Nature Communications (Feb 2024)

Computational design of ultra-robust strain sensors for soft robot perception and autonomy

  • Haitao Yang,
  • Shuo Ding,
  • Jiahao Wang,
  • Shuo Sun,
  • Ruphan Swaminathan,
  • Serene Wen Ling Ng,
  • Xinglong Pan,
  • Ghim Wei Ho

DOI
https://doi.org/10.1038/s41467-024-45786-y
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 15

Abstract

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Abstract Compliant strain sensors are crucial for soft robots’ perception and autonomy. However, their deformable bodies and dynamic actuation pose challenges in predictive sensor manufacturing and long-term robustness. This necessitates accurate sensor modelling and well-controlled sensor structural changes under strain. Here, we present a computational sensor design featuring a programmed crack array within micro-crumples strategy. By controlling the user-defined structure, the sensing performance becomes highly tunable and can be accurately modelled by physical models. Moreover, they maintain robust responsiveness under various demanding conditions including noise interruptions (50% strain), intermittent cyclic loadings (100,000 cycles), and dynamic frequencies (0–23 Hz), satisfying soft robots of diverse scaling from macro to micro. Finally, machine intelligence is applied to a sensor-integrated origami robot, enabling robotic trajectory prediction (<4% error) and topographical altitude awareness (<10% error). This strategy holds promise for advancing soft robotic capabilities in exploration, rescue operations, and swarming behaviors in complex environments.