4.6 Article

Outlier-resistant variance-constrained H yen state estimation for time- varying recurrent neural networks with randomly occurring deception attacks

Journal

NEURAL COMPUTING & APPLICATIONS
Volume 35, Issue 18, Pages 13261-13273

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s00521-023-08419-x

Keywords

Discrete time-varying recurrent neural networks; Variance constraint; Outlier-resistant estimation; Randomly occurring deception attacks; H(8 )performance

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This paper investigates the outlier-resistant variance-constrained H-infinity state estimation problem for a class of discrete time varying recurrent neural networks with randomly occurring deception attacks. The randomly occurring deception attacks are modeled by a series of random variables satisfying the Bernoulli distribution with known probability. In addition, the saturation function is introduced to reduce the negative impact from the measurement outliers onto the estimation performance. The objective of this paper is to propose an outlier-resistant finite-horizon state estimation scheme without utilizing the augmentation method such that, in the presence of measurement outliers and randomly occurring deception attacks, some sufficient criteria are obtained ensuring both the desired H-infinity performance index and the error variance boundedness. Finally, a numerical example is used to illustrate the feasibility of the presented outlier-resistant variance constrained H-infinity, state estimation algorithm.
This paper investigates the outlier-resistant variance-constrained H-infinity state estimation problem for a class of discrete time varying recurrent neural networks with randomly occurring deception attacks. The randomly occurring deception attacks are modeled by a series of random variables satisfying the Bernoulli distribution with known probability. In addition, the saturation function is introduced to reduce the negative impact from the measurement outliers onto the estimation performance. The objective of this paper is to propose an outlier-resistant finite-horizon state estimation scheme without utilizing the augmentation method such that, in the presence of measurement outliers and randomly occurring deception attacks, some sufficient criteria are obtained ensuring both the desired H-infinity performance index and the error variance boundedness. Finally, a numerical example is used to illustrate the feasibility of the presented outlier-resistant variance constrained H-infinity, state estimation algorithm.

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