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Using deep learning to combine static and dynamic power analyses of cryptographic circuits

机译:利用深度学习结合加密电路的静态和动态功率分析

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摘要

Side-channel attacks have shown to be efficient tools in breaking cryptographic hardware. Many conventional algorithms have been proposed to perform side-channel attacks exploiting the dynamic power leakage. In recent years, with the development of processing technology, static power has emerged as a new potential source for side-channel leakage. Both types of power leakage have their advantages and disadvantages. In this work, we propose to use the deep neural network technique to combine the benefits of both static and dynamic power. This approach replaces the classifier in template attacks with our proposed long short-term memory network schemes. Hence, instead of deriving a specific probability density model for one particular type of power leakage, we gain the ability of combining different leakage sources using a structural algorithm. In this paper, we propose three schemes to combine the static and dynamic power leakage. The performance of these schemes is compared using simulated test circuits designed with a 45-nm library.
机译:侧通道攻击已显示在打破密码硬件方面是有效的工具。已经提出了许多传统算法来执行利用动态漏电的侧通道攻击。近年来,随着加工技术的发展,静态电力已成为侧通道泄漏的新潜在来源。两种类型的电力泄漏都具有它们的优缺点。在这项工作中,我们建议使用深度神经网络技术来结合静态和动态功率的益处。使用我们提出的长短期内存网络方案,此方法替换模板攻击中的分类器。因此,不是导出用于一种特定类型的电力泄漏的特定概率密度模型,而是利用结构算法组合不同泄漏源的能力。在本文中,我们提出了三个方案来结合静态和动态漏电。使用具有45nm库的模拟测试电路进行比较这些方案的性能。

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