An effective cryptanalysis of DES for secure communication using hybrid cryptanalysis and deep neural network

Author:

F Margret Sharmila1ORCID,Karuppasamy K.2

Affiliation:

1. Department of Computer Science and Business Systems Sri Krishna College of Engineering and Technology Coimbatore Tamilnadu India

2. Department of Computer Science and Engineering RVS College of Engineering and Technology Coimbatore Tamilnadu India

Abstract

SummaryIn today's world, information security plays a key role in data storage and communication owing to the modern evolution of digitized data interchange in electronic mode. Cryptography is a widely preferred technique for securing transmitted information by transforming the original text into cipher text. A few cryptographic techniques have the inability to protect the data which are vulnerable to a distinct class of attacks. Therefore, a reliable cryptographic technique is necessitated for enlarging information security. In this paper, a new hybrid cryptanalysis (HCA) model has been proposed to acquire optimal cryptanalysis of data encryption standard (DES). It combines linear cryptanalysis (LCA) and neural cryptanalysis (NCA) for enhancing the performance of the cryptographic system with minimal time complexity. Primarily, the HCA model employs LCA to break cryptographic codes by analyzing linear approximations of the cryptographic algorithm. NCA is then applied with the aid of a deep neural network for identifying patterns in larger datasets. These patterns can be further utilized to break encryption. The efficacy of the proposed HCA model will be assessed through the assessment of three different datasets. The results manifest that the accuracy of the proposed model is increased up to 97.66% and the time needed to break encryption can be reduced.

Publisher

Wiley

Subject

Computational Theory and Mathematics,Computer Networks and Communications,Computer Science Applications,Theoretical Computer Science,Software

Reference31 articles.

1. Sharing Multiple Secrets in XOR-Based Visual Cryptography by Non-Monotonic Threshold Property

2. Data security techniques in cloud computing based on machine learning algorithms and cryptographic algorithms: lightweight algorithms and genetics algorithms;Thabit F;Concurr Comput,2023

3. Learning asymmetric encryption using adversarial neural networks;Shi Z;Eng Appl Artif Intell,2023

4. TS-ABOS-CMS: time-bounded secure attribute-based online/offline signature with constant message size for IoT systems

5. Design and Evaluation of Countermeasures Against Fault Injection Attacks and Power Side-Channel Leakage Exploration for AES Block Cipher

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