing smart aggregate size, but the inhomogeneity of void distribution increases, and the void structure in the transverse section is more affected by the smart aggregates.
- At 25 °C, 25 Hz, the dynamic modulus of the asphalt mixtures decreased by 5.53%, 10.75%, and 13.72%, compared to the specimens without embedded smart aggregates. At 0.1 Hz, the dynamic modulus of the asphalt mixture decreased by 1.71%, 8.76%, and 9.81%, compared to the specimens without embedded smart aggregate. Overall, this reduction effect increased with the increase in the size of smart aggregates and also with the increase in the loading frequency.
- The lack of asphalt coating on the surface of the smart aggregate influenced the internal strain of the asphalt mixture. Under the peak load of a semi-sine wave, the strain rate in the z-axis direction of the asphalt mixture decreased compared to the specimen without embedded smart aggregate, indicating that the smart aggregates partially inhibit the downward deformation of the specimen. However, the strain rate of the asphalt mixture increases in the x, y cross section. As the size of the smart aggregates increases, these effects become more pronounced. Overall, the increase in transverse strain is the primary reason for the decrease in the overall dynamic modulus of the asphalt mixture specimens.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Test parameters | Results | Testing methods |
---|---|---|
Penetration (25 °C, 100 g, 5 s, 0.1 mm) | 68.1 | ASTM D5/D5M [28] |
Softening point (°C) | 49.8 | ASTM D36/36M [29] |
Ductility (5 cm/min, 15 °C, cm) | >100 | ASTM D113 [30] |
Ductility (5 cm/min, 10 °C, cm) | 53 | ASTM D113 [30] |
60 °C dynamic viscosity (Pa·s) | 195 | ASTM D2171 [31] |
Flashpoint (°C) | 295 | ASTM D92 [32] |
Solubility (trichloroethylene, %) | 99.5 | ASTM D2042 [33] |
Density (g/cm3) | 1.031 | ASTM D70 [34] |
Test Items | Bulk Density (g/cm3) | Air Voids (%) | Water Absorption (%) | Marshall Stability (kN) | Flow Value (mm) |
---|---|---|---|---|---|
Results | 2.465 | 4.6 | 0.81 | 10.95 | 4.45 |
Viscoelastic Parameters | E1 (GPa) | η1 (MPa·s) | E2 (MPa) | η2 (MPa·s) |
---|---|---|---|---|
Results | 21.830 ± 0.32 | 0.544 ± 0.08 | 5.555 ± 0.12 | 0.182 ± 0.04 |
Viscoelastic Parameters | E1 (GPa) | η1 (MPa·s) | E2 (MPa) | η2 (MPa·s) |
---|---|---|---|---|
Results | 125.196 ± 0.37 | 108.568 ± 0.05 | 80.752 ± 0.22 | 0.856 ± 0.06 |
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Li, Y.; Mao, C.; Sun, M.; Hong, J.; Zhao, X.; Li, P.; Xiao, J. Effect of Smart Aggregate Size on Mesostructure and Mechanical Properties of Asphalt Mixtures. Coatings 2024, 14, 1238. https://doi.org/10.3390/coatings14101238
Li Y, Mao C, Sun M, Hong J, Zhao X, Li P, Xiao J. Effect of Smart Aggregate Size on Mesostructure and Mechanical Properties of Asphalt Mixtures. Coatings. 2024; 14(10):1238. https://doi.org/10.3390/coatings14101238
Chicago/Turabian StyleLi, Yupeng, Chengxin Mao, Mengyang Sun, Jinlong Hong, Xin Zhao, Pengfei Li, and Jingjing Xiao. 2024. "Effect of Smart Aggregate Size on Mesostructure and Mechanical Properties of Asphalt Mixtures" Coatings 14, no. 10: 1238. https://doi.org/10.3390/coatings14101238
APA StyleLi, Y., Mao, C., Sun, M., Hong, J., Zhao, X., Li, P., & Xiao, J. (2024). Effect of Smart Aggregate Size on Mesostructure and Mechanical Properties of Asphalt Mixtures. Coatings, 14(10), 1238. https://doi.org/10.3390/coatings14101238