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Artificial Neural Network for Modeling the Tensile Properties of Ferrite-Pearlite Steels: Relative Importance of Alloying Elements and Microstructural Factors

Authors
Hong, Tae-WoonLee, Sang-InShim, Jae-HyeokLee, Myoung-GyuLee, JoonhoHwang, Byoungchul
Issue Date
Oct-2021
Publisher
KOREAN INST METALS MATERIALS
Keywords
Alloying element; Artificial neural network; Ferrite-pearlite steels; Index of relative importance; Microstructural factor; Tensile property
Citation
METALS AND MATERIALS INTERNATIONAL, v.27, no.10, pp.3935 - 3944
Indexed
SCIE
SCOPUS
KCI
Journal Title
METALS AND MATERIALS INTERNATIONAL
Volume
27
Number
10
Start Page
3935
End Page
3944
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/136104
DOI
10.1007/s12540-021-00982-z
ISSN
1598-9623
Abstract
An artificial neural network (ANN) model was developed to predict the tensile properties as a function of alloying element and microstructural factor of ferrite-pearlite steels. The input parameters of the model were composed of alloying elements (Mn, Si, Al, Nb, Ti, and V) and microstructural factors (pearlite fraction, ferrite grain size, interlamellar spacing, and cementite thickness), while the output parameters of the model were yield strength and tensile strength. Although the ferrite-pearlite steels have complex relationships among the alloying elements, microstructural factors, and tensile properties, the ANN model predictions were found to be more accurate with experimental results than the existing equation model. In the present study the individual effect of input parameters on the tensile properties was quantitatively estimated with the help of the average index of the relative importance for alloying elements as well as microstructural factors. The ANN model attempted from the metallurgical points of view is expected to be useful for designing new steels having required mechanical properties.
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