Algorithmic Fault Detection for RRAM-based Matrix Operations

Mengyun Liu, Lixue Xia, Yu Wang, K. Chakrabarty
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引用次数: 6

Abstract

An RRAM-based computing system (RCS) provides an energy-efficient hardware implementation of vector-matrix multiplication for machine-learning hardware. However, it is vulnerable to faults due to the immature RRAM fabrication process. We propose an efficient fault tolerance method for RCS; the proposed method, referred to as extended-ABFT (X-ABFT), is inspired by algorithm-based fault tolerance (ABFT). We utilize row checksums and test-input vectors to extract signatures for fault detection and error correction. We present a solution to alleviate the overflow problem caused by the limited number of voltage levels for the test-input signals. Simulation results show that for a Hopfield classifier with faults in 5% of its RRAM cells, X-ABFT allows us to achieve nearly the same classification accuracy as in the fault-free case.
基于随机存储器的矩阵运算故障检测算法
基于随机存储器的计算系统(RCS)为机器学习硬件提供了一种高效的矢量矩阵乘法的硬件实现。然而,由于RRAM的制造工艺不成熟,它容易出现故障。提出了一种有效的RCS容错方法;该方法受基于算法的容错(ABFT)的启发,被称为扩展ABFT (X-ABFT)。我们利用行校验和和测试输入向量来提取用于故障检测和错误纠正的签名。我们提出了一种解决方案,以减轻由于测试输入信号的电压电平数量有限而引起的溢出问题。仿真结果表明,对于具有5% RRAM单元故障的Hopfield分类器,X-ABFT使我们能够获得与无故障情况几乎相同的分类精度。
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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