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Using deep learning to combine static and dynamic power analyses of cryptographic circuits
Authors:Jiming Xu  Howard M Heys
Affiliation:Department of Electrical and Computer Engineering, Memorial University of Newfoundland, St. John's, Canada
Abstract: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.
Keywords:block ciphers  deep learning  lightweight ciphers  LSTM  neural network  side-channel attacks  static power  template attacks
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