基于偏差的puf建模与熵分析

Robbert van den Berg, B. Škorić, Vincent van der Leest
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引用次数: 26

摘要

物理不可克隆函数(puf)正日益成为一种众所周知的安全原语,用于安全密钥存储和防伪。对于这两个应用程序,puf必须提供足够的熵。本文的目的是为SRAM、DFF、Latch和Buskeeper puf等二进制输出puf提出一种新的模型,并提出一种准确估计其熵的方法。在我们的模型中,PUF的可测量属性是它的单元偏差集。通过计算在登记和重建时进行的偏差测量之间的互信息,我们确定了“可提取熵”的上界,即可以鲁棒提取的密钥位的数量。在以前已知的方法中,只使用信息论方法研究唯一性,而鲁棒性通常用误差概率或距离来表示。为了对不同PUF类型的性能做出明智的决策,并不总是直接使用这两个指标的组合。我们的新方法的优点是它同时捕获了对密钥存储至关重要的两个属性:唯一性和健壮性。因此,使用我们的新方法公平地比较PUF实现的性能是可能的。新方法的统计验证表明,它清楚地捕获了puf的这两个属性。换句话说:如果这些方面中的一个(唯一性或鲁棒性)不是最优的,那么可提取的熵就会减少。对PUF测量数据的大型数据库的分析表明,SRAM PUF的熵非常高,而该数据库中所有其他基于内存的PUF的熵则相当差。
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Bias-based modeling and entropy analysis of PUFs
Physical Unclonable Functions (PUFs) are increasingly becoming a well-known security primitive for secure key storage and anti-counterfeiting. For both applications it is imperative that PUFs provide enough entropy. The aim of this paper is to propose a new model for binary-output PUFs such as SRAM, DFF, Latch and Buskeeper PUFs, and a method to accurately estimate their entropy. In our model the measurable property of a PUF is its set of cell biases. We determine an upper bound on the "extractable entropy", i.e. the number of key bits that can be robustly extracted, by calculating the mutual information between the bias measurements done at enrollment and reconstruction. In previously known methods only uniqueness was studied using information-theoretic measures, while robustness was typically expressed in terms of error probabilities or distances. It is not always straightforward to use a combination of these two metrics in order to make an informed decision about the performance of different PUF types. Our new approach has the advantage that it simultaneously captures both of properties that are vital for key storage: uniqueness and robustness. Therefore it will be possible to fairly compare performance of PUF implementations using our new method. Statistical validation of the new methodology shows that it clearly captures both of these properties of PUFs. In other words: if one of these aspects (either uniqueness or robustness) is less than optimal, the extractable entropy decreases. Analysis on a large database of PUF measurement data shows very high entropy for SRAM PUFs, but rather poor results for all other memory-based PUFs in this database.
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