Securing interconnected PUF network with reconfigurability

Hongxiang Gu, M. Potkonjak
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引用次数: 5

Abstract

Physical Unclonable Functions (PUFs) are known for their unclonability and light-weight design. Recent advancement in technology has significantly compromised the security of PUFs. Machine learning-based attacks have been proven to be able to construct numerical models that predict various types of PUFs with high accuracy with a small set of challenge-response pairs (CRPs). To address the problem, we present a reconfigurable interconnected PUF network (IPN) design that significantly strengthens the security and unclonability of strong PUFs. While the IPN structure itself provides high resilience against modeling attacks, the reconfiguration mechanism remaps the input-output mapping before an attacker could collect sufficient CRPs. Experimental results show that all tested state-of-the-art machine learning attack methods have prediction accuracy of around 50% on a single bit output of a reconfigurable IPN.
通过可重构性保护互联PUF网络
物理不可克隆功能(puf)以其不可克隆性和轻量级设计而闻名。最近的技术进步极大地损害了puf的安全性。基于机器学习的攻击已被证明能够构建数值模型,通过一小组挑战-响应对(crp)以高精度预测各种类型的puf。为了解决这个问题,我们提出了一种可重构的互联PUF网络(IPN)设计,该设计显著增强了强PUF的安全性和不可克隆性。虽然IPN结构本身对建模攻击提供了高弹性,但重新配置机制在攻击者收集到足够的crp之前重新映射了输入-输出映射。实验结果表明,所有经过测试的最先进的机器学习攻击方法在可重构IPN的单比特输出上的预测精度约为50%。
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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