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Highly Reliable Textile-Type Memristor by Designing Aligned Nanochannels.

Yue LiuXufeng ZhouHui YanXiang ShiKe ChenJinyang ZhouJialin MengTianyu WangYulu AiJingxia WuJiaxin ChenKaiwen ZengLin ChenYahui PengXuemei SunPeining ChenHuisheng Peng
Published in: Advanced materials (Deerfield Beach, Fla.) (2023)
Information-processing devices are the core components of modern electronics. Integrating them into textiles is the indispensable demand for electronic textiles to form close-loop functional systems. Memristors with cross-bar configuration are regarded as promising building blocks to design woven information-processing devices that seamlessly unify with textiles. However, the memristors always suffer from severe temporal and spatial variations due to the random growth of conductive filaments during filamentary switching processes. Here, inspired by the ion nanochannels across synaptic membranes, we report a highly reliable textile-type memristor made of Pt/CuZnS memristive fiber with aligned nanochannels, showing small set voltage variation (<5.6%) under ultralow set voltage (∼0.089 V), high on/off ratio (∼10 6 ) and low power consumption (0.1 nW). Experimental evidences indicate that nanochannels with abundant active S defects could anchor silver ions and confine their migrations to form orderly and efficient conductive filaments. Such memristive performances enable the resultant textile-type memristor array to have high device-to-device uniformity and process complex physiological data like brainwave signals with high recognition accuracy (95%). Our textile-type memristor arrays are mechanically durable to withstand hundreds of bending and sliding deformations, and seamlessly unified with sensing, power-supplying and displaying textiles/fibers to form all-textile integrated electronic systems for new-generation human-machine interactions. This article is protected by copyright. All rights reserved.
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