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Real-Time Precision in 3D Concrete Printing (2024-07)

Controlling Layer Morphology via Machine Vision and Learning Algorithms

10.3390/inventions9040080

 Silva João,  Wagner Gabriel,  Silva Rafael,  Morais António,  Ribeiro João, Mould Sacha,  Figueiredo Bruno,  Nóbrega João,  Cruz Paulo
Journal Article - Inventions, Vol. 9, Iss. 4, No. 80

Abstract

3D concrete printing (3DCP) requires precise adjustments to parameters to ensure accurate and high-quality prints. However, despite technological advancements, manual intervention still plays a prominent role in this process, leading to errors and inconsistencies in the final printed part. To address this issue, machine learning vision models have been developed and utilized to analyze captured images and videos of the printing process, detecting defects and deviations. The data collected enable automatic adjustments to print settings, improving quality without the need for human intervention. This work first examines various techniques for real-time and offline corrections. It then introduces a specialized computer vision setup designed for real-time control in robotic 3DCP. Our main focus is on a specific aspect of machine learning (ML) within this system, called speed control, which regulates layer width by adjusting the robot motion speed or material flow rate. The proposed framework consists of three main elements: (1) a data acquisition and processing pipeline for extracting printing parameters and constructing a synthetic training dataset, (2) a real-time ML model for parameter optimization, and (3) a depth camera installed on a customized 3D-printed rotary mechanism for close-range monitoring of the printed layer.

4 References

  1. Khan Mohammad, Sanchez Florence, Zhou Hongyu (2020-04)
    3D Printing of Concrete:
    Beyond Horizons
  2. Kristombu Baduge Shanaka, Navaratnam Satheeskumar, Zidan Yousef, McCormack Tom et al. (2021-01)
    Improving Performance of Additive Manufactured Concrete:
    A Review on Material Mix-Design, Processing, Inter-Layer Bonding, and Reinforcing-Methods
  3. Paul Suvash, Zijl Gideon, Tan Ming, Gibson Ian (2018-05)
    A Review of 3D Concrete Printing Systems and Materials Properties:
    Current Status and Future Research Prospects
  4. Schutter Geert, Lesage Karel, Mechtcherine Viktor, Nerella Venkatesh et al. (2018-08)
    Vision of 3D Printing with Concrete:
    Technical, Economic and Environmental Potentials

9 Citations

  1. Liu Xingzi, Buswell Richard, Cavalaro Sergio, Xu Jie et al. (2026-01)
    Influence of Inter-Filament Voids on the Failure Mechanism and Compressive Strength of 3D Printed Concrete
  2. Ding Yao, Liu Yifan, Yang Bo, Liu Jiepeng et al. (2026-01)
    Application of Artificial Intelligence Technology in 3D Concrete Printing Quality Inspection and Control:
    A State-of-the-Art Review
  3. Hammoud Ahmad, Mohomad Yosef, Shomar Hasan, Masad Eyad et al. (2025-12)
    Data-Driven Framework for Printability and Geometric Quality Prediction in 3D Concrete Printing
  4. Özdemir Salih, Alaçam Sema (2025-11)
    Cognitive Ecosystem for Lifecycle-Adaptive and Sustainable 3D Concrete Printing
  5. Lopes de Aquino Brasil Alexander, Carmo Pena (2025-09)
    A Systematic Review of Robotic Additive Manufacturing Applications in Architecture, Engineering, and Construction
  6. Mawas Karam, Maboudi Mehdi, Gerke Markus (2025-09)
    A Review on Geometry and Surface Inspection in 3D Concrete Printing
  7. Kontovourkis Odysseas, Georgiou Christos, Andreou Alexis, Andreou Vasilis et al. (2025-06)
    Measuring and Evaluating Layer Height to Width Ratio in 3DCP Towards Higher Geometric Conformity
  8. Vasilić Ksenija (2025-02)
    Standardization Aspects of Concrete 3D Printing
  9. Cui Weijiu, Liu Wenliang, Guo Ruyi, Da Wan et al. (2025-02)
    Geometrical Quality Inspection in 3D Concrete Printing Using AI-Assisted Computer Vision

BibTeX
@article{silv_wagn_silv_mora.2024.RTPi3CP,
  author            = "João Miguel Silva and Gabriel Wagner and Rafael Silva and António Morais and João Ribeiro and Sacha Mould and Bruno Figueiredo and João Miguel Nóbrega and Paulo Jorge Sousa Cruz",
  title             = "Real-Time Precision in 3D Concrete Printing: Controlling Layer Morphology via Machine Vision and Learning Algorithms",
  doi               = "10.3390/inventions9040080",
  year              = "2024",
  journal           = "Inventions",
  volume            = "9",
  number            = "4",
  pages             = "80",
}
Formatted Citation

J. M. Silva, “Real-Time Precision in 3D Concrete Printing: Controlling Layer Morphology via Machine Vision and Learning Algorithms”, Inventions, vol. 9, no. 4, p. 80, 2024, doi: 10.3390/inventions9040080.

Silva, João Miguel, Gabriel Wagner, Rafael Silva, António Morais, João Ribeiro, Sacha Mould, Bruno Figueiredo, João Miguel Nóbrega, and Paulo Jorge Sousa Cruz. “Real-Time Precision in 3D Concrete Printing: Controlling Layer Morphology via Machine Vision and Learning Algorithms”. Inventions 9, no. 4 (2024): 80. https://doi.org/10.3390/inventions9040080.