Visualizing Thermally Activated Memristive Switching in Percolating Networks of Solution‐Processed 2D Semiconductors

记忆电阻器 神经形态工程学 材料科学 纳米技术 半导体 光电子学 电子工程 人工神经网络 计算机科学 机器学习 工程类
作者
Vinod K. Sangwan,Sonal V. Rangnekar,Joohoon Kang,Jianan Shen,Hong‐Sub Lee,David Lam,Junhua Shen,Xiaolong Liu,Ana Carolina Mazarin de Moraes,Lidia Kuo,Jie Gu,Haihua Wang,Mark C. Hersam
出处
期刊:Advanced Functional Materials [Wiley]
卷期号:31 (52) 被引量:20
标识
DOI:10.1002/adfm.202107385
摘要

Abstract Memristive systems present a low‐power alternative to silicon‐based electronics for neuromorphic and in‐memory computation. 2D materials have been increasingly explored for memristive applications due to their novel biomimetic functions, ultrathin geometry for ultimate scaling limits, and potential for fabricating large‐area, flexible, and printed neuromorphic devices. While the switching mechanism in memristors based on single 2D nanosheets is similar to conventional oxide memristors, the switching mechanism in nanosheet composite films is complicated by the interplay of multiple physical processes and the inaccessibility of the active area in a two‐terminal vertical geometry. Here, the authors report thermally activated memristors fabricated from percolating networks of diverse solution‐processed 2D semiconductors including MoS 2 , ReS 2 , WS 2 , and InSe. The mechanisms underlying threshold switching and negative differential resistance are elucidated by designing large‐area lateral memristors that allow the direct observation of filament and dendrite formation using in situ spatially resolved optical, chemical, and thermal analyses. The high switching ratios (up to 10 3 ) that are achieved at low fields (≈4 kV cm −1 ) are explained by thermally assisted electrical discharge that preferentially occurs at the sharp edges of 2D nanosheets. Overall, this work establishes percolating networks of solution‐processed 2D semiconductors as a platform for neuromorphic architectures.
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