A novel hybrid delay based physical unclonable function immune to machine learning attacks

Nitin Pundir, Noor Ahmad Hazari, Fathi H. Amsaad, M. Niamat
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引用次数: 2

Abstract

In this paper, machine learning attacks are performed on a novel hybrid delay based Arbiter Ring Oscillator PUF (AROPUF). The AROPUF exhibits improved results when compared to traditional Arbiter Physical Unclonable Function (APUF). The challenge-response pairs (CRPs) from both PUFs are fed to the multilayered perceptron model (MLP) with one hidden layer. The results show that the CRPs generated from the proposed AROPUF has more training and prediction errors when compared to the APUF, thus making it more difficult for the adversary to predict the CRPs.
一种新的基于混合延迟的免疫机器学习攻击的物理不可克隆函数
本文针对一种新型的基于混合延迟的仲裁环振荡器PUF (AROPUF)进行了机器学习攻击。与传统的Arbiter物理不可克隆函数(APUF)相比,AROPUF具有更好的效果。来自两个puf的挑战响应对(CRPs)被馈送到具有一个隐藏层的多层感知器模型(MLP)中。结果表明,与APUF相比,AROPUF生成的crp具有更大的训练误差和预测误差,从而使对手更难预测crp。
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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