A topology optimisation framework to design test specimens for one-shot identification or discovery of material models
Journal:
arXiv
Published Date:
Jan 22, 2025
Abstract
The increasing availability of full-field displacement data from imaging
techniques in experimental mechanics is determining a gradual shift in the
paradigm of material model calibration and discovery, from using several
simple-geometry tests towards a few, or even one single test with complicated
geometry. The feasibility of such a "one-shot" calibration or discovery heavily
relies upon the richness of the measured displacement data, i.e., their ability
to probe the space of the state variables and the stress space (whereby the
stresses depend on the constitutive law being sought) to an extent sufficient
for an accurate and robust calibration or discovery process. The richness of
the displacement data is in turn directly governed by the specimen geometry. In
this paper, we propose a density-based topology optimisation framework to
optimally design the geometry of the target specimen for calibration of an
anisotropic elastic material model. To this end, we perform automatic,
high-resolution specimen design by maximising the robustness of the solution of
the inverse problem, i.e., the identified material parameters, given noisy
displacement measurements from digital image correlation. We discuss the choice
of the cost function and the design of the topology optimisation framework, and
we analyse a range of optimised topologies generated for the identification of
isotropic and anisotropic elastic responses.