蒙特卡罗密钥秩估计用于侧信道安全评估

Giovanni Camurati, Matteo Dell'Amico, François-Xavier Standaert
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引用次数: 1

摘要

密钥等级估计提供了攻击者在从侧信道攻击中获得一些信息后,对加密算法的密钥进行暴力破解所付出的努力的度量。提出了一种基于蒙特卡罗采样的键秩估计新方法MCRank。m曲克提供秩和置信区间的无偏估计。随着样本量的增加,其边界迅速变得紧,执行时间也相应线性增加。当应用于评估AES-128实现时,MCRank可以比最先进的基于直方图的枚举方法快几个数量级。对于大密钥,它的可扩展性也比以前的工作更好,最多可达2048字节。除了概念上的简单和高效外,MCRank还可以首次评估大密钥的安全性,即使给定侧信道泄漏的概率分布在子密钥之间不是独立的,例如,在评估AES-256实现的泄漏安全性时就会发生这种情况。
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MCRank: Monte Carlo Key Rank Estimation for Side-Channel Security Evaluations
Key rank estimation provides a measure of the effort that the attacker has to spend bruteforcing the key of a cryptographic algorithm, after having gained some information from a side channel attack. We present MCRank, a novel method for key rank estimation based on Monte Carlo sampling. MCRank provides an unbiased estimate of the rank and a confidence interval. Its bounds rapidly become tight for increasing sample size, with a corresponding linear increase of the execution time. When applied to evaluate an AES-128 implementation, MCRank can be orders of magnitude faster than the state-of-the-art histogram-based enumeration method for comparable bound tightness. It also scales better than previous work for large keys, up to 2048 bytes. Besides its conceptual simplicity and efficiency, MCRank can assess for the first time the security of large keys even if the probability distributions given the side channel leakage are not independent between subkeys, which occurs, for example, when evaluating the leakage security of an AES-256 implementation.
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