A Comparison Study of Constitutive Equation, Neural Networks, and Support Vector Regression for Modeling Hot Deformation of 316L Stainless Steel
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2020
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Abstract
In this research, hot deformation experiments of 316L stainless steel were carried out at a temperature range of 800-1000 °C and strain rate of 2 × 10-3-2 × 10-1. The flow stress behavior of 316L stainless steel was found to be highly dependent on the strain rate and temperatur …
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| Authors | Song SH;; |
| Journal | Materials (Basel, Switzerland) |
| Year | 2020 |
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