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Multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in IoMT

In this paper, the dynamics of a non-autonomous tabu learning two-neuron model is investigated. The model is obtained by building a tabu learning two-neuron (TLTN) model with a composite hyperbolic tangent function consisting of three hyperbolic tangent functions with different offsets. The possibil...

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Autores principales: Doubla, Isaac Sami, Njitacke, Zeric Tabekoueng, Ekonde, Sone, Tsafack, Nestor, Nkapkop, J. D. D., Kengne, Jacques
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer London 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8199851/
https://www.ncbi.nlm.nih.gov/pubmed/34149189
http://dx.doi.org/10.1007/s00521-021-06130-3
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author Doubla, Isaac Sami
Njitacke, Zeric Tabekoueng
Ekonde, Sone
Tsafack, Nestor
Nkapkop, J. D. D.
Kengne, Jacques
author_facet Doubla, Isaac Sami
Njitacke, Zeric Tabekoueng
Ekonde, Sone
Tsafack, Nestor
Nkapkop, J. D. D.
Kengne, Jacques
author_sort Doubla, Isaac Sami
collection PubMed
description In this paper, the dynamics of a non-autonomous tabu learning two-neuron model is investigated. The model is obtained by building a tabu learning two-neuron (TLTN) model with a composite hyperbolic tangent function consisting of three hyperbolic tangent functions with different offsets. The possibility to adjust the compound activation function is exploited to report the sensitivity of non-trivial equilibrium points with respect to the parameters. Analysis tools like bifurcation diagram, Lyapunov exponents, phase portraits, and basin of attraction are used to explore various windows in which the neuron model under the consideration displays the uncovered phenomenon of the coexistence of up to six disconnected stable states for the same set of system parameters in a TLTN. In addition to the multistability, nonlinear phenomena such as period-doubling bifurcation, hysteretic dynamics, and parallel bifurcation branches are found when the control parameter is tuned. The analog circuit is built in PSPICE environment, and simulations are performed to validate the obtained results as well as the correctness of the numerical methods. Finally, an encryption/decryption algorithm is designed based on a modified Julia set and confusion–diffusion operations with the sequences of the proposed TLTN model. The security performances of the built cryptosystem are analyzed in terms of computational time (CT = 1.82), encryption throughput (ET = 151.82 MBps), number of cycles (NC = 15.80), NPCR = 99.6256, UACI = 33.6512, χ(2)-values = 243.7786, global entropy = 7.9992, and local entropy = 7.9083. Note that the presented values are the optimal results. These results demonstrate that the algorithm is highly secured compared to some fastest neuron chaos-based cryptosystems and is suitable for a sensitive field like IoMT security.
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spelling pubmed-81998512021-06-15 Multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in IoMT Doubla, Isaac Sami Njitacke, Zeric Tabekoueng Ekonde, Sone Tsafack, Nestor Nkapkop, J. D. D. Kengne, Jacques Neural Comput Appl Original Article In this paper, the dynamics of a non-autonomous tabu learning two-neuron model is investigated. The model is obtained by building a tabu learning two-neuron (TLTN) model with a composite hyperbolic tangent function consisting of three hyperbolic tangent functions with different offsets. The possibility to adjust the compound activation function is exploited to report the sensitivity of non-trivial equilibrium points with respect to the parameters. Analysis tools like bifurcation diagram, Lyapunov exponents, phase portraits, and basin of attraction are used to explore various windows in which the neuron model under the consideration displays the uncovered phenomenon of the coexistence of up to six disconnected stable states for the same set of system parameters in a TLTN. In addition to the multistability, nonlinear phenomena such as period-doubling bifurcation, hysteretic dynamics, and parallel bifurcation branches are found when the control parameter is tuned. The analog circuit is built in PSPICE environment, and simulations are performed to validate the obtained results as well as the correctness of the numerical methods. Finally, an encryption/decryption algorithm is designed based on a modified Julia set and confusion–diffusion operations with the sequences of the proposed TLTN model. The security performances of the built cryptosystem are analyzed in terms of computational time (CT = 1.82), encryption throughput (ET = 151.82 MBps), number of cycles (NC = 15.80), NPCR = 99.6256, UACI = 33.6512, χ(2)-values = 243.7786, global entropy = 7.9992, and local entropy = 7.9083. Note that the presented values are the optimal results. These results demonstrate that the algorithm is highly secured compared to some fastest neuron chaos-based cryptosystems and is suitable for a sensitive field like IoMT security. Springer London 2021-06-13 2021 /pmc/articles/PMC8199851/ /pubmed/34149189 http://dx.doi.org/10.1007/s00521-021-06130-3 Text en © The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Original Article
Doubla, Isaac Sami
Njitacke, Zeric Tabekoueng
Ekonde, Sone
Tsafack, Nestor
Nkapkop, J. D. D.
Kengne, Jacques
Multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in IoMT
title Multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in IoMT
title_full Multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in IoMT
title_fullStr Multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in IoMT
title_full_unstemmed Multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in IoMT
title_short Multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in IoMT
title_sort multistability and circuit implementation of tabu learning two-neuron model: application to secure biomedical images in iomt
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8199851/
https://www.ncbi.nlm.nih.gov/pubmed/34149189
http://dx.doi.org/10.1007/s00521-021-06130-3
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