Physics-aware differentiable design of magnetically actuated kirigami for shape morphing
August 09, 2023 Β· Declared Dead Β· π Nature Communications
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Authors
Liwei Wang, Yilong Chang, Shuai Wu, Ruike Renee Zhao, Wei Chen
arXiv ID
2308.05054
Category
physics.app-ph
Cross-listed
cs.CE,
cs.RO
Citations
37
Venue
Nature Communications
Last Checked
3 months ago
Abstract
Shape morphing that transforms morphologies in response to stimuli is crucial for future multifunctional systems. While kirigami holds great promise in enhancing shape-morphing, existing designs primarily focus on kinematics and overlook the underlying physics. This study introduces a differentiable inverse design framework that considers the physical interplay between geometry, materials, and stimuli of active kirigami, made by soft material embedded with magnetic particles, to realize target shape-morphing upon magnetic excitation. We achieve this by combining differentiable kinematics and energy models into a constrained optimization, simultaneously designing the cuts and magnetization orientations to ensure kinematic and physical feasibility. Complex kirigami designs are obtained automatically with unparallel efficiency, which can be remotely controlled to morph into intricate target shapes and even multiple states. The proposed framework can be extended to accommodate various active systems, bridging geometry and physics to push the frontiers in shape-morphing applications, like flexible electronics and minimally invasive surgery.
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