Stuck-at Faults Tolerance and Recovery in MLP Neural Networks Using Imperfect Emerging CNFET Technology

IF 2 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
An Qi Zhang;Amr M. S. Tosson;Dylan Ma;Ryan Fang;Lan Wei
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Abstract

Devices using emerging technologies and materials with the potential to outperform their silicon counterpart are actively explored in search of ways to extend Moore’s law. Among these technologies, low dimensional channel materials (LDMs) devices, such as carbon nanotube field-effect transistors (CNFETs), are promising to eventually outperform silicon CMOS. As these technologies are in their early development stages, their devices still suffer from high levels of defects and variations, thus unsuitable for nowadays general-purpose applications. On the other hand, applications with inherent error resilience and high-performance demands would suppress the impact of process imperfection and benefit from the performance boost. These applications, including image processing and machine learning through neural networks, would be the ideal targets for adopting these new emerging technologies even in their early stage of technology and process development. In this article, the effects of stuck-at faults in CNFET static random access memory (SRAM)-based multilayer perceptron (MLP) neural network are investigated. The impacts of various fault patterns are analyzed. Several fault recovery techniques are introduced, and their effectiveness is analyzed under different scenarios. With the proposed recovery techniques, the system can recover and tolerate a high level of stuck-at faults up to 40%, paving the path to adopt the early-stage and faulty emerging devices technologies in such high-demand applications.
使用不完美新兴 CNFET 技术的 MLP 神经网络的卡滞故障容限与恢复
人们正在积极探索使用新兴技术和材料的器件,这些器件的性能有可能超过硅器件,以寻求延长摩尔定律的方法。在这些技术中,碳纳米管场效应晶体管(CNFET)等低维沟道材料(LDMs)器件有望最终超越硅 CMOS。由于这些技术还处于早期开发阶段,其器件仍存在大量缺陷和变异,因此不适合现在的通用应用。另一方面,具有内在抗错能力和高性能要求的应用将抑制工艺缺陷的影响,并从性能提升中获益。包括图像处理和通过神经网络进行机器学习在内的这些应用将是采用这些新兴技术的理想目标,即使它们还处于技术和工艺开发的早期阶段。本文研究了基于 CNFET 静态随机存取存储器 (SRAM) 的多层感知器 (MLP) 神经网络中卡滞故障的影响。分析了各种故障模式的影响。引入了几种故障恢复技术,并分析了它们在不同情况下的有效性。利用所提出的恢复技术,系统可以恢复和容忍高达 40% 的卡滞故障,为在此类高需求应用中采用早期和故障新兴设备技术铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.00
自引率
4.20%
发文量
11
审稿时长
13 weeks
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