通过新的权值分布提高基于reram的深度神经网络实现的可靠性

Jingtao Li, Manqing Mao, C. Chakrabarti
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引用次数: 1

摘要

为了提高存储效率,二进制深度神经网络已经在电阻式随机存取存储器(ReRAM)中实现,但在存在硬件错误的情况下,其识别性能较差。本文通过推导一种新的权重分布和表示方案来解决这个问题,该方案以最小的存储开销减轻了由错误的ReRAM单元引起的错误。在该方案中,权重矩阵被划分为多个颗粒,每个颗粒中的每个权重由多位平均值和1位偏差的和表示。可以选择颗粒大小以及颗粒中权重的平均偏差比,从而使网络对硬件错误具有弹性。提出了一种支持该方案的混合内存处理(PIM)架构。平均值存储在一个小的SRAM中并由CMOS单元处理,偏差由ReRAM单元存储和处理。与基线二值神经网络在存在严重硬件错误时失效相比,所提出的混合方案只有轻微的识别性能下降。仿真结果表明,在9.04%卡在1和1.75%卡在0故障情况下,该方案在MNIST数据集上的测试准确率为97.84%(下降0.84%),在CIFAR-10数据集上的测试准确率为88.07%(下降1.10%)。
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Improving Reliability of ReRAM-Based DNN Implementation through Novel Weight Distribution
Binary deep neural networks, that have been implemented in resistive random access memory (ReRAM) for storage efficiency, suffer from poor recognition performance in the presence of hardware errors. This paper addresses this problem by deriving a novel weight distribution and representation scheme that mitigates errors due to faulty ReRAM cells with minimal storage overhead. In the proposed scheme, the weight matrix is partitioned into grains, and each weight in a grain is represented by the sum of a multi-bit mean and a 1-bit deviation. The grain size as well as the mean to deviation ratio of the weights in a grain can be chosen such that the network is resilient to hardware errors. A hybrid processing-in-memory (PIM) architecture is proposed to support this scheme. The mean values are stored in a small SRAM and processed by a CMOS unit, and the deviations are stored and processed by the ReRAM unit. Compared to the baseline binary neural network which fails in the presence of severe hardware errors, the proposed hybrid scheme has only a mild recognition performance degradation. Simulation results show the proposed scheme achieves 97.84% test accuracy (a 0.84% accuracy drop) on a MNIST dataset, and 88.07% test accuracy (a 1.10% accuracy drop) on a CIFAR-10 dataset under 9.04% stuck-at-1 and 1.75% stuck-at-0 faults.
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