Element-deletion-enhanced digital image correlation for automated crack detection and tracking in lattice materials
Alessandra Lingua, Arturo Chao Correas, Fran\c{c}ois Hild, David S. Kammer

TL;DR
This paper presents a novel global digital image correlation method tailored for lattice materials, enabling accurate crack detection and tracking by automatically removing damaged elements during analysis.
Contribution
It introduces an element-deletion-enhanced DIC framework that directly solves on the lattice mesh, improving damage detection and crack path resolution in architected materials.
Findings
Accurately captures damage initiation and crack propagation in 3D-printed lattices.
Provides a physically consistent displacement field on evolving lattice topology.
Estimates critical failure strain from damaged element identification.
Abstract
Architected materials can exhibit remarkable combinations of stiffness, strength, and toughness, yet their application is currently limited by an incomplete understanding of how cracks initiate and propagate through their discrete architecture. Elucidating the mechanisms that underpin these processes is challenging because lattice failure is governed by highly localized deformations of slender beams, which fall outside the resolution and assumptions of optical methods developed for continuum solids, such as digital image correlation (DIC). Thus, characterizing crack propagation within lattice materials requires measurement strategies capable of resolving lattice-scale deformations while accounting for both the intrinsic discreteness of lattice architectures and the progressive formation of material discontinuities during failure. This work introduces a global DIC framework tailored to…
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