Experimental Study on the Compaction Characteristics and Evaluation Method of Coarse-Grained Materials for Subgrade
Abstract
:1. Introduction
2. Field Compaction Experiment
2.1. Test Materials
2.2. Measurement of Compaction Degree
3. Results and Analyses
3.1. Practical Observations
3.2. Statistical Analysis of Test Indexes
3.3. Relationships between Measured Parameters
3.4. Compaction Stability
3.5. Spatial Uniformity of Compaction
4. Conclusions
- (1)
- The compaction trend is similar for both the traditional in situ and continuous compaction measurements. When the compaction number is up to a certain value (8th compaction in this study), a further increase in compaction effort could result in the decompaction of material. The dynamic deformation modulus Evd is observed to be more variable than CMV.
- (2)
- The correlations between CMV and in-situ compaction measurements are strong and stable enough by using statistical averaging analysis. A regression formula between CMV and Evd is established to determine the target value of CMV.
- (3)
- The stability analysis proposed in this study will help to quantify the percentage of areas with acceptable compaction and identify the optimum compaction number. The geostatistical analysis reflects the spatial uniformity of compaction. Based on these two criteria, the optimum compaction number (pass 8) is obtained in strip 1.
- (4)
- The stability analysis and spatial uniformity analysis could aid the contractor in identifying poorly compacted areas or areas with highly non-uniform conditions that need additional compaction or other modification. These methods can help to improve the quality of construction, enhance the performance of pavements, and reduce the cost of construction.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Pass No. | Evd | CMV | ||||
---|---|---|---|---|---|---|
Average Value (MPa) | Standard Deviation (MPa) | Variation Parameter COV (%) | Average Value | Standard Deviation | Variation Parameter COV (%) | |
1 | 25.98 | 5.34 | 20.55 | 58.80 | 9.72 | 16.53 |
2 | 29.58 | 6.10 | 20.62 | 75.42 | 9.56 | 12.68 |
3 | 31.59 | 5.83 | 18.46 | 86.88 | 12.76 | 14.69 |
4 | 34.99 | 6.97 | 19.92 | 91.18 | 14.60 | 16.01 |
5 | 35.05 | 6.22 | 17.75 | 95.78 | 13.21 | 13.79 |
6 | 36.84 | 7.76 | 21.06 | 94.90 | 16.85 | 17.76 |
7 | 39.93 | 8.86 | 22.19 | 100.88 | 14.97 | 14.84 |
8 | 41.73 | 7.87 | 18.86 | 104.04 | 15.76 | 15.15 |
9 | 40.05 | 7.28 | 18.18 | 103.28 | 15.98 | 15.47 |
Pass No. | Mean Value, μ (%) | Standard Deviation, σ (%) | Acceptable Compaction Percentage (%) |
---|---|---|---|
2 | 28.30 | 8.25 | 100 |
3 | 15.20 | 7.75 | 97.68 |
4 | 4.52 | 6.72 | 86.46 |
5 | 4.40 | 3.91 | 89.58 |
6 | −0.92 | 11.85 | 58.62 |
7 | 5.97 | 12.33 | 78.43 |
8 | 2.96 | 7.82 | 78.58 |
9 | −0.72 | 8.21 | 62.52 |
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Li, S.; Ye, Y.; Tang, L.; Cai, D.; Tian, S.; Ling, X. Experimental Study on the Compaction Characteristics and Evaluation Method of Coarse-Grained Materials for Subgrade. Materials 2021, 14, 6972. https://doi.org/10.3390/ma14226972
Li S, Ye Y, Tang L, Cai D, Tian S, Ling X. Experimental Study on the Compaction Characteristics and Evaluation Method of Coarse-Grained Materials for Subgrade. Materials. 2021; 14(22):6972. https://doi.org/10.3390/ma14226972
Chicago/Turabian StyleLi, Shanzhen, Yangsheng Ye, Liang Tang, Degou Cai, Shuang Tian, and Xianzhang Ling. 2021. "Experimental Study on the Compaction Characteristics and Evaluation Method of Coarse-Grained Materials for Subgrade" Materials 14, no. 22: 6972. https://doi.org/10.3390/ma14226972
APA StyleLi, S., Ye, Y., Tang, L., Cai, D., Tian, S., & Ling, X. (2021). Experimental Study on the Compaction Characteristics and Evaluation Method of Coarse-Grained Materials for Subgrade. Materials, 14(22), 6972. https://doi.org/10.3390/ma14226972