TY - JOUR
T1 - Self-supporting shell lattices
T2 - explicit design method and neural accelerated evolutionary optimization
AU - Hu, Haoran
AU - Duan, Shengyu
AU - Zhao, Zeang
AU - Wang, Panding
AU - Lei, Hongshuai
N1 - Publisher Copyright:
© 2026 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
PY - 2026
Y1 - 2026
N2 - Shell lattice metamaterials possess unique topological and physical characteristics that demonstrate multifunctional application potential across various important fields. However, their engineering adoption has been limited by manufacturing processes, particularly the need for supports in additive manufacturing of overhanging regions. This study presents an explicit design method for shell lattices based on B-spline curves, which enables parametric control over the surface topology and achieves self-supporting characteristics at the unit cell level. The effectiveness of the design method was validated via manufacturing using both vat photopolymerization and laser powder bed fusion processes. A pixel-based representation method was developed to characterise the topological features of variable-thickness shell lattice structures. Additionally, a neural network accelerated evolutionary optimisation method was proposed, which enhances the computational efficiency without increasing the data burdens. This method was successfully applied to improve the elastic properties of self-supporting shell lattices. Numerical simulations and experimental results demonstrated that the optimised structures exhibited nearly uniform stiffness across all loading orientations, achieving increases of up to 41.79% in uniaxial elastic moduli and 79.3% in shear moduli after optimisation. The proposed optimisation framework effectively mitigates the data dependency inherent in traditional machine-learning aided genetic algorithms, demonstrating strong potential for complex, high-dimensional optimisation tasks.
AB - Shell lattice metamaterials possess unique topological and physical characteristics that demonstrate multifunctional application potential across various important fields. However, their engineering adoption has been limited by manufacturing processes, particularly the need for supports in additive manufacturing of overhanging regions. This study presents an explicit design method for shell lattices based on B-spline curves, which enables parametric control over the surface topology and achieves self-supporting characteristics at the unit cell level. The effectiveness of the design method was validated via manufacturing using both vat photopolymerization and laser powder bed fusion processes. A pixel-based representation method was developed to characterise the topological features of variable-thickness shell lattice structures. Additionally, a neural network accelerated evolutionary optimisation method was proposed, which enhances the computational efficiency without increasing the data burdens. This method was successfully applied to improve the elastic properties of self-supporting shell lattices. Numerical simulations and experimental results demonstrated that the optimised structures exhibited nearly uniform stiffness across all loading orientations, achieving increases of up to 41.79% in uniaxial elastic moduli and 79.3% in shear moduli after optimisation. The proposed optimisation framework effectively mitigates the data dependency inherent in traditional machine-learning aided genetic algorithms, demonstrating strong potential for complex, high-dimensional optimisation tasks.
KW - Additive manufacturing
KW - machine learning
KW - optimization design
KW - self-supporting
KW - shell lattice structure
UR - https://www.scopus.com/pages/publications/105027053851
U2 - 10.1080/17452759.2025.2611680
DO - 10.1080/17452759.2025.2611680
M3 - Article
AN - SCOPUS:105027053851
SN - 1745-2759
VL - 21
JO - Virtual and Physical Prototyping
JF - Virtual and Physical Prototyping
IS - 1
M1 - e2611680
ER -