TY - JOUR
T1 - GNNs for mechanical properties prediction of strut-based lattice structures
AU - Jiang, Bingyue
AU - Wang, Yangwei
AU - Niu, Haiyan
AU - Cheng, Xingwang
AU - Zhao, Pingluo
AU - Bao, Jiawei
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/5/1
Y1 - 2024/5/1
N2 - The mechanical properties of strut-based lattice structures are greatly influenced by cell topology, which can be modified by changing connections between nodes within a single unit cell. However, since cell topology is not a continuous variable and varies in non-Euclidean space, it is difficult to provide a quantitative relationship between cell topology and mechanical properties. Here, we presented a graph-based deep learning approach for mechanical property prediction of lattice structures with a message passing neural network (MPNN). A dataset of over 100,000 cell topologies was first generated using a proposed exhaustive algorithm. The MPNN model was trained and tested using simulated compressive strength data of lattice panels with 1980 cell topologies randomly selected from the topology dataset. The mean absolute percentage error on the test dataset reached 8.82 %. Based on the trained MPNN model, 10 cell topologies corresponding to the highest predicted compressive strength at different relative densities were used to manufacture test specimens by powder bed fusion technique. The test specimens exhibited higher compressive strength than most typical lattices. This work reveals a potential for applying graph-based deep learning techniques on property prediction and topology optimization of strut-based lattice structures.
AB - The mechanical properties of strut-based lattice structures are greatly influenced by cell topology, which can be modified by changing connections between nodes within a single unit cell. However, since cell topology is not a continuous variable and varies in non-Euclidean space, it is difficult to provide a quantitative relationship between cell topology and mechanical properties. Here, we presented a graph-based deep learning approach for mechanical property prediction of lattice structures with a message passing neural network (MPNN). A dataset of over 100,000 cell topologies was first generated using a proposed exhaustive algorithm. The MPNN model was trained and tested using simulated compressive strength data of lattice panels with 1980 cell topologies randomly selected from the topology dataset. The mean absolute percentage error on the test dataset reached 8.82 %. Based on the trained MPNN model, 10 cell topologies corresponding to the highest predicted compressive strength at different relative densities were used to manufacture test specimens by powder bed fusion technique. The test specimens exhibited higher compressive strength than most typical lattices. This work reveals a potential for applying graph-based deep learning techniques on property prediction and topology optimization of strut-based lattice structures.
KW - Additive manufacturing
KW - Cell topology
KW - Deep learning
KW - Graph neural networks
KW - Metamaterial
KW - Strut-based lattice structures
UR - http://www.scopus.com/inward/record.url?scp=85184151133&partnerID=8YFLogxK
U2 - 10.1016/j.ijmecsci.2024.109082
DO - 10.1016/j.ijmecsci.2024.109082
M3 - Article
AN - SCOPUS:85184151133
SN - 0020-7403
VL - 269
JO - International Journal of Mechanical Sciences
JF - International Journal of Mechanical Sciences
M1 - 109082
ER -