Study of lattice strain evolution during biaxial deformation of stainless steel using a finite element and fast Fourier transform based multi-scale approach

  • M. V. Upadhyay
  • , S. Van Petegem
  • , T. Panzner
  • , R. A. Lebensohn
  • , H. Van Swygenhoven

Research output: Contribution to journalArticlepeer-review

Abstract

A multi-scale elastic-plastic finite element and fast Fourier transform based approach is proposed to study lattice strain evolution during uniaxial and biaxial loading of stainless steel cruciform shaped samples. At the macroscale, finite element simulations capture the complex coupling between applied forces in the arms and gauge stresses induced by the cruciform geometry. The predicted gauge stresses are used as macroscopic boundary conditions to drive a mesoscale elasto-viscoplastic fast Fourier transform model, from which lattice strains are calculated for particular grain families. The calculated lattice strain evolution matches well with experimental values from in-situ neutron diffraction measurements and demonstrates that the spread in lattice strain evolution between different grain families decreases with increasing biaxial stress ratio. During equibiaxial loading, the model reveals that the lattice strain evolution in all grain families, and not just the 311 grain family, is representative of the polycrystalline response. A detailed quantitative analysis of the 200 and 220 grain family reveals that the contribution of elastic and plastic anisotropy to the lattice strain evolution significantly depends on the applied stress ratio.

Original languageEnglish
Pages (from-to)28-43
Number of pages16
JournalActa Materialia
Volume118
DOIs
Publication statusPublished - 1 Oct 2016
Externally publishedYes

Keywords

  • Biaxial stresses
  • Finite element
  • Lattice strains
  • Multi-scale modeling
  • Neutron diffraction

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