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  4. Segmentation and Metallographic Evaluation of Aluminium Slurry Coatings Using Machine Learning Techniques
 
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October 26, 2024
Journal Article
Title

Segmentation and Metallographic Evaluation of Aluminium Slurry Coatings Using Machine Learning Techniques

Abstract
Analysis of scanning electron microscope (SEM) images is crucial for characterising aluminide diffusion coatings deposited via the slurry route on steels, yet challenging due to various factors like imaging artefacts, noise, and overlapping features such as resin, precipitates, cracks, and pores. This study focuses on determining the thicknesses of the coating layers Fe2Al5 and, if present, FeAl, pore characteristics, and chromium precipitate fractions after the heat treatment that forms the diffusion coating. A deep learning SEM image segmentation model utilising U-Net architecture is proposed. Ground truth data were generated using the trainable Weka segmentation plugin in ImageJ, manually refined for accuracy, and supplemented with synthetic data from Blender 3D software for data augmentation of a limited number of SEM label images. The deep learning model trained on a combination of synthetic and real SEM data achieved mean dice scores of 98.7% ± 0.2 for the Fe2Al5 layer, 82.6% ± 8.1 for pores, and 81.48% ± 3.6 for precipitates when evaluated on manually labelled SEM data. The deep learning procedure was applied to evaluate a series of SEM images of diffusion coatings obtained with three different slurry compositions. The evaluation revealed that using a slurry without a rheology modifier may lead to a thicker partial Fe2Al5 layer that is formed by inward diffusion. The relation between the outward and inward diffusion Fe2Al5 layers was not affected by the coating thickness. The thinner diffusion coating presents lower pores and chromium precipitate fractions independently of the slurry selected.
Author(s)
Juez Lorenzo, Maria del Mar  
Fraunhofer-Institut für Chemische Technologie ICT  
Kolarik, Vladislav  
Fraunhofer-Institut für Chemische Technologie ICT  
Sethia, Khyati  
University of Salford, VSB - Technical University of Ostrava
Strakos, Petr
Technical University of Ostrava  
Journal
High temperature corrosion of materials  
Project(s)
REFRESH Research Excellence For REgion Sustainability and High tech Industries
Funder
Ministry of Education, Youth and Sports of the Czech Republic
Open Access
File(s)
Download (1.84 MB)
Rights
CC BY 4.0: Creative Commons Attribution
DOI
10.1007/s11085-024-10321-3
10.24406/h-478080
Additional full text version
Landing Page
Language
English
Fraunhofer-Institut für Chemische Technologie ICT  
Keyword(s)
  • High-temperature corrosion protection

  • Slurry coating

  • Aluminide diffusion coating

  • Semantic segmentation

  • Deep learning

  • Machine learning

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