材料科学
灵敏度(控制系统)
接头(建筑物)
电容感应
多孔性
压力传感器
纤维
康复
计算机科学
振动
纺纱
声学
过程(计算)
传感器阵列
横杆开关
光纤传感器
触觉传感器
机器人
构造(python库)
机械工程
匹配(统计)
人工智能
作者
Wei Ren,Bolin Zhu,Wendong Li,Mengjie Gao,C. L. Luo,Lamu Dazhen,Jia You,Mingyang Lu,Shiteng Wu,Cancan Zhang,Ying Hong,Zhihe Long,Guangxian Li,Junlong Yang
标识
DOI:10.1002/adfm.202520066
摘要
Abstract Stroke‐induced hemiplegia is a major cause of long‐term disability, with recovery relying on repetitive joint training. However, conventional methods often require assistance from professionals or the use of bulky, nonconformal devices, hindering efficient therapy. In this paper, a simple strategy is presented to construct intricate microstructures on individual fibers. By controlling the solvent evaporation behavior during the solution blow spinning process, hierarchically porous iontronic fiber crossbar (HPIFC) pressure sensors are fabricated. These sensors exhibit exceptional sensitivity that exceeds that of most existing capacitive fiber crossbar sensors by more than two orders of magnitude. Leveraging sensor arrays integrated with machine learning algorithms, subtle joint motions are successfully detected as small as 1.27° and achieve accurate recognition of multiple angular degrees‐of‐freedom (multiple angular DoF) joint movements. On the basis of these findings, a passive rehabilitation training system is developed for hemiplegic patients, as well as an automated system for the quantitative assessment of rehabilitation progress, offering a comprehensive and efficient solution for poststroke recovery.
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