Submitted:
23 June 2026
Posted:
24 June 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Materials
2.2. Mix Proportions
2.3. Test Methods
2.4. Machine-Learning Models
2.5. Data Preprocessing
2.6. Evaluation Metrics
3. Results and Discussion
3.1. Density and Strength Relationships
3.2. Concrete Properties
3.2.1. Workability
3.2.2. Density
3.2.3. Compressive Strength
3.2.4. Splitting Tensile Strength & Modulus of Rupture
3.3. Model Prediction
3.4. Sensitivity Analysis of Input Variables
4. Limitations and Future Work
5. Conclusions
- Aggregate Replacement Strategy: Fine aggregate replacement (NF series) yielded superior mechanical performance compared to coarse aggregate replacement. This approach effectively reduced the density while minimizing strength loss and improving the tensile-to-compressive strength ratio. The current results present the NF mixture more accurately as a better strength-density compromise compared with mixtures in which the coarse aggregate skeleton is more heavily replaced.
- NF Mixture Performance: Fine aggregate replacement better preserved the load-bearing structure than the coarse aggregate replacement, explaining why the NF mixture maintained a more favorable combination of density reduction, compressive strength, splitting tensile strength, and modulus of rupture. The 100% sand replacement (NF) mix achieved the most favorable balance between the lightweight properties and mechanical strength. Across water-to-binder (w/b) ratios of 0.35 (rich), 0.45 (moderate), and 0.55 (lean), the NF mixtures retained approximately 75–78% of the control density values. Furthermore, the NF series exhibited the highest tensile strength among all evaluated mixtures, with an average reduction of only 20.9% and an enhancement in workability of 3.4%.
- Predictive Modeling: Proposed AI models, including LSTM and various regression algorithms (LR-L, LR-RL), preliminary trends all selected properties of EPS concrete (R2 >0.8), while LR-L and LR-RL offered simpler, more stable hyperparameter spaces suited for small datasets compared to complex deep-learning networks. The modeling analysis demonstrates that for this limited dataset, complex architectures such as BiLSTM do not provide an advantage over simpler statistical methods, highlighting the importance of data-driven model selection. ANN-W exhibited the highest indication accuracy for compressive strength (R2 =0.9978), whereas ANN-N best indicated the splitting tensile strength (R2 = 0.9527), SVM-Q best indicated the MOR (R2 = 0.9758), LR-L best indicated the slump (R2 = 0.9031), and KM-SVM best indicated the density (R2 = 0.9906). Although these models successfully capture the underlying behavioral trends (high mean R2 values), they serve as exploratory proof-of-concept tools rather than generalized predictive frameworks. The sensitivity of the metrics to the limited dataset size highlights the need for further validation using larger and more diverse datasets.
- Interpretability via SHAP: For identifying the influence of the mixing parameters, SHAP analysis identified a higher coarse aggregate replacement as the most critical variable negatively impacting compressive strength, tensile strength, MOR, and density, whereas a higher water-to-binder (w/b) ratio was positively correlated with slump. The analysis provided a transparent view of the model’s decision-making process, which aligned with physical observations within this specific experimental domain.
- Practical Applications and Sustainability: The incorporation of EPS significantly modifies the properties of concrete, necessitating precise adjustments to the mix design to counterbalance its effects. Furthermore, the mixture had good workability and met the ASTM brick standards. In the absence of long-term durability data, such as creep, shrinkage, and fire resistance, these mixtures are currently recommended for non-structural or lightly loaded applications (e.g., partition blocks or lightweight fills). This research provides strategies, an indication tool, and a viable sustainability pathway, contributing to waste mitigation and the development of environmentally friendly materials and paving the way for the widespread and efficient adoption of EPS waste. Future studies should include comprehensive life cycle assessments (LCA) to fully quantify the environmental advantages of EPS adoption.
Author Contributions
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AI | Artificial Intelligence |
| ANNs | Artificial Neural Networks |
| BiLSTM | Bidirectional Long Short-Term Memory |
| R² | Coefficient of Determination |
| CNN | Convolutional Neural Network |
| DT | Decision Tree |
| EL | Efficient Linear |
| EDT | Ensemble Decision Trees |
| EPS | Expanded Polystyrene Styrofoam |
| GPR | Gaussian Process Regression |
| KMs | Kernel Models |
| AI | Artificial Intelligence |
| ANNs | Artificial Neural Networks |
| LR | Linear Regression |
| LSTM | Long Short-Term Memory |
| ML | Machine-Learning |
| MAE | Mean Absolute Error |
| MOR | Modulus of Rupture |
| RNN | Recurrent Neural Network |
| RMSE | Root Mean Square Error |
| SCMs | Supplementary Cementitious Materials |
| SEM | Scanning Electron Microscopy |
| SHAP | Shapley Additive Explanations |
| SVM | Support Vector Machine |
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| Parameter / Oxide | Portland Cement (Type I) | Silica Fume |
|---|---|---|
| Chemical Composition (wt. %): | ||
| Calcium Oxide (CaO) | 63.50% | 0.50% |
| Silicon Dioxide (SiO2) | 20.80% | 92.40% |
| Aluminum Oxide (Al2O3) | 5.20% | 0.60% |
| Iron Oxide (Fe2O3) | 3.40% | 1.20% |
| Magnesium Oxide (MgO) | 2.10% | 0.90% |
| Sulfur Trioxide (SO3) | 2.70% | 0.30% |
| Loss on Ignition (LOI) | 1.80% | 2.50% |
| Physical Properties: | ||
| Specific Gravity | 3.15 | 2.20 |
| Bulk Density (kg/m3) | 1440 | 300 |
| Median Particle Size (d50, μm) | 21.2 | 0.15 |
| Specific Surface Area (cm2/g) | 3750 (Blaine) | 215,000 (BET) |
| Mix ID | Fine aggregate |
Coarse aggregate |
EPS | Cement | Silica fume |
Water | Superplasticizer | w/b |
|---|---|---|---|---|---|---|---|---|
| C-0.35 | 334.6 | 836.5 | 0.0 | 282 | 18 | 105 | 5.6 | 0.35 |
| NF-0.35 | 0.0 | 836.5 | 4.2 | |||||
| R65/35-0.35 | 117.1 | 543.7 | 5.9 | |||||
| R50/50-0.35 | 167.3 | 418.3 | 6.7 | |||||
| R35/65-0.35 | 217.5 | 292.8 | 7.4 | |||||
| M-0.35 | 334.6 | 0.0 | 9.2 | |||||
| C-0.45 | 320.0 | 800.1 | 0.0 | 282 | 18 | 135 | 5.6 | 0.45 |
| NF-0.45 | 0.0 | 800.1 | 4.0 | |||||
| R65/35-0.45 | 112.0 | 520.1 | 5.7 | |||||
| R50/50-0.45 | 160.0 | 400.0 | 6.4 | |||||
| R35/65-0.45 | 208.0 | 280.0 | 7.1 | |||||
| M-0.45 | 320.0 | 0.0 | 8.8 | |||||
| C-0.55 | 304.3 | 760.7 | 0.0 | 282 | 18 | 165 | 5.6 | 0.55 |
| NF-0.55 | 0.0 | 760.7 | 3.8 | |||||
| R65/35-0.55 | 106.5 | 494.4 | 5.4 | |||||
| R50/50-0.55 | 152.1 | 380.3 | 6.1 | |||||
| R35/65-0.55 | 197.8 | 266.2 | 6.8 | |||||
| M-0.55 | 304.3 | 0.0 | 8.4 |
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