神经形态工程学
卤化物
材料科学
光电子学
能量(信号处理)
工程物理
计算机科学
化学
物理
无机化学
人工智能
人工神经网络
量子力学
作者
Lue Zhou,Shuyao Han,Heng Liu,Ziyu He,Junli Huang,Yuncheng Mu,Yuhao Xie,Xiaodong Pi,Xinhui Lu,Shu Zhou,Yanglong Hou
标识
DOI:10.1016/j.xcrp.2024.102078
摘要
As artificial intelligence emerges for substituting human labor, novel forms of computing are currently in demand. Synaptic memristors functioning as the basic element of the brain serve as a promising strategy to fundamentally approach brain-inspired computing. However, several great challenges must be addressed before practical memristor-based neuromorphic computing can be realized, including substandard power consumption, operational stability, and temperature tolerance. Here, we report on the capacity to confront all these challenges by exploiting the ability of single-crystalline halide perovskites to engage in artificial synapses with excellent synaptic weight modulation. Temperature-dependent electrical-cycling test and modeling unveil a unique synaptic weight updating mechanism where an ionic inductive effect drives resistive switching from a high-resistance state to a low-resistance state by symmetrically lowered Schottky barrier heights. A proof-of-concept demonstration for neuromorphic computing is performed by using the robust device comprising spiking neural networks, which are proven effective for recognizing handwritten digits, with an accuracy of over 90% in a wide temperature range.
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