4.7 Article

An investigation of geometrically necessary dislocations and back stress in large grained tantalum via EBSD and CPFEM

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.msea.2019.138704

Keywords

back; stress; ebsd; gnd; tantalum; cpfem

Funding

  1. U.S. Department of Energy (DOE), Office of Science, Basic Energy Sciences (BES) [DE-SC-0012587, DE-SC-0012483]
  2. U.S. Department of Energy's National Nuclear Security Administration [DE-NA0003525]

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This study explores the evolution of GNDs and their effects on back stress through experimental and computational methods. Four large-grained tantalum tensile specimens were strained in uniaxial tension, electron backscatter diffraction (EBSD) data were collected, and geometrically necessary dislocation (GND) maps of the four specimens in the unloaded state were produced. EBSD-based GND maps revealed several types of features with high GND content which caused back stress in the specimens. Correlations between five geometrically-based grain boundary (GB) transmission factors and the GB GND content were evaluated, and statistically significant correlations were found for transmission factors based on Livingston and Chalmer's N factor, Werner and Pranti's slip transfer number, and GB misorlentation. The sign of individual components of the Nye tensor were used to visually and quantitatively identify clustering of GNDs of the same sign, thus giving additional evidence of increasing back stress due to deformation. Deformation of one of the specimens was simulated using multiple CPFEM based modeling approaches and predicted stress-strain responses are compared. The super dislocation model (SD model) - a crystal plasticity finite element method (CPFEM) which incorporates elastic dislocation interactions - was able to isolate impact of back stress on the overall flow stress. The SD model predicted correct stresses when compared with experimental data; however, when the elastic interactions in the SD model were turned off, stress predictions were 25% too low. Thus, demonstrating the importance of incorporating back stress into the model.

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