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A 6D Fractional-Order Memristive Hopfield Neural Network and its Application in Image Encryption

Fei Yu, Xinxin Kong, Huifeng Chen, Qiulin Yu, Shuo Cai, Yuanyuan Huang, Sichun Du

2022Frontiers in Physics63 citationsDOIOpen Access PDF

Abstract

This paper proposes a new memristor model and uses pinched hysteresis loops (PHL) to prove the memristor characteristics of the model. Then, a new 6D fractional-order memristive Hopfield neural network (6D-FMHNN) is presented by using this memristor to simulate the induced current, and the bifurcation characteristics and coexistence attractor characteristics of fractional memristor Hopfield neural network is studied. Because this 6D-FMHNN has chaotic characteristics, we also use this 6D-FMHNN to generate a random number and apply it to the field of image encryption. We make a series of analysis on the randomness of random numbers and the security of image encryption, and prove that the encryption algorithm using this 6D-FMHNN is safe and sensitive to the key.

Topics & Concepts

MemristorRandomnessEncryptionChaoticHopfield networkArtificial neural networkAttractorComputer scienceImage (mathematics)Key (lock)AlgorithmTopology (electrical circuits)Theoretical computer scienceMathematicsArtificial intelligenceElectronic engineeringMathematical analysisComputer networkEngineeringCombinatoricsStatisticsComputer securityChaos-based Image/Signal EncryptionChaos control and synchronizationAdvanced Memory and Neural Computing