Optimizing Asphalt Surface Course Compaction: Insights from Aggregate Triaxial Acceleration Responses
Abstract
:1. Introduction
2. SmartRock Sensor
2.1. Composition, Performance, and Data Collection
2.2. Coordinate System Transformation
3. Materials and Experiments
3.1. Materials
3.2. Field Experiment
3.3. Experiment Design
4. Results and Discussions
4.1. Original Triaxial Acceleration Responses
4.2. Filtering of Raw Acceleration
4.3. Variation of Compaction Degree
4.4. Rolling Speed of the Roller
4.5. Acceleration of Aggregates on Both Sides of Vibrating Drum
4.6. Acceleration of Aggregates at the Bottom of Vibrating Drum
4.7. Correlation between Triaxial Acceleration and Compaction Degree
5. Conclusions
- Vertical compression and horizontal shear are the main causes of densification in asphalt mixtures, with vertical compression playing a dominant role. The rolling of steel drums induces a large change in the aggregate acceleration along the rolling direction of rollers, and horizontal shear mainly occurs in the rolling direction.
- The compaction process can be divided into three phases: initial compaction, mid-term compaction, and compaction stabilization. Under the compacted conditions and materials of the paper, the optimal number of vibratory rolling passes for the top, middle, and bottom surface courses are the fourth, sixth, and sixth pass, respectively.
- The vibration waves gradually attenuate on both sides of the vibrating drum as the propagation distance increases, showing a trend of normal distribution. The thickness and gradation of the asphalt surface course have a significant impact on the vibration acceleration, and decreasing the thickness and gradation will result in a decrease in the aggregate acceleration.
- The acceleration indicators representing the compactness of the middle, bottom surface courses lag behind the compaction degree indicators, and the changes in aggregate acceleration can serve as indicators for evaluating the variation of the skeleton structure and compaction conditions.
- There is a linear correlation between the triaxial acceleration of aggregates and compaction degree of asphalt mixtures. The vertical direction of aggregate acceleration has the strongest correlation with compaction degree, and it is recommended to use the linear correlation formula (compaction degree = a − b × vertical acceleration amplitude, where a and b are fitting parameters) between vertical acceleration and compaction degree to predict the compaction degree. Furthermore, the slope of the fitting curve can serve as an indicator of the difficulty in forming the compacted skeleton structure and compaction stability of the mixture.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Mixture Type | Optimal Asphalt Content (%) | VMA (%) | VFA (%) |
---|---|---|---|
AC-13C | 4.9 | 14.6 | 69.5 |
AC-20C | 4.3 | 12.3 | 67.6 |
AC-25C | 3.8 | 12.2 | 65.4 |
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Zhang, Z.; Dan, H.; Li, S.; Li, W. Optimizing Asphalt Surface Course Compaction: Insights from Aggregate Triaxial Acceleration Responses. Materials 2023, 16, 7239. https://doi.org/10.3390/ma16227239
Zhang Z, Dan H, Li S, Li W. Optimizing Asphalt Surface Course Compaction: Insights from Aggregate Triaxial Acceleration Responses. Materials. 2023; 16(22):7239. https://doi.org/10.3390/ma16227239
Chicago/Turabian StyleZhang, Zhi, Hancheng Dan, Songlin Li, and Wenfeng Li. 2023. "Optimizing Asphalt Surface Course Compaction: Insights from Aggregate Triaxial Acceleration Responses" Materials 16, no. 22: 7239. https://doi.org/10.3390/ma16227239