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Hstate estimation for discrete-time neural networks with distributed delays and randomly occurring uncertainties through Fading channels

Volume: 89, Pages: 61 - 73
Published: Feb 14, 2017
Abstract
In this paper, the H∞ state estimation problem is investigated for a class of uncertain discrete-time neural networks subject to infinitely distributed delays and fading channels. Randomly occurring uncertainties (ROUs) are introduced to reflect the random nature of the network condition fluctuations, and the channel fading phenomenon is considered to account for the possibly unreliable network medium on which the measurement signal is...
Paper Details
Title
Hstate estimation for discrete-time neural networks with distributed delays and randomly occurring uncertainties through Fading channels
Published Date
Feb 14, 2017
Volume
89
Pages
61 - 73
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