Unsupervised Machine Learning for Anomaly Detection in Electron Beam Powder Bed Fusion
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Examensarbete för masterexamen
Master's Thesis
Master's Thesis
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Sammanfattning
Electron Beam Melting is used in high-stakes industries, such as in the aerospace
and medical sectors, thus requiring rigorous quality control processes. As some
builds consist of over 7,000 images, manual analysis is not feasible. Current approaches
to counter these issues rely on heuristic-based methods that require large
annotated datasets. This study suggests an unsupervised machine learning approach
for anomaly detection, trained only on nominal data, removing the need for
labelled defect examples. This work conducts an ablation study exploring different
input modalities across four neural network models: an autoencoder and three
image-to-image models. Results show that the autoencoder trained on reconstructing
Layer images, and the image-to-image model taking Rake images together with
CAD Masks perform best by a notable margin, where the image-to-image model
achieves an F1 score of 98% on a baseline build containing both nominal and anomalous
layers. The anomaly score behaviour remains consistent across multiple build
cycles, suggesting the approach is scalable beyond a single build. However, validation
across additional geometries and process parameters remains an important
direction for future work.
Beskrivning
Ämne/nyckelord
Electron Beam Melting, Anomaly Detection, Unsupervised Deep Learning, Image-to-Image Translation, Autoencoder, Additive Manufacturing, Ablation Study, Input Modality, In-Situ Monitoring, Thermal Imaging
