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Detail publikace
MARTINÁSEK, Z. HAJNÝ, J. MALINA, L.
Originální název
Optimization of Power Analysis Using Neural Network
Typ
článek ve sborníku ve WoS nebo Scopus
Jazyk
angličtina
Originální abstrakt
In power analysis, many different statistical methods and power consumption models are used to obtain the value of a secret key from the power traces measured. An interesting method of power analysis based on multi-layer perceptron claiming a $90\%$ success rate. The theoretical and empirical success rates were determined to be $80\%$ and $85\%$, respectively, which is not sufficient enough. In the paper, we propose and realize an optimization of this power analysis method which improves the success rate to almost $100\%$. The optimization is based on preprocessing the measured power traces using the calculation of the average trace and the subsequent calculation of the difference power traces. In this way, the prepared power patterns were used for neural network training and of course during the attack. This optimization is computationally undemanding compared to other methods of preprocessing usually applied in power analysis, and has a great impact on classification results. In the paper, we compare the results of the optimized method with the original implementation. We highlight positive and also some negative impacts of the optimization on classification results.
Klíčová slova
Power analysis, neural network, optimization, preprocessing.
Autoři
MARTINÁSEK, Z.; HAJNÝ, J.; MALINA, L.
Rok RIV
2014
Vydáno
4. 7. 2014
Nakladatel
Springer
ISBN
978-3-319-08302-5
Kniha
Smart Card Research and Advanced Applications, Lecture Notes in Computer Science
Strany od
94
Strany do
107
Strany počet
14
BibTex
@inproceedings{BUT108335, author="Zdeněk {Martinásek} and Jan {Hajný} and Lukáš {Malina}", title="Optimization of Power Analysis Using Neural Network", booktitle="Smart Card Research and Advanced Applications, Lecture Notes in Computer Science", year="2014", pages="94--107", publisher="Springer", doi="10.1007/978-3-319-08302-5\{_}7", isbn="978-3-319-08302-5" }