Modelling Attack Analysis of Configurable Ring Oscillator (CRO) PUF Designs

Jack Miskelly, Chongyan Gu, Qingqing Ma, Yijun Cui, Weiqiang Liu, Máire O’Neill
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引用次数: 13

Abstract

Physical Unclonable Functions (PUFs) have emerged as a lightweight security primitive for resource constrained devices. However, conventional delay-based Physical Unclonable Functions (PUFs) are vulnerable to machine learning (ML) based modelling attacks. Although ML resistant PUF designs have been proposed, they often suffer from large overheads and are difficult to implement on FPGA. Lightweight ML resistant FPGA compatible designs have been proposed which make use of combined multi-PUF designs, incorporating a set of weak PUFs to obscure the challenge to a strong PUF in order to increase the difficulty of model building. In such designs any unreliability in the main PUF is amplified by unreliability in the masking PUFs. For this reason strong PUFs suitable for FPGA that can achieve high reliability, such as the Configurable Ring Oscillator (CRO) PUF, are a promising option. In this paper a mathematical model of the CRO PUF is presented. We show that models of traditional CRO PUFs can be trained to above 99% prediction rate using the Linear Regression and CMA-ES strategies. A proposed multi-PUF design based on the previously proposed arbiter MPUF is evaluated with the same methods. It is shown that even with challenge obfuscation the CRO PUF can be predicted with greater than 90% accuracy. It is shown that with the addition of a second XORed PUF the ML resistance can be increased further with a maximum prediction rate of 86%.
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可配置环振(CRO) PUF设计的建模攻击分析
物理不可克隆函数(puf)已经成为资源受限设备的一种轻量级安全原语。然而,传统的基于延迟的物理不可克隆函数(puf)容易受到基于机器学习(ML)的建模攻击。尽管已经提出了抗ML PUF设计,但它们通常开销很大,并且难以在FPGA上实现。轻量级ML抵抗FPGA兼容设计已经提出,它利用组合多PUF设计,结合一组弱PUF来掩盖对强PUF的挑战,以增加模型构建的难度。在这样的设计中,主PUF的任何不可靠性都会被屏蔽PUF的不可靠性放大。出于这个原因,适合FPGA实现高可靠性的强PUF,如可配置环振荡器(CRO) PUF,是一个很有前途的选择。本文建立了CRO PUF的数学模型。研究表明,采用线性回归和CMA-ES策略,传统的CRO puf模型的预测率可以达到99%以上。基于先前提出的仲裁器MPUF,用相同的方法对提出的多puf设计进行了评估。结果表明,即使存在挑战混淆,CRO PUF的预测精度也能达到90%以上。结果表明,加入第二个xor PUF后,ML电阻可以进一步提高,最大预测率为86%。
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