用于高性能神经形态计算的记忆器件的可靠性:(特邀论文)

Yue Xi, Xinyi Li, Junhao Chen, Ruofei Hu, Qingtian Zhang, Zhi-Nian Jiang, Feng Xu, Jianshi Tang
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引用次数: 0

摘要

基于忆阻器的神经形态计算具有丰富的内部离子动力学特性,是一种模拟生物神经网络并实现高能效的非冯·诺伊曼计算范式。然而,要实现大规模记忆记忆神经网络,必须妥善解决记忆记忆装置的可靠性问题,包括人工突触、树突和体。本文介绍了近年来研究忆阻器件可靠性的物理机制和优化的工作。特别是,采用三元氧化物作为热增强层,减轻了$\boldsymbol{\text{HfO}_{\mathrm{x}}}$人工突触的弛豫效应;通过适当的材料选择和界面工程,提高了$\boldsymbol{\text{TiO}_{\mathrm{x}}^{-}}}$人工树突的器件产率;通过氮掺杂,降低了$\boldsymbol{\text{NbO}_{\mathrm{x}}}$人工突触的器件可变性。在此基础上,构建了基于这三种基本忆阻器件的仿生树突神经网络,并进行了仿真,分析了器件可靠性的影响。使用这些优化的设备,街景房号数据集的分类精度可以提高高达60%。设备可靠性指标的定量要求也为未来神经形态系统的设计和实现提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliability of Memristive Devices for High-Performance Neuromorphic Computing: (Invited Paper)
With the rich internal ion dynamics, memristor-based neuromorphic computing emerges as a non-von Neumann computing paradigm to mimic biological neural networks and achieve high energy efficiency. However, to implement large-scale memristive neural networks, the reliability issue of memristive devices, including artificial synapse, dendrite, and soma, should be properly addressed. In this paper, recent works investigating the physical mechanisms and optimizations of memristive device reliability are presented. In particular, the relaxation effect of $\boldsymbol{\text{HfO}_{\mathrm{x}}}$ -based artificial synapse is alleviated by using a ternary oxide as the thermal enhance layer, the device yield of $\boldsymbol{\text{TiO}_{\mathrm{x}^{-}}}$ based artificial dendrite is improved by proper material selection and interface engineering, and the device variability of $\boldsymbol{\text{NbO}_{\mathrm{x}}}$ -based artificial soma is reduced by nitrogen doping. Furthermore, a bio-inspired dendritic neural network with these three fundamental memristive devices is constructed and simulated to analyze the influence of device reliability. Using these optimized devices, the classification accuracy of the street-view house number dataset can be improved by up to $\sim$ 60%. The quantitative requirements of device reliability metrics are also provided as a guideline for future neuromorphic system design and implementation.
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