神经形态工程学
电阻随机存取存储器
堆栈(抽象数据类型)
蛋白质丝
GSM演进的增强数据速率
计算机科学
CMOS芯片
架空(工程)
材料科学
边缘计算
电子工程
高效能源利用
人工神经网络
记忆电阻器
内存处理
光电子学
电气工程
工程类
人工智能
电压
程序设计语言
操作系统
搜索引擎
情报检索
按示例查询
Web搜索查询
复合材料
作者
Jaeseoung Park,Ashwani Kumar,Yucheng Zhou,Sangheon Oh,Jeong Hun Kim,Yuhan Shi,Soumil Jain,Gopabandhu Hota,Erbin Qiu,Amelie L. Nagle,Iván K. Schuller,Catherine D. Schuman,Gert Cauwenberghs,Duygu Kuzum
标识
DOI:10.1038/s41467-024-46682-1
摘要
Abstract CMOS-RRAM integration holds great promise for low energy and high throughput neuromorphic computing. However, most RRAM technologies relying on filamentary switching suffer from variations and noise, leading to computational accuracy loss, increased energy consumption, and overhead by expensive program and verify schemes. We developed a filament-free, bulk switching RRAM technology to address these challenges. We systematically engineered a trilayer metal-oxide stack and investigated the switching characteristics of RRAM with varying thicknesses and oxygen vacancy distributions to achieve reliable bulk switching without any filament formation. We demonstrated bulk switching at megaohm regime with high current nonlinearity, up to 100 levels without compliance current. We developed a neuromorphic compute-in-memory platform and showcased edge computing by implementing a spiking neural network for an autonomous navigation/racing task. Our work addresses challenges posed by existing RRAM technologies and paves the way for neuromorphic computing at the edge under strict size, weight, and power constraints.
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