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Machine learning-enabled real-time anomaly detection for electron beam powder bed fusion additive manufacturing

Author

Listed:
  • Davide Cannizzaro

    (Politecnico di Torino)

  • Paolo Antonioni

    (Politecnico di Torino)

  • Francesco Ponzio

    (Politecnico di Torino)

  • Manuela Galati

    (Politecnico di Torino)

  • Edoardo Patti

    (Politecnico di Torino)

  • Santa Cataldo

    (Politecnico di Torino)

Abstract

Despite the many advantages and increasing adoption of Electron Beam Powder Bed Fusion (PBF-EB) additive manufacturing by industry, current PBF-EB systems remain largely unstable and prone to unpredictable anomalous behaviours. Additionally, although featuring in-situ process monitoring, PBF-EB systems show limited capabilities in terms of timely identification of process failures, which may result into considerable wastage of production time and materials. These aspects are commonly recognized as barriers for the industrial breakthrough of PBF-EB technologies. On top of these considerations, in our research we aim at introducing real-time anomaly detection capabilities into the PBF-EB process. To do so, we build our case-study on top of a Arcam EBM A2X system, one of the most diffused PBF-EB machines in industry, and make access to the most relevant variables made available by this machine during the layering process. Thus, seeking a proficient interpretation of such data, we introduce a deep learning autoencoder-based anomaly detection framework. We demonstrate that this framework is able not only to early identify anomalous patterns from such data in real-time during the process with a F1 score around 90%, but also to anticipate the failure of the current job by 6 h, on average, and in one case by almost 20 h. This avoids waste of production time and opens the way to a more controllable PBF-EB process.

Suggested Citation

  • Davide Cannizzaro & Paolo Antonioni & Francesco Ponzio & Manuela Galati & Edoardo Patti & Santa Cataldo, 2025. "Machine learning-enabled real-time anomaly detection for electron beam powder bed fusion additive manufacturing," Journal of Intelligent Manufacturing, Springer, vol. 36(3), pages 2105-2119, March.
  • Handle: RePEc:spr:joinma:v:36:y:2025:i:3:d:10.1007_s10845-024-02359-6
    DOI: 10.1007/s10845-024-02359-6
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    References listed on IDEAS

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    1. Md Doulotuzzaman Xames & Fariha Kabir Torsha & Ferdous Sarwar, 2023. "A systematic literature review on recent trends of machine learning applications in additive manufacturing," Journal of Intelligent Manufacturing, Springer, vol. 34(6), pages 2529-2555, August.
    2. Hasan Tercan & Tobias Meisen, 2022. "Machine learning and deep learning based predictive quality in manufacturing: a systematic review," Journal of Intelligent Manufacturing, Springer, vol. 33(7), pages 1879-1905, October.
    3. Muhammad Raza Naqvi & Linda Elmhadhbi & Arkopaul Sarkar & Bernard Archimede & Mohamed Hedi Karray, 2024. "Survey on ontology-based explainable AI in manufacturing," Journal of Intelligent Manufacturing, Springer, vol. 35(8), pages 3605-3627, December.
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