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Titel: Reproducible Quantification of the Microstructure of Complex Quenched and Quenched and Tempered Steels Using Modern Methods of Machine Learning
VerfasserIn: Bachmann, Björn-Ivo
Müller, Martin
Britz, Dominik
Staudt, Thorsten
Mücklich, Frank
Sprache: Englisch
Titel: Metals
Bandnummer: 13
Heft: 8
Verlag/Plattform: MDPI
Erscheinungsjahr: 2023
Freie Schlagwörter: microstructure classification
microstructure segmentation
machine learning
quenched steel
martensite
bainite
DDC-Sachgruppe: 500 Naturwissenschaften
Dokumenttyp: Journalartikel / Zeitschriftenartikel
Abstract: Current conventional methods of evaluating microstructures are characterized by a high degree of subjectivity and a lack of reproducibility. Modern machine learning (ML) approaches have already shown great potential in overcoming these challenges. Once trained with representative data in combination with objective ground truth, the ML model is able to perform a task properly in a reproducible and automated manner. However, in highly complex use cases, it is often not possible to create a definite ground truth. This study addresses this problem using the underlying showcase of microstructures of highly complex quenched and quenched and tempered (Q/QT) steels. A patch-wise classification approach combined with a sliding window technique provides a solution for segmenting entire microphotographs where pixel-wise segmentation is not applicable since it is hardly feasible to create reproducible training masks. Using correlative microscopy, consisting of light optical microscope (LOM) and scanning electron microscope (SEM) micrographs, as well as corresponding data from electron backscatter diffraction (EBSD), a training dataset of reference states that covers a wide range of microstructures was acquired in order to train accurate and robust ML models in order to classify LOM or SEM images. Despite the enormous complexity associated with the steels treated here, classification accuracies of 88.8% in the case of LOM images and 93.7% for high-resolution SEM images were achieved. These high accuracies are close to super-human performance, especially in consideration of the reproducibility of the automated ML approaches compared to conventional methods based on subjective evaluations through experts.
DOI der Erstveröffentlichung: 10.3390/met13081395
URL der Erstveröffentlichung: https://doi.org/10.3390/met13081395
Link zu diesem Datensatz: urn:nbn:de:bsz:291--ds-403821
hdl:20.500.11880/36304
http://dx.doi.org/10.22028/D291-40382
ISSN: 2075-4701
Datum des Eintrags: 28-Aug-2023
Fakultät: NT - Naturwissenschaftlich- Technische Fakultät
Fachrichtung: NT - Materialwissenschaft und Werkstofftechnik
Professur: NT - Prof. Dr. Frank Mücklich
Sammlung:SciDok - Der Wissenschaftsserver der Universität des Saarlandes

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