电阻随机存取存储器
MNIST数据库
计算机科学
横杆开关
人工神经网络
抽象
电导
内存处理
任务(项目管理)
重置(财务)
电子工程
人工智能
电气工程
电压
工程类
数学
电信
哲学
系统工程
认识论
组合数学
情报检索
按示例查询
金融经济学
经济
Web搜索查询
搜索引擎
作者
Andrea Baroni,Artem Glukhov,Eduardo Pérez,Christian Wenger,Daniele Ielmini,P. Olivo,Cristian Zambelli
标识
DOI:10.1109/tdmr.2022.3182133
摘要
The crossbar structure of Resistive-switching random access memory (RRAM) arrays enabled the In-Memory Computing circuits paradigm, since they imply the native acceleration of a crucial operations in this scenario, namely the Matrix-Vector-Multiplication (MVM). However, RRAM arrays are affected by several issues materializing in conductance variations that might cause severe performance degradation. A critical one is related to the drift of the low conductance states appearing immediately at the end of program and verify algorithms that are mandatory for an accurate multi-level conductance operation. In this work, we analyze the benefits of a new programming algorithm that embodies Set and Reset switching operations to achieve better conductance control and lower variability. Data retention analysis performed with different temperatures for 168 hours evidence its superior performance with respect to standard programming approach. Finally, we explored the benefits of using our methodology at a higher abstraction level, through the simulation of an Artificial Neural Network for image recognition task (MNIST dataset). The accuracy achieved shows higher performance stability over temperature and time.
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