Skip to content

In-Line Image-Based Reinforcement Detection for Concrete Additive Manufacturing Processes Using a Convolutional Neural Network (2024-06)

10.22260/isarc2024/0007

 Lachmayer Lukas, Dittrich Lars,  Recker Tobias,  Dörrie Robin,  Kloft Harald,  Raatz Annika
Contribution - Proceedings of the 41st International Symposium on Automation and Robotics in Construction

Abstract

Within the scope of additive manufacturing of structural concrete components, the integration of reinforcement provides an inevitable opportunity to enhance the load bearing capacity of the components. Besides the rebar integration itself, ensuring asplanned concrete cover is key to achieve a stable and long-term legally permissible integration. The thickness of the as-built concrete cover however is unpredictably altered during printing by the varying material behaviour of the printed concrete. In addition, the lack of opportunities to anchor reinforcement elements before printing can lead to a displacement of reinforcement during printing. In this publication, we present an approach for determining the position of reinforcement elements within additively manufactured components without post-process measurement steps. During the printing process, RGB images and depth camera data are recorded by a camera mounted to the print head. Subsequently, a neural network is employed to distinguish between reinforcement structures and the deposited material within the coloured image. By overlaying the colour image data with the depth information a 3D point cloud is generated, within which the reinforcement is marked.

10 References

  1. Bos Freek, Wolfs Robert, Ahmed Zeeshan, Salet Theo (2016-08)
    Additive Manufacturing of Concrete in Construction:
    Potentials and Challenges of 3D Concrete Printing
  2. Claßen Martin, Ungermann Jan, Sharma Rahul (2020-05)
    Additive Manufacturing of Reinforced Concrete:
    Development of a 3D Printing Technology for Cementitious Composites with Metallic Reinforcement
  3. Dörrie Robin, Freund Niklas, Herrmann Eric, Baghdadi Abtin et al. (2023-09)
    Automated Force-Flow-Oriented Reinforcement Integration for Shotcrete 3D Printing
  4. Freund Niklas, Mai (née Dressler) Inka, Lowke Dirk (2020-07)
    Studying the Bond Properties of Vertical Integrated Short Reinforcement in the Shotcrete 3D Printing Process
  5. Kazemian Ali, Yuan Xiao, Davtalab Omid, Khoshnevis Behrokh (2019-01)
    Computer-Vision for Real-Time Extrusion-Quality-Monitoring and Control in Robotic Construction
  6. Kloft Harald, Empelmann Martin, Hack Norman, Herrmann Eric et al. (2020-09)
    Reinforcement-Strategies for 3D Concrete Printing
  7. Lachmayer Lukas, Müller Nico, Herlyn Thilo, Raatz Annika (2023-08)
    Volume Flow-Based Process-Control for Robotic Additive Manufacturing-Processes in Construction
  8. Lindemann Hendrik, Gerbers Roman, Ibrahim Serhat, Dietrich Franz et al. (2018-09)
    Development of a Shotcrete 3D Printing (SC3DP) Technology for Additive Manufacturing of Reinforced Freeform Concrete Structures
  9. Pacillo Gerardo, Ranocchiai Giovanna, Loccarini Federica, Fagone Mario (2021-05)
    Additive Manufacturing in Construction:
    A Review on Technologies, Processes, Materials, and Their Applications of 3D and 4D Printing
  10. Wolfs Robert, Bos Freek, Strien Emiel, Salet Theo (2017-06)
    A Real-Time Height Measurement and Feedback System for 3D Concrete Printing

1 Citations

  1. Lopes de Aquino Brasil Alexander, Carmo Pena (2025-09)
    A Systematic Review of Robotic Additive Manufacturing Applications in Architecture, Engineering, and Construction

BibTeX
@inproceedings{lach_ditt_reck_dorr.2024.ILIBRDfCAMPUaCNN,
  author            = "Lukas Lachmayer and Lars Dittrich and Tobias Recker and Robin Dörrie and Harald Kloft and Annika Raatz",
  title             = "In-Line Image-Based Reinforcement Detection for Concrete Additive Manufacturing Processes Using a Convolutional Neural Network",
  doi               = "10.22260/isarc2024/0007",
  year              = "2024",
  booktitle         = "Proceedings of the 41st International Symposium on Automation and Robotics in Construction",
  editor            = "Vincente Gonzalez-Moret and Jiansong Zhang and Borja García de Soto and Ioannis Brilakis",
}
Formatted Citation

L. Lachmayer, L. Dittrich, T. Recker, R. Dörrie, H. Kloft and A. Raatz, “In-Line Image-Based Reinforcement Detection for Concrete Additive Manufacturing Processes Using a Convolutional Neural Network”, in Proceedings of the 41st International Symposium on Automation and Robotics in Construction, 2024. doi: 10.22260/isarc2024/0007.

Lachmayer, Lukas, Lars Dittrich, Tobias Recker, Robin Dörrie, Harald Kloft, and Annika Raatz. “In-Line Image-Based Reinforcement Detection for Concrete Additive Manufacturing Processes Using a Convolutional Neural Network”. In Proceedings of the 41st International Symposium on Automation and Robotics in Construction, edited by Vincente Gonzalez-Moret, Jiansong Zhang, Borja García de Soto, and Ioannis Brilakis, 2024. https://doi.org/10.22260/isarc2024/0007.