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  4. Efficient reconstruction of prior austenite grains in steel from etched light optical micrographs using deep learning and annotations from correlative microscopy
 
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2022
Journal Article
Title

Efficient reconstruction of prior austenite grains in steel from etched light optical micrographs using deep learning and annotations from correlative microscopy

Abstract
The high-temperature austenite phase is the initial state of practically all technologically relevant hot forming and heat treatment operations in steel processing. The phenomena occurring in austenite, such as recrystallization or grain growth, can have a decisive influence on the subsequent properties of the material. After the hot forming or heat treatment process, however, the austenite transforms into other microstructural constituents and information on the prior austenite morphology are no longer directly accessible. There are established methods available for reconstructing former austenite grain boundaries via metallographic etching or electron backscatter diffraction (EBSD) which both exhibit shortcomings. While etching is often difficult to reproduce and strongly depend on the investigated steel’s alloying concept, EBSD acquisition and reconstruction is rather time-consuming. But in fact, though, light optical micrographs of steels contrasted with conventional Nital etchant also contain information about the former austenite grains. However, relevant features are not directly apparent or accessible with conventional segmentation approaches. This work presents a deep learning (DL) segmentation of prior austenite grains (PAG) from Nital etched light optical micrographs. The basis for successful segmentation is a correlative characterization from EBSD, light and scanning electron microscopy to specify the ground truth required for supervised learning. The DL model shows good and robust segmentation results. While the intersection over union of 70% does not fully reflect the model performance due to the inherent uncertainty in PAG estimation, a mean error of 6.1% in mean grain size derived from the segmentation clearly shows the high quality of the result.
Author(s)
Bachmann, Björn-Ivo
Department of Materials Science, Saarland University, Saarbruecken
Müller, Martin
Department of Materials Science, Saarland University, Saarbruecken
Birtz, Dominik
Department of Materials Science, Saarland University, Saarbruecken
Durmaz, Ali Riza  
Fraunhofer-Institut für Werkstoffmechanik IWM  
Ackermann, Marc
Steel Institute, RWTH Aachen University, Aachen
Shchyglo, Oleg
Interdisciplinary Centre for Advanced Materials Simulation (ICAMS), Ruhr-Universität Bochum, Bochum
Staudt, Thorsten
Aktien-Gesellschaft der Dillinger Hüttenwerke, Dillingen
Mücklich, Frank
Department of Materials Science, Saarland University, Saarbruecken
Journal
Frontiers in Materials  
Project(s)
Intelligent-datengeführtes Prozessdesign für ermüdungsresistente Stahlbauteile am Beispiel bainitischer Mikrostruktur iBain  
Funding(s)
MaterialDigital
Funder
Bundesministerium für Bildung und Forschung -BMBF-  
Open Access
DOI
10.3389/fmats.2022.1033505
Language
English
Fraunhofer-Institut für Werkstoffmechanik IWM  
Keyword(s)
  • steel

  • prior austenite grains

  • segmentation

  • machine learning/deep learning

  • quantification

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