稳健性(进化)
灵敏度(控制系统)
计算机科学
生物
工程类
电子工程
遗传学
基因
作者
Yulian Peng,Zhengyan Wang,Houping Wu,Junchen Luo,Xinxin Chang,Yufeng Wang,Shiwu Zhang,Zhi Hua Feng,Unyong Jeong,Hongbo Wang
标识
DOI:10.1038/s41467-025-61784-0
摘要
Soft mechanical sensors with high performance, mechanical robustness, and manufacturing reproducibility are crucial for robotics perception, but simultaneously satisfying these criteria is rarely achieved. Here, we suggest a magnetic crack-based piezoinductive sensor (MC-PIS) which exploits the strain modulation of magnetic flux in cracked ferrite films. The MC-PIS is insensitive to fatigue-induced crack propagation and environmental changes, showing same performance even when scratched in half or run over by a car. It can detect bidirectional bending with a precision of 0.01° from -200° to 327°, allowing for real-time reconstruction of dynamic shape changes of a flexible ribbon. We demonstrate an artificial finger recognizing surface topology and musical notes via vibrations, a crawling robot responding appropriately to external stimuli, a tree-planting gripper performing consecutive tasks from digging soil, removing stones, to placing trees. The MC-PIS opens a new paradigm to develop ultrasensitive yet highly robust sensors in real-world robotics applications.
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