Side-channel analysis attacks based on deep learning network

被引:0
作者
Yu Ou
Lang Li
机构
[1] Hengyang Normal University,Hunan Provincial Key Laboratory of Intelligent Information Processing and Application
[2] Hunan Normal University,College of Information Science and Engineering
[3] Hengyang Normal University,College of Computer Science and Technology
来源
Frontiers of Computer Science | 2022年 / 16卷
关键词
side-channel analysis; template attack; machine learning; deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
There has been a growing interest in the side-channel analysis (SCA) field based on deep learning (DL) technology. Various DL network or model has been developed to improve the efficiency of SCA. However, few studies have investigated the impact of the different models on attack results and the exact relationship between power consumption traces and intermediate values. Based on the convolutional neural network and the autoencoder, this paper proposes a Template Analysis Pre-trained DL Classification model named TAPDC which contains three sub-networks. The TAPDC model detects the periodicity of power trace, relating power to the intermediate values and mining the deeper features by the multi-layer convolutional net. We implement the TAPDC model and compare it with two classical models in a fair experiment. The evaluative results show that the TAPDC model with autoencoder and deep convolution feature extraction structure in SCA can more effectively extract information from power consumption trace. Also, Using the classifier layer, this model links power information to the probability of intermediate value. It completes the conversion from power trace to intermediate values and greatly improves the efficiency of the power attack.
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共 42 条
[1]  
Jaegeun M(2018)IoT application protection against power analysis attack Computers and Electrical Engineering 67 566-578
[2]  
Im Y J(2020)RKA security for identity-based signature scheme IEEE Access 8 17833-17841
[3]  
Hyuk J P(2020)Adaptive compiler strategies for mitigating timing side channel attacks IEEE Transactions on Dependable and Secure Computing 17 35-49
[4]  
Chang J(2019)Design and electromagnetic analysis of an induction-type coilgun system with a pulse power module IEEE Transactions on Plasma Science 47 971-976
[5]  
Wang H(2011)Introduction to differential power analysis Journal of Cryptographic Engineering 1 5-27
[6]  
Wang F(2012)Analysis of the algebraic side channel attack Journal of Cryptographic Engineering 2 45-62
[7]  
Zhang A(2011)Machine learning in side-channel analysis: a first study Journal of Cryptographic Engineering 1 293-302
[8]  
Ji Y(2015)Profiling power analysis attack based on multi-layer perceptron network Computational Problems in Science and Engineering 343 317-339
[9]  
Van Cleemput J(2020)Study of deep learning techniques for side-channel analysis and introduction to ASCAD database Journal of Cryptographic Engineering 10 163-188
[10]  
De Sutter B(2020)A stacked autoencoder neural network algorithm for breast cancer diagnosis with magnetic detection electrical impedance tomography IEEE Access 8 5428-5437