H∞ state estimation of continuous-time neural networks with uncertainties

H ∞ state estimation is addressed for continuous-time neural networks in the paper. The norm-bounded uncertainties are considered in communication neural networks. For the considered neural networks with uncertainties, a reduced-order H ∞ state estimator is designed, which makes that the error dynam...

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Veröffentlicht in:Scientific reports 2024-01, Vol.14 (1), p.1852-12, Article 1852
Hauptverfasser: Li, Aiting, Chen, Yanhui, Hu, Yun, Liu, Dazhi, Liu, Jinhui
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Sprache:eng
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Zusammenfassung:H ∞ state estimation is addressed for continuous-time neural networks in the paper. The norm-bounded uncertainties are considered in communication neural networks. For the considered neural networks with uncertainties, a reduced-order H ∞ state estimator is designed, which makes that the error dynamics is exponentially stable and has weighted H ∞ performance index by Lyapunov function method. Moreover, it is also given the devised method of the reduced-order H ∞ state estimator. Then, considering that sampling the output y ( t ) of the neural network at every moment will result in waste of excess resources, the event-triggered sampling strategy is used to solve the oversampling problem. In addition, a devised method is also given for the event-triggered reduced-order H ∞ state estimator. Finally, by the well-known Tunnel Diode Circuit example, it shows that a lower order state estimator can be designed under the premise of maintaining the same weighted H ∞ performance index, and using the event-triggered sampling method can reduce the computational and time costs and save communication resources.
ISSN:2045-2322
2045-2322
DOI:10.1038/s41598-024-52209-x