Scientific Data (Oct 2024)

Digital image correlation and infrared thermography data for seven unique geometries of 304L stainless steel

  • E. M. C. Jones,
  • P. L. Reu,
  • S. L. B. Kramer,
  • A. R. Jones,
  • J. D. Carroll,
  • K. N. Karlson,
  • D. T. Seidl,
  • D. Z. Turner

DOI
https://doi.org/10.1038/s41597-024-03949-y
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 15

Abstract

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Abstract Material Testing 2.0 (MT2.0) is a paradigm that advocates for the use of rich, full-field data, such as from digital image correlation and infrared thermography, for material identification. By employing heterogeneous, multi-axial data in conjunction with sophisticated inverse calibration techniques such as finite element model updating and the virtual fields method, MT2.0 aims to reduce the number of specimens needed for material identification and to increase confidence in the calibration results. To support continued development, improvement, and validation of such inverse methods—specifically for rate-dependent, temperature-dependent, and anisotropic metal plasticity models—we provide here a thorough experimental data set for 304L stainless steel sheet metal. The data set includes full-field displacement, strain, and temperature data for seven unique specimen geometries tested at different strain rates and in different material orientations. Commensurate extensometer strain data from tensile dog bones is provided as well for comparison. We believe this complete data set will be a valuable contribution to the experimental and computational mechanics communities, supporting continued advances in material identification methods.