摩擦电效应
材料科学
触觉知觉
触觉传感器
补偿(心理学)
感知
纳米技术
人工智能
复合材料
计算机科学
心理学
神经科学
机器人
精神分析
作者
Xiangkun Bo,Yukun Wang,Hong Zhao,Ruiqin Zhang,Walid A. Daoud
标识
DOI:10.1002/adfm.202514567
摘要
Abstract Artificial intelligence‐assisted self‐powered triboelectric sensors have significant potential in sensing and bionic engineering, however their low electrical output limits their sensitivity and signal‐to‐noise ratio. Herein, a novel electron compensation strategy is proposed to enhance the electrical output. The approach involves integrating polyethyleneimine (PEI) and carbon black in a polymeric matrix to introduce an abundance of electron‐donating groups and thus establishing an electron‐transportation network. This facilitates the extraction of bulk electrons to replenish the surface electron consumption during contact‐separation. The carbon black serves to buffer the tearing force during stretching, thereby enhancing the mechanical durability of the film. Furthermore, the incorporation of carbon black creates electron conductive networks, enabling efficient transport of electrons from the bulk of PEI to the surface. As a result of high tribopositivity and electron replenishing mechanism, the composite‐based self‐powered triboelectric sensor shows notable open circuit voltage of 258 V and charge density of 0.270 mC m −2 , which are 3.85‐fold and 4.09‐fold higher than pristine water polyurethane, demonstrating a high sensitivity of 75.3 V mm −1 . This research provides a novel approach toward high sensitivity for the advancement of machine learning assisted tactile perception recognition.
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