2022
DOI: 10.1111/jace.18795
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Fracture toughness evaluation of silicon nitride from microstructures via convolutional neural network

Abstract: The fracture toughness of silicon nitride (Si3N4) ceramics was evaluated directly from their microstructures via deep learning using convolutional neural network models. Totally 156 data sets containing microstructural images and relative densities were prepared from 45 types of Si3N4 samples as input feature quantities (IFQs) and were correlated to the fracture toughness as an objective variable. The data sets were divided into two groups. One was used for training, resulting in the creation of regression mod… Show more

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Cited by 10 publications
(11 citation statements)
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“…It is also well known that accuracy of AI‐determination using CNN models is largely affected by the size of data sets used for training the models. In fact, the R 2 value for K IC from the testing results was approximately 0.85 in this study using the 330 data sets, which is somewhat higher than that of the previous study, 0.80, with the 156 data sets, 22 although the precise comparison is difficult due to the different types of sintering additives. The accuracy, however, is also strongly dependent on the quality of the data sets, that is, their range and distribution.…”
Section: Discussioncontrasting
confidence: 66%
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“…It is also well known that accuracy of AI‐determination using CNN models is largely affected by the size of data sets used for training the models. In fact, the R 2 value for K IC from the testing results was approximately 0.85 in this study using the 330 data sets, which is somewhat higher than that of the previous study, 0.80, with the 156 data sets, 22 although the precise comparison is difficult due to the different types of sintering additives. The accuracy, however, is also strongly dependent on the quality of the data sets, that is, their range and distribution.…”
Section: Discussioncontrasting
confidence: 66%
“…On the contrary, the narrow range of the data sets leads to poor prediction of the properties, even with large data volume. The relatively high accuracies of the AI‐determinations of the properties in this study as well as in the previous one 22 are largely because the data sets are widely distributed.…”
Section: Discussionsupporting
confidence: 52%
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