Skip to content

Optimizing Rheological Properties of 3D Printed Cementitious Materials via Ensemble Machine Learning (2025-07)

10.1016/j.addma.2025.104889

 Zafar Muhammad,  Javadnejad Farid,  Hojati Maryam
Journal Article - Additive Manufacturing, No. 104889

Abstract

The complex interaction between rheology-modifying admixtures and fresh cementitious mix printability limits 3D printing applications in construction. To optimize the properties of 3D printable concrete, this study presents a machine learning (ML)-based, knowledge-guided framework that integrates data-driven modeling with expert validation. A structured workflow uses a small dataset to predict and refine optimal mix designs. A total of 77 lab samples were prepared with varying amounts of nano-clay (NC), silica fume (SF), bentonite volclay (BC), and methylcellulose (MC). Their rheological properties, including plastic viscosity (VIS), dynamic yield stress (DYS), and static yield stress (SYS), were measured using a rheometer. Ensemble ML models were developed through automated preprocessing, cross-validated hyperparameter tuning, and RMSE-based selection. The top five models per rheological responses were combined using a voting regressor, improving predictive accuracy while mitigating overfitting. Predictions were visualized using contour maps from gridded synthetic data, revealing nonlinear interactions among input features. A key innovation is applying expert ratings to contour maps to guide the selection of high-performing mixes. This step allows domain knowledge to define acceptable printability ranges and helps address ML uncertainty from limited training data. Optimized mixes were selected based on rating maps and re-evaluated through additional rheology and 3D printing tests. The results demonstrated that the mixes met satisfactory extrudability and buildability requirements, confirming the validity of the defined expert rating criteria and the practical utility of the framework in optimizing 3D printable concrete mixes containing the defined additives. The proposed approach ensures both predictive robustness and practical applicability. It enables iterative refinement of models as new data becomes available and offers a systematic approach to navigating complex mix interactions. Overall, combining ensemble modeling, contour visualization, and knowledge-driven evaluation provides a powerful tool for advancing 3D concrete printing mix design.

