流体学
机制(生物学)
计算机科学
纤毛
软机器人
仿生学
微流控
纳米技术
生物系统
人工智能
材料科学
机器人
工程类
航空航天工程
物理
生物
量子力学
细胞生物学
作者
Jie Han,Xiaoguang Dong,Zhen Yin,Shuaizhong Zhang,Meng Li,Zhiqiang Zheng,Musab Cagri Ugurlu,Weitao Jiang,Hongzhong Liu,Metin Sitti
标识
DOI:10.1073/pnas.2308301120
摘要
Artificial cilia integrating both actuation and sensing functions allow simultaneously sensing environmental properties and manipulating fluids in situ, which are promising for environment monitoring and fluidic applications. However, existing artificial cilia have limited ability to sense environmental cues in fluid flows that have versatile information encoded. This limits their potential to work in complex and dynamic fluid-filled environments. Here, we propose a generic actuation-enhanced sensing mechanism to sense complex environmental cues through the active interaction between artificial cilia and the surrounding fluidic environments. The proposed mechanism is based on fluid-cilia interaction by integrating soft robotic artificial cilia with flexible sensors. With a machine learning-based approach, complex environmental cues such as liquid viscosity, environment boundaries, and distributed fluid flows of a wide range of velocities can be sensed, which is beyond the capability of existing artificial cilia. As a proof of concept, we implement this mechanism on magnetically actuated cilia with integrated laser-induced graphene-based sensors and demonstrate sensing fluid apparent viscosity, environment boundaries, and fluid flow speed with a reconfigurable sensitivity and range. The same principle could be potentially applied to other soft robotic systems integrating other actuation and sensing modalities for diverse environmental and fluidic applications.
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