神经形态工程学
油藏计算
MNIST数据库
计算机科学
特征(语言学)
材料科学
计算机硬件
横杆开关
频道(广播)
任务(项目管理)
计算机体系结构
嵌入式系统
深度学习
人工智能
人工神经网络
循环神经网络
工程类
计算机网络
电信
语言学
哲学
系统工程
作者
Hyeonji Lee,Jungyeop Oh,Wonbae Ahn,Mingu Kang,Seohak Park,H. Alicia Kim,S. J. Ben Yoo,Byung Chul Jang,Sung‐Yool Choi
标识
DOI:10.1002/adfm.202416811
摘要
Abstract Reservoir computing (RC) has garnered considerable interest owing to its uncomplicated network structure and minimal training costs. Nevertheless, the computing capacity of RC systems is limited by the material‐dependent physical dynamics of reservoir devices. In this study, an efficient neuromorphic reservoir device with adjustable reservoir states, achieved through the development of an electrically tunable three‐terminal charge trap memory, is introduced. This device utilizes molybdenum disulfide (MoS 2 ) as the channel material and a perhydropolysilazane‐based charge trap layer. Notably, the absence of a tunneling layer in the device structure enables dynamic resistive switching, characterized by outstanding endurance and an excellent memory window. Furthermore, by implementing a simple input decay and refresh scheme, a reconfigurable neuromorphic device capable of multiple feature extraction and functioning as an artificial synapse is developed. The device's efficacy is validated through device‐to‐system‐level simulations within a hardware‐based wide RC (WRC) system, resulting in an improved recognition rate in the MNIST hand‐written digit recognition task from 87.6% to 91.0%, a testament to the enhanced computing capacity. This strategic approach advances the development of hardware‐based WRC systems, marking a significant step toward energy‐efficient reservoir computing.
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