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混合時變時滯神經網絡的狀態估計器設計

Design of state estimators for neural networks with mixed time-varying delays

  • 摘要: 研究了混合時變時滯(離散時滯和分布時滯)神經網絡的狀態估計問題.離散時滯在一個區間上變化,區間下界不一定為零.通過構造一個新的Lyapunov泛函,結合Jensen積分不等式,可以得到一個時滯相關狀態估計器設計方法,使得誤差系統是全局漸近穩定的,所得結果由線性矩陣不等式形式給出.數值算例證明了本文方法的有效性和優越性.

     

    Abstract: The state estimation problem was studied for neural networks with mixed discrete and distributed time-varying delays as well as general activation functions. The discrete time-varying delay varies in an interval, where the lower bound is not fixed to be zero. Defining a novel Lyapunov functional and using the Jensen integral inequality, a delay-interval-dependent criterion is provided to design a state estimator through available output measurements in terms of a linear matrix inequality (LMI), such that the error-state system is globally asymptotically stable. A numerical example was given to illustrate that this result is more effective and less conservative than some existing ones.

     

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