基于记忆交叉棒的信号处理神经形态HW加速器研究

I. Vourkas, Angel Abusleme, Nikolaos Vasileiadis, G. Sirakoulis, N. Papamarkos
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引用次数: 0

摘要

能够进行生物感知和认知信息处理的神经形态硬件的研究进展正在引领计算技术的革命。目前的研究主要集中在电阻开关器件,人工神经网络中突触的电子模拟,以及交叉杆纳米结构,因为它具有巨大的连通性和最大的集成密度。在此背景下,本研究提出了一种基于记忆交叉条的文本识别任务人工神经网络的设计和仿真,实现了一种新的计算算法。在这样的案例研究中,应用程序映射过程中的重要问题被确定并在器件和电路级别上得到适当解决。通过spice级电路仿真,验证了系统的计算能力,与理论仿真结果吻合良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards memristive crossbar-based neuromorphic HW accelerators for signal processing
Research progress in neuromorphic hardware, capable of biological perception and cognitive information processing, is leading the way towards a revolution in computing technology. Current research efforts have focused mainly on resistive switching devices, the electronic analog of synapses in artificial neural networks (ANNs), and the crossbar nanoarchitecture, for its huge connectivity and maximum integration density. In this context, this work presents the design and simulation of a memristive crossbar-based ANN for text recognition tasks, implementing a novel computing algorithm. In such case study, important issues during the application mapping process are identified and properly addressed at device and circuit level. The computing capabilities of the proposed system are highlighted through SPICE-level circuit simulations, which show excellent agreement with theoretical simulation results.
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