Anisotropic yield models for lattice unit cell structures exploiting orthotropic symmetry
Numerical homogenization enables efficient computational analysis and design of multiscale structures made of micro-architected materials including lattice unit cells. However, predicting yield is nontrivial because it requires accurate and efficient predictions of the maximum stress inside the homo...
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Veröffentlicht in: | Computer methods in applied mechanics and engineering 2022-05, Vol.394 (N/A), p.114935, Article 114935 |
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Sprache: | eng |
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Zusammenfassung: | Numerical homogenization enables efficient computational analysis and design of multiscale structures made of micro-architected materials including lattice unit cells. However, predicting yield is nontrivial because it requires accurate and efficient predictions of the maximum stress inside the homogenized unit cells. To address this challenge, we develop a macroscale anisotropic yield function for micro-architected materials. The yield function depends on the three-dimensional macroscale stress state and the parameters describing a family of micro-architectures, such as the radii of the struts in a lattice unit cell. To ensure accuracy, we determine the maximum stress using three-dimensional continuum finite-element analysis. To ensure efficiency, we construct surrogate models from the aforementioned high-fidelity results for yield prediction. To reduce simulation costs and surrogate modeling complexity, we leverage orthotropic symmetry commonly found in lattice unit cells. In this paper, we provide a thorough presentation of group representations and the systematic procedure to exploit orthotropic domain symmetry in homogenization and surrogate modeling. We illustrate the use of linear homogenization results to predict yield in specific unit cells without further simulations. We furthermore show that surrogate modeling presents a viable option for anisotropic yield prediction in a continuously parametrized family of micro-architectures. More specifically, despite the dimensionality and degree of nonlinearity in the maximum micro von Mises stress within the unit cell, the surrogate models can predict it with less than 5% error at least 90% of the time. Moreover, the largest under-prediction error, which is more critical than the over-prediction error, is typically less than 10%.
•Maximum microscale stress can be predicted by tracking a few locations in the unit cell.•Numerical homogenization in 3D is expedited using symmetry group representations.•Anisotropic yield via homogenization analysis has the expected invariance properties.•The above findings enable efficient surrogate models for predicting lattice yield. |
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ISSN: | 0045-7825 1879-2138 |
DOI: | 10.1016/j.cma.2022.114935 |