On the Security of Strong Memristor-based Physically Unclonable Functions

Shaza Zeitouni, Emmanuel Stapf, H. Fereidooni, A. Sadeghi
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引用次数: 4

Abstract

PUFs are cost-effective security primitives that extract unique identifiers from integrated circuits. However, since their introduction, PUFs have been subject to modeling attacks based on machine learning. Recently, researchers explored emerging nano-electronic technologies, e.g., memristors, to construct hybrid-PUFs, which outperform CMOS-only PUFs and are claimed to be more resilient to modeling attacks. However, since such PUF designs are not open-source, the security claims remain dubious. In this paper, we reproduce a set of memristor-PUFs and extensively evaluate their unpredictability property. By leveraging state-of-the-art machine learning algorithms, we show that it is feasible to successfully model memristor-PUFs with high prediction rates of 98%. Even incorporating XOR gates, to further strengthen PUFs’ against modeling attacks, has a negligible effect.
基于强忆阻器的物理不可克隆函数的安全性研究
puf是从集成电路中提取唯一标识符的经济有效的安全原语。然而,自从puf被引入以来,它一直受到基于机器学习的建模攻击。最近,研究人员探索了新兴的纳米电子技术,例如记忆电阻器,以构建混合puf,其性能优于仅cmos puf,并且据称更能抵御建模攻击。然而,由于这样的PUF设计不是开源的,安全性声明仍然值得怀疑。本文再现了一组忆阻器puf,并对其不可预测性进行了广泛的评价。通过利用最先进的机器学习算法,我们证明了以98%的高预测率成功建模忆阻器- puf是可行的。即使结合异或门,以进一步加强puf对建模攻击的影响,也可以忽略不计。
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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