Neural reservoir control of a soft bio-hybrid arm
Noel Naughton, Arman Tekinalp, Keshav Shivam, Seung Hung Kim, Volodymyr Kindratenko, Mattia Gazzola
- 发表年份
- 2025
- 访问权限
- 开放获取
摘要
A long-standing engineering problem, the control of soft robots is difficult because of their highly non-linear, heterogeneous, anisotropic, and distributed nature. Here, bridging engineering and biology, a neural reservoir is employed for the dynamic control of a bio-hybrid model arm made of multiple muscle-tendon groups enveloping an elastic spine. We show how the use of reservoirs facilitates simultaneous control and self-modeling across a set of challenging tasks, outperforming classic neural network approaches. Further, by implementing a spiking reservoir on neuromorphic hardware, energy efficiency is achieved, with nearly two-orders of magnitude improvement relative to standard CPUs, with implications for the on-board control of untethered, small-scale soft robots.
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