2020
DOI: 10.1007/s13632-020-00650-5
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A Digital Evaluation Approach for Nodule Size Analysis of Pearlite Mixture Phase Structure in Steel

Abstract: This study employed a digital evaluation approach for determining the nodule size of a no heat-treatment pearlite structure, as well as the grain size of the ferrite phase via an image morphology process methodology. The grain size of steel has great influence on the mechanical properties of manufactured materials, making it a necessary metallographic inspection item for materials. The properties affected by grain size include hardness, failure life, ultimate stress, electric characteristics, and heat expansio… Show more

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Cited by 2 publications
(1 citation statement)
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“…Kiyomura, Wang, and Ogawa et al applied homology and Bayesian optimization of machine learning algorithms to predict the characteristic properties and microstructural optimization of globular cementite in pearlite steel [7]. Our previous research applied image morphology approaches to progress metallographic images of carbon steel and to estimate the grain size of pearlite mixture-phase steel [8]. Tsutsui, Terasaki, and Uto et al used machine learning approaches to utilize feature extraction with texture analysis on several microstructures, including martensite, upper bainite, lower bainite, and other mixture phases, in scanning electronic microscope (SEM) images [9].…”
Section: Introductionmentioning
confidence: 99%
“…Kiyomura, Wang, and Ogawa et al applied homology and Bayesian optimization of machine learning algorithms to predict the characteristic properties and microstructural optimization of globular cementite in pearlite steel [7]. Our previous research applied image morphology approaches to progress metallographic images of carbon steel and to estimate the grain size of pearlite mixture-phase steel [8]. Tsutsui, Terasaki, and Uto et al used machine learning approaches to utilize feature extraction with texture analysis on several microstructures, including martensite, upper bainite, lower bainite, and other mixture phases, in scanning electronic microscope (SEM) images [9].…”
Section: Introductionmentioning
confidence: 99%