Literature DB >> 26754768

Automatic Detection of Pearlite Spheroidization Grade of Steel Using Optical Metallography.

Naichao Chen1, Yingchao Chen1, Jun Ai1, Jianxin Ren1, Rui Zhu1, Xingchi Ma1, Jun Han2, Qingqian Ma2.   

Abstract

To eliminate the effect of subjective factors during manually determining the pearlite spheroidization grade of steel by analysis of optical metallography images, a novel method combining image mining and artificial neural networks (ANN) is proposed. The four co-occurrence matrices of angular second moment, contrast, correlation, and entropy are adopted to objectively characterize the images. ANN is employed to establish a mathematical model between the four co-occurrence matrices and the corresponding spheroidization grade. Three materials used in coal-fired power plants (ASTM A315-B steel, ASTM A335-P12 steel, and ASTM A355-P11 steel) were selected as the samples to test the validity of our proposed method. The results indicate that the accuracies of the calculated spheroidization grades reach 99.05, 95.46, and 93.63%, respectively. Hence, our newly proposed method is adequate for automatically detecting the pearlite spheroidization grade of steel using optical metallography.

Keywords:  artificial neural networks; grade; image mining; optical metallography; pearlite spheroidization

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Year:  2016        PMID: 26754768     DOI: 10.1017/S1431927615015706

Source DB:  PubMed          Journal:  Microsc Microanal        ISSN: 1431-9276            Impact factor:   4.127


  1 in total

1.  Label Noise Learning Method for Metallographic Image Recognition of Heat-Resistant Steel for Use in Pressure Equipment.

Authors:  Zhiyuan Shen; Haijun Hu; Ziyi Huang; Yu Zhang; Yafei Wang; Xiufeng Li
Journal:  Materials (Basel)       Date:  2022-10-10       Impact factor: 3.748

  1 in total

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