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arxiv 2302.12647 v1 pith:MVWZMVJT submitted 2023-02-24 cs.RO

Bioinspired soft robotics: How do we learn from creatures?

classification cs.RO
keywords creatureslearnsoftrobotsapplicationsapplybiologicalcategories
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Soft robotics has opened a unique path to flexibility and environmental adaptability, learning from nature and reproducing biological behaviors. Nature implies answers for how to apply robots to real life. To find out how we learn from creatures to design and apply soft robots, in this Review, we propose a classification method to summarize soft robots based on different functions of biological systems: self-growing, self-healing, self-responsive, and self-circulatory. The bio-function based classification logic is presented to explain why we learn from creatures. State-of-art technologies, characteristics, pros, cons, challenges, and potential applications of these categories are analyzed to illustrate what we learned from creatures. By intersecting these categories, the existing and potential bio-inspired applications are overviewed and outlooked to finally find the answer, that is, how we learn from creatures.

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