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On the performance of non-profiled side channel attacks based on deep learning techniques

Do, N.-T. and Hoang, V.-P. and Doan, V.S. and Pham, C.-K. (2022) On the performance of non-profiled side channel attacks based on deep learning techniques. IET Information Security.

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Abstract

In modern embedded systems, security issues including side-channel attacks (SCAs) are becoming of paramount importance since the embedded devices are ubiquitous in many categories of consumer electronics. Recently, deep learning (DL) has been introduced as a new promising approach for profiled and non-profiled SCAs. This paper proposes and evaluates the applications of different DL techniques including the Convolutional Neural Network and the multilayer perceptron models for non-profiled attacks on the AES-128 encryption implementation. Especially, the proposed network is fine-tuned with different number of hidden layers, labelling techniques and activation functions. Along with the designed models, a dataset reconstruction and labelling technique for the proposed model has also been performed for solving the high dimension data and imbalanced dataset problem. As a result, the DL based SCA with our reconstructed dataset for different targets of ASCAD, RISC-V microcontroller, and ChipWhisperer boards has achieved a higher performance of non-profiled attacks. Specifically, necessary investigations to evaluate the efficiency of the proposed techniques against different SCA countermeasures, such as masking and hiding, have been performed. In addition, the effect of the activation function on the proposed DL models was investigated. The experimental results have clarified that the exponential linear unit function is better than the rectified linear unit in fighting against noise generation-based hiding countermeasure. © 2022 The Authors. IET Information Security published by John Wiley & Sons Ltd on behalf of The Institution of Engineering and Technology.

Item Type: Article
Divisions: Institutes > Institute of System Integration
Identification Number: 10.1049/ise2.12102
Uncontrolled Keywords: Chemical activation; Convolutional neural networks; Deep learning; Learning systems; Multilayer neural networks; Network security; Side channel attack, Activation functions; Computer network security; Embedded-system; Labeling techniques; Learning techniques; Linear units; Modern embedded systems; Performance; Security; Side-channel attacks, Embedded systems
URI: http://eprints.lqdtu.edu.vn/id/eprint/10690

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