4.5 Article

Partial-Neurons-Based H8 State Estimation for Time-Varying Neural Networks Subject to Randomly Occurring Time Delays under Variance Constraint

Journal

NEURAL PROCESSING LETTERS
Volume -, Issue -, Pages -

Publisher

SPRINGER
DOI: 10.1007/s11063-023-11312-2

Keywords

Time-varying recurrent neural networks; Partial-neurons-based state estimation; Variance constraint; H-8 performance; Randomly occurring time delays

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This paper discusses the issue of partial-neurons-based H-8 state estimation for time-varying recurrent neural networks subject to randomly occurring time delays under variance constraint index. The aim is to propose the non-augmented partial-neurons based state estimation strategy. Finally, a simulation example is used to demonstrate the feasibility of presented partial-neurons-based H-8 state estimation algorithm.
This paper discusses the issue of partial-neurons-based H-8 state estimation for time-varying recurrent neural networks subject to randomly occurring time delays under variance constraint index. The measurement outputs are allowed to be available only at certain neurons. In addition, a random variable is introduced to model the randomly occurring time delays with certain occurrence probability. The aim is to propose the non-augmented partial-neurons based state estimation strategy. Accordingly, some sufficient conditions are given to ensure two indices including the pre-determined H-8 performance index and the error variance boundedness via the stochastic analysis approach. Finally, a simulation example is used to demonstrate the feasibility of presented partial-neurons-based H-8 state estimation algorithm.

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