Performance Prediction and Optimization of High-Plasticity Clay Lime–Cement Stabilization Based on Principal Component Analysis and Principal Component Regression
Abstract
1. Introduction
2. Materials and Method
2.1. Specimen Preparation
Method of the Test
2.2. Principal Component Regression (PCR) Method
2.2.1. Data Preprocessing
2.2.2. Standardization
2.2.3. Principal Component Analysis (PCA)
2.2.4. Eigenvalue Decomposition
2.2.5. Principal Components (PC)
2.2.6. Principal Component Regression (PCR)
2.3. Sensitivity Analysis via Principal Component Regression
2.4. Causality Analysis Using Principal Component Regression
3. Consolidation Properties
3.1. Effects of Lime–Cement Stabilization on the Void Ratio and Porosity of the Clay Soil
3.2. Principal Component Analysis of Soil Stabilization Effects on Void Ratio and Porosity
3.3. Effects of Lime–Cement Stabilization on the Preconsolidation Stress of the Clay Soil
3.4. Principal Component Analysis of Pre-Consolidation Stress in Stabilized Soil
3.5. Effects of Lime–Cement Stabilization on the Compression Index of the Clay Soil
3.6. Principal Component Analysis of Compression Index in Stabilized Soil
3.7. Effects of Lime–Cement Stabilization on the Compressibility Modulus of the Clay Soil
3.8. Principal Component Analysis of Compressibility Modulus in Stabilized Soil
4. Strength Properties
4.1. Unconfined Compressive Strength of Lime–Cement Stabilized Clay Soil
4.2. Effects of Lime–Cement Stabilization on the Resistance to Loss in Strength of the Clay Soil
4.3. Principal Component Analysis of UCS in Stabilized Soil
5. Principal Component Regression Analysis
5.1. Effects of Lime–Cement Stabilization on the Principal Component Regression (PCR) in the Strength of the Clay Soil
5.2. Analysis of Principal Component Through Sensitivity Analysis for Unconfined Compressive Strength
Analysis of Principal Component Loadings in Soil Stabilization
5.3. Principal Component Regression Sensitivity Analysis for Unconfined Compressive Strength
5.4. Causality Analysis Using Principal Component Regression (PCR)
6. Conclusions
- The combination of 6% cement and 15% lime (by dry soil weight) yielded maximum improvements: UCS increased by 222.5% to 2670 kPa at 28 days, void ratio decreased by 58% to 0.25, porosity decreased by 49.5% to 0.19, pre-consolidation stress increased by 206% to 1088.92 kPa, and the compression index decreased by 58% to 0.20, and the compressibility modulus increased by 16% to 10,474.28 kPa compared to untreated soil (779 kPa UCS, 0.60 void ratio, 0.38 porosity, 355.63 kPa preconsolidation stress, 0.48 compression index, and 7048 kPa compressibility modulus).
- A single principal component (PC1) explained the vast majority of variance in key consolidation parameters: 90.33% for void ratio, 98.32% for porosity, 99.32% for pre-consolidation stress, 99.75% for compression index, and 99.89% for compressibility modulus. This overwhelmingly indicates that the combined lime and cement stabilizer content is the primary driver of microstructural modification and densification, with secondary factors contributing minimally.
- The PCR model achieved an R2 of 0.700 and an RMSE of 103.4 kPa for UCS prediction. The PCR causality model showed marked improvement in predictive accuracy with curing time, with R2 increasing from 0.687 at 7 days to 0.830 at 28 days, while RMSE decreased from 11.2 kPa to 7.8 kPa. Sensitivity analysis identified soil compressibility characteristics (PC1: void ratio, porosity, compression index) as the dominant influence on UCS (46% variance explained, β = −170.70 at 28 days), with its negative effect intensifying progressively from β = −76.84 at 7 days to β = −170.70 at 28 days, confirming that reduced compressibility is the primary causal mechanism for strength gain.
- The most significant UCS gain occurred between 7 and 14 days under optimal stabilization (15% lime, 6% cement), increasing by 40.4% (1584.62 kPa to 2250.42 kPa), compared to only an 18.5% increase from 14 to 28 days (2250.42 kPa to 2670 kPa). Concurrently, the PCR model’s explanatory power (R2) improved from 68.7% at 7 days to 83.0% at 28 days, indicating that soil-stabilizer interactions become more deterministic and predictable with extended curing.