37 References

  1. Ali Ammar, Riaz Raja, Malik Umair, Abbas Syed et al. (2023-06)
    Machine-Learning-Based Predictive-Model for Tensile and Flexural Strength of 3D Printed Concrete
  2. Alyami Mana, Khan Majid, Fawad Muhammad, Nawahz R. et al. (2023-11)
    Predictive Modeling for Compressive Strength of 3D Printed Fiber-Reinforced Concrete Using Machine Learning Algorithms
  3. Bakhshi Amir, Zafar Muhammad, Hojati Maryam (2025-02)
    A Study on Achieving High Tensile Ductility in 3D-Printable Engineered Cementitious Composites Reinforced with 8mm Fibers
  4. Chen Mingxu, Li Laibo, Wang Jiaao, Huang Yongbo et al. (2019-10)
    Rheological Parameters and Building Time of 3D Printing Sulphoaluminate-Cement-Paste Modified by Retarder and Diatomite
  5. Chen Mingxu, Li Laibo, Zheng Yan, Zhao Piqi et al. (2018-09)
    Rheological and Mechanical Properties of Admixtures-Modified 3D Printing Sulphoaluminate Cementitious Materials
  6. Chen Mingxu, Liu Bo, Li Laibo, Cao Lidong et al. (2020-01)
    Rheological Parameters, Thixotropy and Creep of 3D Printed Calcium-Sulfoaluminate-Cement Composites Modified by Bentonite
  7. Davtalab Omid, Kazemian Ali, Yuan Xiao, Khoshnevis Behrokh (2020-10)
    Automated Inspection in Robotic Additive Manufacturing Using Deep Learning for Layer Deformation Detection
  8. Heras Murica Daniel, Genedy Moneeb, Taha Mahmoud (2020-09)
    Examining the Significance of Infill-Printing-Pattern on the Anisotropy of 3D Printed Concrete
  9. Hojati Maryam, Li Zhanzhao, Memari Ali, Park Keunhyoung et al. (2022-01)
    3D Printable Quaternary-Cementitious-Materials Towards Sustainable Development:
    Mixture Design and Mechanical Properties
  10. Izadgoshasb Hamed, Kandiri Amirreza, Shakor Pshtiwan, Laghi Vittoria et al. (2021-11)
    Predicting Compressive Strength of 3D Printed Mortar in Structural Members Using Machine Learning
  11. Kaushik Sandipan, Sonebi Mohammed, Amato Giuseppina, Das Utpal et al. (2023-02)
    Optimization of Mix Proportion of 3D Printable Mortar Based on Rheological Properties and Material-Strength Using Factorial Design of Experiment
  12. Kazemian Ali, Yuan Xiao, Cochran Evan, Khoshnevis Behrokh (2017-04)
    Cementitious Materials for Construction-Scale 3D Printing:
    Laboratory Testing of Fresh Printing Mixture
  13. Khalil Noura, Aouad Georges, Cheikh Khadija, Rémond Sébastien (2017-09)
    Use of Calcium-Sulfoaluminate-Cements for Setting-Control of 3D Printing Mortars
  14. Le Thanh, Austin Simon, Lim Sungwoo, Buswell Richard et al. (2012-01)
    Mix-Design and Fresh Properties for High-Performance Printing Concrete
  15. Lu Bing, Weng Yiwei, Li Mingyang, Qian Ye et al. (2019-02)
    A Systematical Review of 3D Printable Cementitious Materials
  16. Mai (née Dressler) Inka, Freund Niklas, Lowke Dirk (2020-01)
    The Effect of Accelerator Dosage on Fresh Concrete Properties and on Inter-Layer Strength in Shotcrete 3D Printing
  17. Mendoza Reales Oscar, Duda Pedro, Silva Emílio, Paiva Maria et al. (2019-06)
    Nanosilica-Particles as Structural Buildup Agents for 3D Printing with Portland Cement-Pastes
  18. Qian Ye, Kawashima Shiho (2016-09)
    Use of Creep Recovery Protocol to Measure Static Yield-Stress and Structural Rebuilding of Fresh Cement-Pastes
  19. Qian Ye, Schutter Geert (2018-06)
    Enhancing Thixotropy of Fresh Cement-Pastes with Nano-Clay in Presence of Polycarboxylate-Ether Superplasticizer (PCE)
  20. Rahul Attupurathu, Santhanam Manu, Meena Hitesh, Ghani Zimam (2018-12)
    3D Printable Concrete:
    Mixture-Design and Test-Methods
  21. Rubin Ariane, Hasse Jéssica, Repette Wellington (2021-01)
    The Evaluation of Rheological Parameters of 3D Printable Concretes and the Effect of Accelerating-Admixture
  22. Schossler Rodrigo, Ullah Shafi, Alajlan Zaid, Yu Xiong (2025-01)
    Data-Driven Analysis in 3D Concrete Printing:
    Predicting and Optimizing Construction Mixtures
  23. Sedghi Reza, Rashidi Kourosh, Hojati Maryam (2024-01)
    Large-Scale 3D Wall Printing:
    From Concept to Reality
  24. Siddika Ayesha, Mamun Md., Ferdous Wahid, Saha Ashish et al. (2019-12)
    3D Printed Concrete:
    Applications, Performance, and Challenges
  25. Soltan Daniel, Li Victor (2018-03)
    A Self-Reinforced Cementitious Composite for Building-Scale 3D Printing
  26. Tay Yi, Li Mingyang, Tan Ming (2019-04)
    Effect of Printing Parameters in 3D Concrete Printing:
    Printing Region and Support Structures
  27. Tripathi Avinaya, Nair Sooraj, Neithalath Narayanan (2022-01)
    A Comprehensive Analysis of Buildability of 3D Printed Concrete and the Use of Bi-Linear Stress-Strain Criterion-Based Failure Curves Towards Their Prediction
  28. Uddin Md, Ye Junhong, Deng Boyu, Li Lingzhi et al. (2023-04)
    Interpretable Machine Learning for Predicting the Strength of 3D Printed Fiber-Reinforced Concrete
  29. Weng Yiwei, Li Mingyang, Tan Ming, Qian Shunzhi (2018-01)
    Design 3D Printing Cementitious Materials via Fuller-Thompson-Theory and Marson-Percy-Model
  30. Zafar Muhammad, Bakhshi Amir, Hojati Maryam (2022-09)
    Toward 3D Printable Engineered Cementitious Composites:
    Mix-Design Proportioning, Flowability, and Mechanical Performance
  31. Zafar Muhammad, Bakhshi Amir, Hojati Maryam (2023-10)
    Printability and Shape Fidelity Evaluation of Self-Reinforced Engineered Cementitious Composites
  32. Zafar Muhammad, Shahid Adnan, Sedghi Reza, Hojati Maryam (2025-03)
    Optimization of Biopolymer Additives for 3D Printable Cementitious Systems:
    A Design of Experiment Approach
  33. Zhang Yonghong, Cui Suping, Yang Bohao, Wang Xinxin et al. (2025-01)
    Research on 3D Printing Concrete Mechanical Properties-Prediction-Model Based on Machine-Learning
  34. Zhang Chao, Nerella Venkatesh, Krishna Anurag, Wang Shen et al. (2021-06)
    Mix-Design Concepts for 3D Printable Concrete:
    A Review
  35. Zhang Yu, Zhang Yunsheng, Liu Guojian, Yang Yonggan et al. (2018-04)
    Fresh Properties of a Novel 3D Printing Concrete Ink
  36. Zhang Yu, Zhang Yunsheng, She Wei, Yang Lin et al. (2019-01)
    Rheological and Hardened Properties of the High-Thixotropy 3D Printing Concrete
  37. Zhao Zhihui, Chen Mingxu, Zhong Xu, Huang Yongbo et al. (2021-07)
    Effects of Bentonite, Diatomite and Metakaolin on the Rheological Behavior of 3D Printed Magnesium-Potassium-Phosphate-Cement Composites

2 Citations

  1. Abedi Mohammadmadhi, Waris Muhammad, Alawi Mubarak, Jabri Khalifa et al. (2025-11)
    Data-Driven Design of Sustainable LC³ for 3D Printing with Omani Clays
  2. Tarhan İsmail, Tarhan Yeşim (2025-09)
    Nonlinear In-Plane Response of 3D-Printed Concrete Walls with Varied Infill Patterns:
    Experimental Mix Design and Numerical Structural Assessment

BibTeX
@article{zafa_java_hoja.2025.ORPo3PCMvEML,
  author            = "Muhammad Saeed Zafar and Farid Javadnejad and Maryam Hojati",
  title             = "Optimizing Rheological Properties of 3D Printed Cementitious Materials via Ensemble Machine Learning",
  doi               = "10.1016/j.addma.2025.104889",
  year              = "2025",
  journal           = "Additive Manufacturing",
  pages             = "104889",
}
Formatted Citation

M. S. Zafar, F. Javadnejad and M. Hojati, “Optimizing Rheological Properties of 3D Printed Cementitious Materials via Ensemble Machine Learning”, Additive Manufacturing, p. 104889, 2025, doi: 10.1016/j.addma.2025.104889.

Zafar, Muhammad Saeed, Farid Javadnejad, and Maryam Hojati. “Optimizing Rheological Properties of 3D Printed Cementitious Materials via Ensemble Machine Learning”. Additive Manufacturing, 2025, 104889. https://doi.org/10.1016/j.addma.2025.104889.