神经形态工程学
双层
卷积神经网络
可靠性(半导体)
计算机科学
记忆电阻器
电导
人工神经网络
堆积
材料科学
理论(学习稳定性)
堆栈(抽象数据类型)
深度学习
电阻式触摸屏
电阻随机存取存储器
人工智能
冯·诺依曼建筑
纳米技术
生物系统
电子工程
电气工程
化学
工程类
物理
机器学习
膜
电压
操作系统
生物
功率(物理)
量子力学
有机化学
生物化学
计算机视觉
凝聚态物理
程序设计语言
作者
Jun‐Hwe Cha,Byung Chul Jang,Jungyeop Oh,Changhyeon Lee,Sang Yoon Yang,Hamin Park,Sung Gap Im,Sung‐Yool Choi
标识
DOI:10.1002/aisy.202200018
摘要
As the use of artificial intelligence (AI) soars, the development of novel neuromorphic computing is demanding because of the disadvantages of the von Neumann architecture. Furthermore, extensive research on electrochemical metallization (ECM) memristors as synaptic cells have been carried out toward a linear conductance update for online learning applications. In most cases, however, a conductance distribution change over time has not been studied as a major issue, giving less consideration to inference‐only computing accelerators based on offline learning. Herein, organic–inorganic bilayer stacking for synaptic unit cells using poly(1,3,5‐trivinyl‐1,3,5‐trimethyl cyclotrisiloxane) (pV3D3) and Al 2 O 3 thin films is suggested, showing highly enhanced reliability for offline learning. The bilayer structure achieves better reliability and control of the analog resistive switching and synaptic functions, respectively, through the guided formation of conductive filaments via tip‐enhanced electric fields. In addition, 5‐bit multilevel states achieve long‐term stability (>10 4 s) following an in‐depth study on conductance‐level stability. Finally, a device‐to‐system‐level simulation is performed by building a convolutional neural network (CNN) based on the hybrid devices. This highlighted the significance of multilevel states in fully connected layers. It is believed that the study provides a practical approach to using ECM‐based memristors for inference‐only neural network accelerators.
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