多金属氧酸盐
记忆电阻器
神经形态工程学
材料科学
横杆开关
油藏计算
纳米技术
计算机科学
人工神经网络
电子工程
人工智能
循环神经网络
电信
工程类
生物化学
催化作用
化学
作者
Guohua Zhang,Ziyu Xiong,Yue Gong,Zexi Zhu,Ziyu Lv,Yan Wang,Jia‐Qin Yang,Xuechao Xing,Zhanpeng Wang,Jingrun Qin,Ye Zhou,Su‐Ting Han
标识
DOI:10.1002/adfm.202204721
摘要
Abstract Memristor‐based reservoir computing systems represent an attractive approach in processing the time‐series information with a low training cost, in a range of fields from finance to engineering. Previous investigations have identified the charming potential of organic devices for next‐generation memory devices. However, the structural inhomogeneity and wide energy bandgap of most organic polymers usually lead to low‐yield and high operation power microelectronic devices, that permit their further application in neuromorphic computing. Herein, an organic‐inorganic hybrid memristor that can be conveniently processed into crossbar devices with tolerable yield via spin‐coating is shown. The doped inorganic polyoxometalate (POM) clusters via supramolecular assembly strategy not only act as the charge trapping modules but also assist the formation of conductive filaments due to their delocalized electrostatic adsorption property. With the dynamic short‐term memory property, the designed memristor devices can be used as a reservoir framework to process temporal information directly. A smaller reservoir with 100 memristors can be used for the recognition of emotion patterns efficiently. This strategy demonstrates the unique role of POM in developing low‐power and repeated memristors, which provides a new material platform to design advanced function memristors for neuromorphic computing.
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