Further results on state estimation for neural networks of neutral-type with time-varying delay.

*(English)*Zbl 1169.34334The goal of the work is to estimate the neuron states of a neutral type network with time-varying delays through available output measurements for the first time. The authors consider the same problem for the same class of systems as in their previous work [Appl. Math. Comput. 203, No. 1, 217–223 (2008; Zbl 1166.34331)]. Based on Lyapunov methods and the linear matrix inequality, a novel criterion for the existence of the proposed state estimator of the network is given. This criterion differs from that one derived in [loc. cit.], however, it is proved by the technique analogous to that in the mentioned work.

Reviewer: Vyacheslav I. Maksimov (Ekaterinburg)

##### MSC:

34K35 | Control problems for functional-differential equations |

34K40 | Neutral functional-differential equations |

92B20 | Neural networks for/in biological studies, artificial life and related topics |

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\textit{J. H. Park} and \textit{O. M. Kwon}, Appl. Math. Comput. 208, No. 1, 69--75 (2009; Zbl 1169.34334)

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##### References:

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