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A Machine Learning Attacks Resistant Two Stage Physical Unclonable Functions Design

机译:机器学习抗攻击的两阶段物理不可克隆功能设计

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Physical Unclonable Functions (PUFs) have been designed for many security applications such as identification, authentication of devices and key generation, especially for lightweight electronics. Traditional approaches to enhancing security, such as hash functions, may be expensive and resource dependent. However, modelling attacks using machine learning (ML) show the vulnerability of most PUFs. In this paper, a combination of a 32-bit current mirror and 16-bit arbiter PUFs in 65nm CMOS technology is proposed to improve resilience against modelling attacks. Both PUFs are vulnerable to machine learning attacks and we reduce the output prediction rate from 99.2% and 98.8% individually, to 60%.
机译:物理不可克隆功能(PUF)已设计用于许多安全应用,例如标识,设备身份验证和密钥生成,尤其是轻型电子产品。诸如哈希函数之类的用于增强安全性的传统方法可能很昂贵并且依赖于资源。但是,使用机器学习(ML)进行建模攻击显示了大多数PUF的漏洞。本文提出了在65nm CMOS技术中结合使用32位电流镜和16位仲裁器PUF的方法,以提高抵御建模攻击的能力。两种PUF都容易受到机器学习攻击,我们将输出预测率分别从99.2%和98.8%降低到60%。

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