Litcius/Paper detail

Automatic Recognition of Microstructures of Air-Plasma-Sprayed Thermal Barrier Coatings Using a Deep Convolutional Neural Network

Xiao Shan, Tianmeng Huang, Lirong Luo, Jie Lu, Huangyue Cai, Junwei Zhao, Gang Sheng, Xiaofeng Zhao

2022Coatings10 citationsDOIOpen Access PDF

Abstract

Either to obtain desirable microstructures by adjusting processing parameters or to predict the properties of a thermal barrier coating (TBC) according to its microstructure, fast and reliable quantitation of the microstructure is imperative. In this research, a machine-learning-based approach—a deep convolution neural network (DCNN)—was established to accurately quantify the microstructure of air-plasma-sprayed (APS) TBCs based on 2D images. Four scanning electron microscopy (SEM) images (view field: 150 μm × 150 μm, image size: 3072 pixel × 3072 pixel) were taken and labeled to train the DCNN. After training, the DCNN could recognize correctly 98.5% of the pixels in the SEM images of typical APS TBCs. This study demonstrated that a small dataset of SEM images could be enough to train a DCNN, making it a powerful and feasible method for quantitively characterizing the microstructure osf APS TBCs.

Topics & Concepts

MicrostructureThermal barrier coatingConvolutional neural networkPixelMaterials scienceScanning electron microscopeArtificial intelligenceConvolution (computer science)PlasmaArtificial neural networkCoatingComputer scienceComposite materialPattern recognition (psychology)PhysicsQuantum mechanicsHigh-Temperature Coating BehaviorsAdvanced materials and compositesNuclear Materials and Properties