Modified Arrhenius-type Constitutive Model and Artificial Neural Network-based Model for Constitutive Relationship of 316LN Stainless Steel during Hot Deformation
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Title
Modified Arrhenius-type Constitutive Model and Artificial Neural Network-based Model for Constitutive Relationship of 316LN Stainless Steel during Hot Deformation
Authors
Keywords
constitutive relation, artificial neural network, stainless steel, hot deformation
Journal
JOURNAL OF IRON AND STEEL RESEARCH INTERNATIONAL
Volume 22, Issue 8, Pages 721-729
Publisher
Springer Nature
Online
2015-08-14
DOI
10.1016/s1006-706x(15)30063-7
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