TY - JOUR
T1 - Programmable multistable kirigami chain
T2 - Decoupling energy barrier and snapping force/displacement in a unified topology
AU - Yin, Yanqi
AU - Hu, Yunzhou
AU - Zhang, Yupei
AU - Yu, Yang
AU - Bai, Ruiyu
AU - Wang, Yanjie
AU - Li, Bo
AU - Chen, Guimin
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/9
Y1 - 2024/9
N2 - Arraying bistable cells in a chain results in a multistable mechanical structure that is capable of sequential deformation paths and structural reconfigurability. However, to customize the multistability, for example, a prescribed energy barrier with variable snapping force/displacement, is constrained by the difficulty of decoupling energy from kinematic characteristics since they are always governed by the same geometric parameters. This paper proposes a bistable kirigami cut topology to realize decoupling. Cut parameters are classified into independent groups, corresponding to objective energy barrier or force/displacement, which are consequently independent also. On this basis, a machine learning (ML) and genetic algorithm (GA) based approach is presented to guide the inverse design of the nonlinear responses. Optimal individual kirigami cells that meet decoupled multi-objectives such as energy barrier, snapping force and stable displacement are obtained to construct kirigami chains. The conceivable deformation sequences, configurations and energy/force-displacement curves are validated by both the simulation and experimental results. The proposed mechanism decoupled strategy and inverse design framework open up new horizons for programming energy landscape and provide a general recipe for tailoring multistability in metamaterials.
AB - Arraying bistable cells in a chain results in a multistable mechanical structure that is capable of sequential deformation paths and structural reconfigurability. However, to customize the multistability, for example, a prescribed energy barrier with variable snapping force/displacement, is constrained by the difficulty of decoupling energy from kinematic characteristics since they are always governed by the same geometric parameters. This paper proposes a bistable kirigami cut topology to realize decoupling. Cut parameters are classified into independent groups, corresponding to objective energy barrier or force/displacement, which are consequently independent also. On this basis, a machine learning (ML) and genetic algorithm (GA) based approach is presented to guide the inverse design of the nonlinear responses. Optimal individual kirigami cells that meet decoupled multi-objectives such as energy barrier, snapping force and stable displacement are obtained to construct kirigami chains. The conceivable deformation sequences, configurations and energy/force-displacement curves are validated by both the simulation and experimental results. The proposed mechanism decoupled strategy and inverse design framework open up new horizons for programming energy landscape and provide a general recipe for tailoring multistability in metamaterials.
KW - Inverse design
KW - Kinematics
KW - Kirigami
KW - Mechanical metamaterial
KW - Multistable structure
UR - https://www.scopus.com/pages/publications/85193852471
U2 - 10.1016/j.mechmachtheory.2024.105691
DO - 10.1016/j.mechmachtheory.2024.105691
M3 - 文章
AN - SCOPUS:85193852471
SN - 0094-114X
VL - 199
JO - Mechanism and Machine Theory
JF - Mechanism and Machine Theory
M1 - 105691
ER -