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A Comparative Study on Arrhenius-Type Constitutive Models with Regression Methods

  • Lee, Kyunghoon (Department of Aerospace Engineering, Pusan National University) ;
  • Murugesan, Mohanraj (Department of Mechanical Engineering, Sogang University) ;
  • Lee, Seung-Min (Department of Aerospace Engineering, Pusan National University) ;
  • Kang, Beom-Soo (Department of Aerospace Engineering, Pusan National University)
  • Received : 2016.10.17
  • Accepted : 2016.12.21
  • Published : 2017.02.01

Abstract

A comparative study was performed on strain-compensated Arrhenius-type constitutive models established with two regression methods: polynomial regression and regression Kriging. For measurements at high temperatures, experimental data of 70Cr3Mo steel were adopted from previous research. An Arrhenius-type constitutive model necessitates strain compensation for material constants to account for strain effect. To associate the material constants with strain, we first evaluated them at a set of discrete strains, then capitalized on surrogate modeling to represent the material constants as a function of strain. As a result, disparate flow stress models were formed via the two different regression methods. The constructed constitutive models were examined systematically against measured flow stresses by validation methods. The predicted material constants were found to be quite accurate compared to the actual material constants. However, notable mismatches between measured and predicted flow stresses were revealed by the proposed validation techniques, which carry out validation with not the entire, but a single tensile test case.

Keywords

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