Design and Implementation of Side Channel Attack Based on Deep Learning LSTM

A. A. Ahmed, M Zahid Hasan
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Abstract

Encryption algorithms and encryption devices both play a key role in ensuring the safety of data that has been encrypted. Various types of attacks, such as energy analysis, can be used to assess the reliability of the encryption devices. Since it was originally introduced, side channel attacks' deep learning-based methodology has drawn plenty of attention. This is one of several different attack strategies. In this paper, a side channel attack method based on the LSTM deep learning network is suggested. The method use Correlation Power Analysis (CPA) to find the relevant information in the side channel power consumption data. The choice of a suitable interest interval to utilize as the feature vector in the creation of the neural network model is then guided by the position of the interest points. The trials' findings show that the LSTM model outperforms both MLP and CNN in terms of how well it executes side channel attacks.
基于深度学习LSTM的侧信道攻击设计与实现
加密算法和加密设备在确保已加密数据的安全性方面都起着关键作用。可以使用各种类型的攻击,例如能量分析,来评估加密设备的可靠性。自最初引入以来,基于深度学习的侧信道攻击方法引起了广泛关注。这是几种不同的攻击策略之一。本文提出了一种基于LSTM深度学习网络的侧信道攻击方法。该方法利用相关功率分析(CPA)从侧信道功耗数据中寻找相关信息。然后根据兴趣点的位置来选择合适的兴趣区间作为神经网络模型创建中的特征向量。试验结果表明,LSTM模型在执行侧信道攻击方面优于MLP和CNN。
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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