2019
DOI: 10.1002/acs.2983
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Mittag‐Leffler state estimator design and synchronization analysis for fractional‐order BAM neural networks with time delays

Abstract: Item Type Article Authors Pratap, A.; Dianavinnarasi, J.; Raja, R.; Rajchakit, G.; Cao, J.; Bagdasar, Ovidiu Citation Rajchakit, G., et al (2019) 'Mittag-Leffler state estimator design and synchronization analysis for fractional order BAM neural networks with time delays'. AbstractThis paper deals with the extended design of Mittag-Leffler state estimator and adaptive synchronization for fractional order BAM neural networks (FBNNs) with time delays. By the aid of Lyapunov direct approach and Razumikhin-type me… Show more

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Cited by 33 publications
(18 citation statements)
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“…8 show the state trajectories of considered systems (38) and (39) respectively. Figures 9-10 present the evaluations of synchronization errors between FCDNNs (38) and isolated networks (39) under the controller (40). Figure 11-12 demonstrate the adaptive feedback control gains (40), which shows that the adaptive control gains may go to some positive constants.…”
Section: Computer Simulationsmentioning
confidence: 99%
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“…8 show the state trajectories of considered systems (38) and (39) respectively. Figures 9-10 present the evaluations of synchronization errors between FCDNNs (38) and isolated networks (39) under the controller (40). Figure 11-12 demonstrate the adaptive feedback control gains (40), which shows that the adaptive control gains may go to some positive constants.…”
Section: Computer Simulationsmentioning
confidence: 99%
“…As a consequence of these benefits, some researchers have shown their keen interest to integrate the FOC into NNs to make fractional-order neural networks (FONNs) models. Among others, the dynamical behaviors of FONNs have already become a hot research topic, and lots of scientific results have been well published in the literature (see [39][40][41][42][43]).…”
Section: Introduction and Modelingmentioning
confidence: 99%
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