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  4. Deep Learning for Classification of Internal Defects in Fused Filament Fabrication Using Optical Coherence Tomography
 
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2026
Journal Article
Title

Deep Learning for Classification of Internal Defects in Fused Filament Fabrication Using Optical Coherence Tomography

Abstract
Additive manufacturing is increasingly adopted for the industrial production of small series of functional components, particularly in thermoplastic strand extrusion processes such as Fused Filament Fabrication. This transition relies on technological advances addressing key process limitations, including dimensional instability, weak interlayer bonding, extrusion defects, moisture sensitivity, and insufficient melting. Process monitoring therefore focuses on early defect detection to minimize failed builds and costs, while ultimately enabling process optimization and adaptive control to mitigate defects during fabrication. For this purpose, a data processing pipeline for monitoring Optical Coherence Tomography images acquired in Fused Filament Fabrication is introduced. Convolutional neural networks are used for the automatic classification of tomographic cross-sections. A dataset of tomographic images passes semi-automatic labeling, preprocessing, model training and evaluation. A sliding window detects outlier regions in the tomographic cross-sections, while masks suppress peripheral noise, enabling label generation based on outlier ratios. Data are split into training, validation, and test sets using block-based partitioning to limit leakage. The classification model employs a ResNet-V2 architecture with BottleneckV2 modules. Hyperparameters are optimized, with N = 2, K = 2, dropout 0.5, and learning rate 0.001 yielding best performance. The model achieves 0.9446 accuracy and outperforms EfficientNet-B0 and VGG16 in accuracy and efficiency.
Author(s)
Lang, Valentin
Technische Universität Dresden
Zhu, Qichen
Technische Universität Dresden
Kopycinska-Müller, Malgorzata  
Fraunhofer-Institut für Keramische Technologien und Systeme IKTS  
Ihlenfeldt, Steffen  
Fraunhofer-Institut für Werkzeugmaschinen und Umformtechnik IWU  
Journal
Applied system innovation : ASI  
Funder
Bundesministerium für Wirtschaft und Klimaschutz  
Open Access
File(s)
Download (14.55 MB)
Rights
CC BY 4.0: Creative Commons Attribution
DOI
10.3390/asi9020042
10.24406/publica-7858
Additional link
Full text
Language
English
Fraunhofer-Institut für Keramische Technologien und Systeme IKTS  
Fraunhofer-Institut für Werkzeugmaschinen und Umformtechnik IWU  
Keyword(s)
  • additive manufacturing

  • artificial intelligence

  • computer vision

  • convolutional neural network

  • deep learning

  • fused filament fabrication

  • image classification

  • machine learning

  • optical coherence tomography

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