Data-driven additive manufacturing with concrete: Enhancing in-line sensory data with domain knowledge, Part I: Geometry

J. Versteege, Rob J.M. Wolfs (Corresponding author), T.A.M. Salet

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Abstract

First-time-right manufacturing is an important step toward unlocking the full potential of digital fabrication with concrete (DFC), which can be advanced through data-driven approaches. Non-invasive in-line sensors can collect vast amounts of measurements during the manufacturing process. However, knowledge-driven feature engineering (KDFE) strategies are necessary to extract meaningful information, referred to as features, from the raw sensory data. This contribution, part of a two-part study, presents an approach to integrating KDFE with various in-line sensors in a 3D concrete printing (3DCP) facility, focusing on 2D laser scanning techniques to capture the ‘as-printed’ layer geometry during production. The geometric profiles are translated into features that quantify layer dimensions, cross-sectional area, and surface texture, reducing data complexity while enhancing relevancy. Real-world data is utilized to demonstrate the approach. A companion paper extends the methodology to other sensors, including those monitoring moisture and temperature, further advancing process monitoring in 3DCP.

Original languageEnglish
Article number106020
Number of pages13
JournalAutomation in Construction
Volume172
DOIs
Publication statusPublished - Apr 2025

Bibliographical note

Publisher Copyright:
© 2025 The Author(s)

Funding

The PhD project of J. Versteege is funded by the Eindhoven University of Technology EAISI institute . Their support is gratefully acknowledged. The PhD project of J. Versteege is funded by the TU/e Eindhoven AI Systems Institute, The Netherlands. Their support is gratefully acknowledged.

Keywords

  • Digital fabrication with concrete
  • Feature engineering
  • In-line sensors
  • Laser triangulation scanning
  • Quality assessment

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