材料科学
仿真
记忆电阻器
对偶(语法数字)
钙钛矿(结构)
电阻随机存取存储器
电阻式触摸屏
光电子学
非易失性存储器
神经形态工程学
纳米技术
电气工程
计算机科学
电压
化学工程
操作系统
艺术
文学类
机器学习
经济增长
人工神经网络
经济
工程类
作者
Zhenwang Luo,Weisheng Wang,Junhui Wu,Guohua Ma,Yanna Hou,Cheng Yang,Xu Wang,Fei Zheng,Zhenfu Zhao,Ziqi Zhao,Liqiang Zhu,Ziyang Hu
标识
DOI:10.1021/acsami.4c21159
摘要
The increasing computational demands of artificial intelligence (AI) algorithms are exceeding the capabilities of conventional computing architectures, creating a strong need for novel materials and paradigms. Memristors that integrate diverse resistive switching (RS) behaviors provide a promising avenue for developing novel computing architectures. In this study, we achieve the coexistence of volatile and nonvolatile RS behaviors in quasi-2D perovskite memristor (Q-2DPM). The Q-2DPM exhibits competitive performance as a nonvolatile memory. Multiple synaptic functions have been successfully simulated on Q-2DPM, such as excitatory postsynaptic currents, paired-pulse facilitation, and long-term potentiation/depression. Furthermore, artificial neural networks using Q-2DPM synapses achieve high accuracy in MNIST image classification tasks. The Q-2DPM's inherent characteristics suitable for reservoir computing are also demonstrated through its application in a pulse-stream-based digital classification experiment, showcasing its impressive performance. The elucidation of the dual RS mechanisms within Q-2DPM provides fresh insights into memristor RS behavior and underscores the potential of achieving diverse computational units through a single device. This work paves the way for the implementation of physical neuromorphic hardware architectures and the advancement of sophisticated computational primitives, offering a significant step toward the next generation of computing technologies.
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