- Resistance to strength loss, evaluated after 7 days of soaking following 7 days of curing compared to 14-day cured strength, increased substantially from only 9% for untreated soil to 76% for soil stabilized with the optimal combination (15% lime, 6% cement). This demonstrates the effectiveness of the formed cementitious bonds (C-S-H, C-A-H gels) in creating a water-resistant soil matrix with enhanced long-term performance under adverse environmental conditions.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Property | Soil | Lime | Cement |
---|---|---|---|
General Properties | |||
Color | Brown | White | – |
Specific Gravity | 2.53 | 2.36 | 3.13 |
pH | 5.31 | 12.1 | 13 |
Composition/Gradation | |||
Gravel/Sand/Silt + Clay (%) | 0/25.9/74.1 | – | – |
Dominant Clay Mineral | Montmorillonite | – | – |
Engineering Properties | |||
Liquid Limit/Plastic Limit/Plasticity Index/Linear Shrinkage/Free Swelling (%) | 66/24/42/18.52/71.1 | – | – |
Optimum Moisture (%)/Max Dry Density (kN/m3) | 21/16.7 | – | – |
UCS (kPa) | 0.779 | – | 29.1 (3 days) |
CBR (unsoaked, %) | 8.2 | – | – |
Material-Specific Properties | |||
USCS Classification | CH | – | – |
Melting point/Boiling point (°C) | – | 2547/2894 | – |
Fineness (µm) | – | 368 | 362 |
Setting Time (min) | – | – | 33.4 (Initial)/242 (Final) |
Bulk Density (kg/m3) | – | 555 | 1101 |
Soundness (mm) | – | – | 0.38 |
Chemical Constituent | Composition of Cement (%) | Composition of Lime (%) |
---|---|---|
SiO2 | 19.3 | 3.5 |
Al2O3 | 3.67 | 1.25 |
Fe2O3 | 3.44 | 1.14 |
Na2O | 0.26 | |
K2O | 0.78 | 0.09 |
CaO | 62.62 | 50.5 |
TiO2 | 0.597 | |
PbO | 0 | |
MgO | 3.39 | 1.21 |
SO3 | 3.21 | |
SrO2 | - | |
P2O5 | 0.0897 | |
NiO2 | - | |
MnO | 0.237 | 0.05 |
ZnO | - | |
CuO | - | |
Cr2O3 | - | |
BaO | 0 | |
Cl | 0.03 | |
LOI | 2.38 | 42.32 |
Principal Component | Regression Coefficient | Variance Contribution (%) | Sensitivity Ranking |
---|---|---|---|
PC1 (soil compressibility) | 0.72 | 46% | High Sensitivity |
PC2 (modulus vs. pre-consolidation stress) | 0.51 | 20% | Moderate Sensitivity |
PC3 (pre-consolidation stress) | −0.32 | 15% | Low Sensitivity |
PC4 (porosity and compression index) | 0.18 | 12% | Minor Impact |
PC5 (void ratio and compression index) | −0.08 | 7% | Negligible Impact |
Curing Time | R2 (Model Fit) | Significant Principal Components (p < 0.05) | Most Influential Factor |
---|---|---|---|
7 Days | 0.687 (68.7%) | PC1 (−76.84, p < 0.001) | Soil Compressibility and Porosity |
14 Days | 0.688 (68.8%) | PC1 (−139.96, p < 0.001) | Porosity and Stiffness |
28 Days | 0.830 (83.0%) | PC1 (−170.70, p < 0.001) | Soil Strength and Compaction |
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Umar, I.H.; Tarauni, Z.A.; Bello, A.B.; Lin, H.; Hassan, J.I.; Cao, R. Performance Prediction and Optimization of High-Plasticity Clay Lime–Cement Stabilization Based on Principal Component Analysis and Principal Component Regression. Appl. Sci. 2025, 15, 7150. https://doi.org/10.3390/app15137150
Umar IH, Tarauni ZA, Bello AB, Lin H, Hassan JI, Cao R. Performance Prediction and Optimization of High-Plasticity Clay Lime–Cement Stabilization Based on Principal Component Analysis and Principal Component Regression. Applied Sciences. 2025; 15(13):7150. https://doi.org/10.3390/app15137150
Chicago/Turabian StyleUmar, Ibrahim Haruna, Zaharaddeen Ali Tarauni, Abdullahi Balarabe Bello, Hang Lin, Jubril Izge Hassan, and Rihong Cao. 2025. "Performance Prediction and Optimization of High-Plasticity Clay Lime–Cement Stabilization Based on Principal Component Analysis and Principal Component Regression" Applied Sciences 15, no. 13: 7150. https://doi.org/10.3390/app15137150
APA StyleUmar, I. H., Tarauni, Z. A., Bello, A. B., Lin, H., Hassan, J. I., & Cao, R. (2025). Performance Prediction and Optimization of High-Plasticity Clay Lime–Cement Stabilization Based on Principal Component Analysis and Principal Component Regression. Applied Sciences, 15(13), 7150. https://doi.org/10.3390/app15137150