用于神经形态计算的基于hfo2的电阻开关存储器件

S. Brivio, S. Spiga, D. Ielmini
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引用次数: 7

摘要

基于hfo2的电阻开关存储器(RRAM)结合了几个突出的特性,如高可扩展性,快速开关速度,低功耗,与互补金属氧化物半导体技术兼容,具有高密度或三维集成的可能。因此,HfO2 rram在神经形态工程中的应用引起了人们的强烈兴趣,特别是在神经网络中人工突触的开发方面。本文综述了基于hfo2的RRAM的结构、性能及其在神经形态计算中的应用。综述了非易失性器件广泛研究的应用和易失性器件的开创性工作。首先介绍了RRAM器件,描述了与氧空位等HfO2缺陷的丝状路径相关的开关机制。描述了RRAM编程算法用于高精度多电平操作,突触应用中的模拟权重更新以及利用易失性器件的电阻动态。最后,介绍了神经形态的应用,包括有监督训练的人工神经网络和具有多水平、二元或随机权重的人工神经网络。然后提出了从无监督训练到时空识别的脉冲神经网络的应用。从这个概述来看,基于hfo2的RRAM似乎是一种成熟的技术,适用于广泛的神经形态计算系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HfO2-based resistive switching memory devices for neuromorphic computing
HfO2-based resistive switching memory (RRAM) combines several outstanding properties, such as high scalability, fast switching speed, low power, compatibility with complementary metal-oxide-semiconductor technology, with possible high-density or three-dimensional integration. Therefore, today, HfO2 RRAMs have attracted a strong interest for applications in neuromorphic engineering, in particular for the development of artificial synapses in neural networks. This review provides an overview of the structure, the properties and the applications of HfO2-based RRAM in neuromorphic computing. Both widely investigated applications of nonvolatile devices and pioneering works about volatile devices are reviewed. The RRAM device is first introduced, describing the switching mechanisms associated to filamentary path of HfO2 defects such as oxygen vacancies. The RRAM programming algorithms are described for high-precision multilevel operation, analog weight update in synaptic applications and for exploiting the resistance dynamics of volatile devices. Finally, the neuromorphic applications are presented, illustrating both artificial neural networks with supervised training and with multilevel, binary or stochastic weights. Spiking neural networks are then presented for applications ranging from unsupervised training to spatio-temporal recognition. From this overview, HfO2-based RRAM appears as a mature technology for a broad range of neuromorphic computing systems.
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CiteScore
5.90
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