Finite-Time \(L_\infty \) Performance State Estimation of Recurrent Neural Networks with Sampled-Data Signals

作者:N. Gunasekaran, M. Syed Ali, S. Pavithra

摘要

This paper, by proposing a sampled-data control scheme, we investigate the finite-time \(L_\infty \) performance state estimation of recurrent neural networks. By constructing a novel Lyapunov functional, new stability and stabilization conditions are derived. By utilizing integral inequality techniques, sufficient LMI conditions are derived to ensure the finite-time stability of considered neural networks. Furthermore, finite-time observer gain analysis of recurrent neural networks is set up to measure its disturbance tolerance capability in the fixed time interval. Numerical examples are given to verify the effectiveness of the proposed approach.

论文关键词: \(L_\infty \) performance, Recurrent neural networks, Finite-time stabilization, Nonuniform sampling, Linear matrix inequalities (LMIs)

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论文官网地址:https://doi.org/10.1007/s11063-019-10114-9