Enhanced Characterization of Non-Metallic Inclusions for (Sub) Micro Steel Cleanness Evaluations
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TY - BOOK
T1 - Enhanced Characterization of Non-Metallic Inclusions for (Sub) Micro Steel Cleanness Evaluations
AU - Mayerhofer, Alexander
N1 - embargoed until null
PY - 2021
Y1 - 2021
N2 - A central part of research and development in metallurgy are analyses of steels´ microstructure and containing phases. Due to ever-increasing demands on steel cleanness, the evaluation of endogenous and exogenous non-metallic phases with decreasing sizes is more and more important in research and industry. The current thesis deals with the limits and potentials of scanning electron microcopy and energy dispersive spectrometry (SEM/EDS) of non-metallic inclusions (NMI) to handle future demands on inclusion analytics. Comprehensive literature research of different approaches for steel cleanness evaluations and particle analysis reveals SEM/EDS as one of the most essential measurement systems for steel research and secondary metallurgical process development. Constantly improving image resolution and detectors’ accuracy enables a wide range of chemical and morphological information of non-metallic inclusions. A thesis’s main task is to develop sound guidelines for a standardized inclusion detection and instructions for interpreting manual and automated SEM/EDS measurements in steel cleanness demands. Besides the influence of fundamental physical phenomena on the result, data post-processing and interpretation limits are discussed. The Potentials of SEM/EDS analysis are elaborated and summarized, leading to different approaches, guidelines, and innovative evaluation methods. Electron interaction simulations are used to better understand X-ray interaction volumes in non-metallic inclusions. As one result a particle size-depending mathematical model of the theoretical information share of matrix and inclusion composition is established. Comparing simulation of performed analysis and measurements, the potential of digital approaches dealing with metallurgical research problems is shown. A guide to manual point measurements and methods of electrolytic and chemical extraction are described to optimize SEM/EDS analysis experimentally. With the correct application of the procedures shown, composition and morphology evaluations, including matrix element contents in particles down to 300 nm in size, can be realized. First non-metallic inclusion standard samples for metallurgical demands are produced. To determine the iron content falsification at automated inclusion analysis, reference and standard samples are correlated, resulting in 80 % Fe overestimation for 0.3 - 0.5 µm sized inclusions. Additionally, a mathematical correction of matrix interaction based on standard and reference samples has been developed to improve particle analysis’s general output and evaluate particles´ Fe contents at steel cleanness evaluations. Furthermore, in addition to a new morphological categorization method, a size-dependent and direction-independent cluster identification method is developed based on inclusions´ morphology and position data of automated measurements. This methodology of morphological particle evaluation and categorization can be applied to all inclusion classes of all product types. The work concludes with a guideline for proper correction, classification, and typification of typical non-metallic inclusions at steel cleanness evaluations. The particle categorization methodology, defined as objective as possible, can be used to develop, evaluate and interpret particle populations or detailed analyses of specific metallurgical issues. Finally, the application of data evaluation and interpretation is demonstrated using various industrial samples. The interpretable result of measurements is optimized and improved by enhanced data correction and evaluation. The potential of properly evaluated automated analyses is shown and discussed. By basic treatment of SEM/EDS - analytics in metallurgical applications, further knowledge is generated leading to an essential work for future research projects and industry developments.
AB - A central part of research and development in metallurgy are analyses of steels´ microstructure and containing phases. Due to ever-increasing demands on steel cleanness, the evaluation of endogenous and exogenous non-metallic phases with decreasing sizes is more and more important in research and industry. The current thesis deals with the limits and potentials of scanning electron microcopy and energy dispersive spectrometry (SEM/EDS) of non-metallic inclusions (NMI) to handle future demands on inclusion analytics. Comprehensive literature research of different approaches for steel cleanness evaluations and particle analysis reveals SEM/EDS as one of the most essential measurement systems for steel research and secondary metallurgical process development. Constantly improving image resolution and detectors’ accuracy enables a wide range of chemical and morphological information of non-metallic inclusions. A thesis’s main task is to develop sound guidelines for a standardized inclusion detection and instructions for interpreting manual and automated SEM/EDS measurements in steel cleanness demands. Besides the influence of