Fault-Aware Adversary Attack Analyses and Enhancement for RRAM-Based Neuromorphic Accelerator

Liuting Shang, Sungyong Jung, Fengjun Li, C. Pan
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Abstract

Neural networks have been widely deployed in sensor networks and IoT systems due to the advance in lightweight design and edge computing as well as emerging energy-efficient neuromorphic accelerators. However, adversary attack has raised a major threat against neural networks, which can be further enhanced by leveraging the natural hard faults in the neuromorphic accelerator that is based on resistive random access memory (RRAM). In this paper, we perform a comprehensive fault-aware attack analysis method for RRAM-based accelerators by considering five attack models based on a wide range of device- and circuit-level nonideal properties. The research on nonideal properties takes into account detailed hardware situations and provides a more accurate perspective on security. Compared to the existing adversary attack strategy that only leverages the natural fault, we propose an initiative attack based on two soft fault injection methods, which do not require a high-precision laboratory environment. In addition, an optimized fault-aware adversary algorithm is also proposed to enhance the attack effectiveness. The simulation results of an MNIST dataset on a classic convolutional neural network have shown that the proposed fault-aware adversary attack models and algorithms achieve a significant improvement in the attacking image classification.
基于rram的神经形态加速器的故障感知攻击分析与改进
由于轻量级设计和边缘计算以及新兴的高能效神经形态加速器的进步,神经网络已被广泛部署在传感器网络和物联网系统中。然而,对手攻击对神经网络构成了重大威胁,可以通过利用基于电阻随机存取存储器(RRAM)的神经形态加速器中的自然硬故障来进一步增强神经网络。在本文中,我们对基于RRAM的加速器执行了一种全面的故障感知攻击分析方法,通过考虑基于广泛的器件和电路级非理想特性的五个攻击模型。对非理想性质的研究考虑了详细的硬件情况,并提供了一个更准确的安全视角。与现有的仅利用自然故障的对手攻击策略相比,我们提出了一种基于两种软故障注入方法的主动攻击,这两种方法不需要高精度的实验室环境。此外,为了提高攻击的有效性,还提出了一种优化的故障感知对手算法。在经典卷积神经网络上对MNIST数据集的仿真结果表明,所提出的故障感知对手攻击模型和算法在攻击图像分类方面取得了显著改进。
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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