Litcius/Paper detail

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

Amjed Abbas Ahmed, Mohammad Kamrul Hasan

202325 citationsDOI

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.

Topics & Concepts

Side channel attackComputer scienceEncryptionDeep learningReliability (semiconductor)Artificial intelligenceKey (lock)Channel (broadcasting)Artificial neural networkFeature extractionFeature (linguistics)Machine learningSide effect (computer science)Advanced Encryption StandardData miningPower (physics)Computer securityCryptographyComputer networkLinguisticsQuantum mechanicsPhysicsProgramming languagePhilosophyCryptographic Implementations and SecuritySecurity and Verification in ComputingPhysical Unclonable Functions (PUFs) and Hardware Security