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An All-in-One Robotic Platform for Hybrid Manufacturing of Large Volume Parts

  • Francesco CrivelliEmail author
  • Valentin Baumann
  • Markus Steiner
  • Mark D’Urso
  • Philipp Schmid
  • Alexander Steinecker
Conference paper
Part of the IFIP Advances in Information and Communication Technology book series (IFIPAICT, volume 530)

Abstract

3D printing offers many advantages over conventional machining and its applications in industrial manufacturing is growing. However, existing additive technologies present limitations in workspace volume, accuracy and surface quality. These limitations could be overcome by combining both additive and subtractive processes. Such hybrid approaches allow layer-by-layer construction, alternating fast and rough material deposition with machining steps, when the layer’s geometry is finished. Despite its potential, the development and industrial application of hybrid machines is slow. Particularly, no systems exist for the construction of large parts. The project KRAKEN is well-situated in this context, aiming at the development of a novel, fully automated, all-in-one platform for large volume hybrid manufacturing. This powerful tool will not only combine additive with subtractive processes, but it will also include both metal and non-metal 3D printing, resulting in a completely new machine for the construction of large, multi-material parts. A control approach based on direct measurement of the end-effector position will allow a combination of large workspace (up to 20 m) and high manufacturing accuracy (tolerances < 0.3 mm, surface roughness Ra < 0.1 µm). This paper presents the preliminary steps toward the development of this robotic platform, focusing on the use of the real-time feedback of an absolute laser tracker to control motion and positioning of the manufacturing robot. The proposed control strategy is presented and discussed. Finally, the use of an Extended Kalman Filter to fuse the laser measurement with the robot position sensors is presented and discussed based on offline evaluation.

Keywords

Hybrid manufacturing Large parts Multi-material All-in-one machine Robotic manufacturing Extended Kalman Filter 

Notes

Acknowledgments

This project has received funding from the European Union’s Horizon 2020 research and innovation program under grant agreement No 723759. Their support is gratefully acknowledged.

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Copyright information

© IFIP International Federation for Information Processing 2019

Authors and Affiliations

  • Francesco Crivelli
    • 1
    Email author
  • Valentin Baumann
    • 2
  • Markus Steiner
    • 2
  • Mark D’Urso
    • 2
  • Philipp Schmid
    • 1
  • Alexander Steinecker
    • 1
  1. 1.CSEM SAAlpnach DorfSwitzerland
  2. 2.Hexagon Manufacturing IntelligenceUnterentfeldenSwitzerland

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