Litcius/Paper detail

Fracture toughness evaluation of silicon nitride from microstructures via convolutional neural network

Ryoichi Furushima, Yutaka Maruyama, Yuki Nakashima, Minh Chu Ngo, Tatsuki Ohji, Manabu Fukushima

2022Journal of the American Ceramic Society21 citationsDOI

Abstract

Abstract The fracture toughness of silicon nitride (Si 3 N 4 ) 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 Si 3 N 4 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 models for two kinds of IFQs: the microstructures only and a combination of the microstructures and the relative densities. The other group was used for testing the validity of the created models. As a result, the determination coefficient was approximately 0.8 even when using only the microstructures as the IFQs and was further improved when adding the relative densities. It was revealed that the fracture toughness of Si 3 N 4 ceramics was well evaluated from their microstructures.

Topics & Concepts

MicrostructureFracture toughnessMaterials scienceSilicon nitrideCeramicConvolutional neural networkComposite materialComputer scienceArtificial intelligenceLayer (electronics)Advanced ceramic materials synthesisAdvanced materials and compositesAdvanced machining processes and optimization