Co-design of materials, structures and stimuli for magnetic soft robots with large deformation and dynamic contacts
Journal:
arXiv
Published Date:
Mar 28, 2025
Abstract
Magnetic soft robots embedded with hard magnetic particles enable untethered
actuation via external magnetic fields, offering remote, rapid, and precise
control, which is highly promising for biomedical applications. However,
designing such systems is challenging due to the complex interplay of
magneto-elastic dynamics, large deformation, solid contacts, time-varying
stimuli, and posture-dependent loading. As a result, most existing research
relies on heuristics and trial-and-error methods or focuses on the independent
design of stimuli or structures under static conditions. We propose a topology
optimization framework for magnetic soft robots that simultaneously designs
structures, location-specific material magnetization and time-varying magnetic
stimuli, accounting for large deformations, dynamic motion, and solid contacts.
This is achieved by integrating generalized topology optimization with the
magneto-elastic material point method, which supports GPU-accelerated parallel
simulations and auto-differentiation for sensitivity analysis. We applied this
framework to design magnetic robots for various tasks, including multi-task
shape morphing and locomotion, in both 2D and 3D. The method autonomously
generates optimized robotic systems to achieve target behaviors without
requiring human intervention. Despite the nonlinear physics and large design
space, it demonstrates exceptional efficiency, completing all cases within
minutes. This proposed framework represents a significant step toward the
automatic co-design of magnetic soft robots for applications such as
metasurfaces, drug delivery, and minimally invasive procedures.