Modeling the quantitative effect of alloying elements on the M-s temperature of high carbon steel by artificial neural networks
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초록

Chemical composition affects the properties and the martensite start (M-s) temperature of steels. This study predicts the Ms temperature of high carbon steel via artificial neural networks. Meanwhile, it enables us to estimate the quantitative effect of alloying elements on the M-s temperature on a sizeable selectable scale, which is the first time to release such results exactly. Compared to the previous formulas, this one is simple, visual, with high accuracy. (C) 2021 Elsevier B.V. All rights reserved.

키워드

High carbon steelAlloying elementM-s temperatureQuantitative effectANN
제목
Modeling the quantitative effect of alloying elements on the M-s temperature of high carbon steel by artificial neural networks
저자
Wang, Xiao-SongNarayana, P. L.Maurya, A. K.Kim, Hong-InHur, Bo-YoungReddy, N. S.
DOI
10.1016/j.matlet.2021.129573
발행일
2021-05
유형
Article
저널명
Materials Letters
291