fundamental physical phenomena on the result, data post-processing and interpretation limits are discussed. The Potentials of SEM/EDS analysis are elaborated and summarized, leading to different approaches, guidelines, and innovative evaluation methods. Electron interaction simulations are used to better understand X-ray interaction volumes in non-metallic inclusions. As one result a particle size-depending mathematical model of the theoretical information share of matrix and inclusion composition is established. Comparing simulation of performed analysis and measurements, the potential of digital approaches dealing with metallurgical research problems is shown. A guide to manual point measurements and methods of electrolytic and chemical extraction are described to optimize SEM/EDS analysis experimentally. With the correct application of the procedures shown, composition and morphology evaluations, including matrix element contents in particles down to 300 nm in size, can be realized. First non-metallic inclusion standard samples for metallurgical demands are produced. To determine the iron content falsification at automated inclusion analysis, reference and standard samples are correlated, resulting in 80 % Fe overestimation for 0.3 - 0.5 µm sized inclusions. Additionally, a mathematical correction of matrix interaction based on standard and reference samples has been developed to improve particle analysis’s general output and evaluate particles´ Fe contents at steel cleanness evaluations. Furthermore, in addition to a new morphological categorization method, a size-dependent and direction-independent cluster identification method is developed based on inclusions´ morphology and position data of automated measurements. This methodology of morphological particle evaluation and categorization can be applied to all inclusion classes of all product types. The work concludes with a guideline for proper correction, classification, and typification of typical non-metallic inclusions at steel cleanness evaluations. The particle categorization methodology, defined as objective as possible, can be used to develop, evaluate and interpret particle populations or detailed analyses of specific metallurgical issues. Finally, the application of data evaluation and interpretation is demonstrated using various industrial samples. The interpretable result of measurements is optimized and improved by enhanced data correction and evaluation. The potential of properly evaluated automated analyses is shown and discussed. By basic treatment of SEM/EDS - analytics in metallurgical applications, further knowledge is generated leading to an essential work for future research projects and industry developments.
KW - SEM/EDS
KW - steel cleanness evaluation
KW - electron interaction
KW - interaction volume
KW - simulation
KW - manual SEM/EDS analysis
KW - automated SEM/EDS analysis
KW - X-ray interaction volume
KW - electrolytic extraction
KW - sequential chemical extraction
KW - twin jet-polishing
KW - inclusion standard production
KW - NMI standard
KW - Fe Quantification
KW - matrix interaction quantification
KW - sample selection
KW - thermodynamics
KW - kinetics
KW - (Fe
KW - Mn)Oxides
KW - oxide morphology
KW - Matrix Correction
KW - morphology categorization
KW - M-factor
KW - NMI spatial distribution
KW - feature evaluation
KW - correction
KW - classification
KW - typification
KW - iron correction
KW - cluster identification
KW - spatial distribution
KW - distance distribution
KW - influences on experiments
KW - phenomena EDS
KW - cutting position
KW - image
KW - artefacts
KW - composition evaluation
KW - Improvement Potentials
KW - inclusion formation
KW - simulated automated measurements
KW - homogenity
KW - heterogenity
KW - dissolution
KW - inclusion reference production
KW - NMI interpretation
KW - NMI evaluation
KW - data representation
KW - nichtmetallische Einschlüsse
KW - NME
KW - REM/EDX
KW - Reinheitsgrad
KW - Reinheitsgradbeurteilung
KW - Stähle
KW - Elektroneninteraktion
KW - Interaktionsvolumen
KW - Simulation
KW - manuelle REM/EDX-Analyse
KW - automatisierte REM/EDX analyse
KW - X-ray Interaktion
KW - chrakteristische Röntgenstrahlung
KW - elektrolytische Extraktion
KW - chemische extraktion
KW - sequentielle chemische Extraktion
KW - Einschluss-Standard Herstellung
KW - Einschluss Standard
KW - Standard
KW - Fe Quantifizierung
KW - Quantifizierung Matrixinteraktion
KW - Probenauswahl
KW - Thermodynamik
KW - Kinetik
KW - (Fe
KW - Mn)Oxide
KW - Oxidmorphology
KW - Einschlussformen
KW - Oxidformen
KW - Matrix Korrektur
KW - Morphologiekategorisierung
KW - M-Faktor
KW - räumliche Einschlussverteilung
KW - räumliche Verteilung
KW - Featureauswertung
KW - Einschlussauswertung
KW - Korrektur
KW - Klassifizierung
KW - Einschlussklassifizierung
KW - Typisierung
KW - Eisenkorrektur
KW - Clustererkennung
KW - Einschlusscluster
KW - Einschlussagglomerate
KW - Abstandsverteilung
KW - Einflüsse auf Experimente
KW - EDX Phänomene
KW - Schnittposition
KW - Bildaufnahme
KW - Artefakte
KW - Bestimmung der Zusammensetzung
KW - Verbesserungspotenziale
KW - Einschlussbildung
KW - simulierte automatisierte Messung
KW - Homogenität
KW - Heterogenität
KW - Auflösung
KW - Einschlussreferenzproben
KW - Interpretation
KW - Evaluierung
KW - Beurteilung
KW - Datendarstellung
M3 - Doctoral Thesis
ER -