Nonlinear Dynamics

, Volume 93, Issue 4, pp 2249–2262 | Cite as

Quantized energy-to-peak state estimation for persistent dwell-time switched neural networks with packet dropouts

  • Hao Shen
  • Zhengguo Huang
  • Xiaofei Yang
  • Zhen WangEmail author
Original Paper


This paper pays close attention to the problem of energy-to-peak state estimation for a class of neural networks under switching mechanism. Persistent dwell-time switching rule, which is more generic than average dwell-time and dwell-time, is employed. In addition, the particular concept for persistent dwell-time, including the specific distinction between sample time and switching instant, is given. The measured output subject to quantized signals is used for alleviating the overhead about communication channel. At the same time, the random packet losses with its probability obeying Bernoulli distribution is considered. By the aid of a suitable mode-dependent Lyapunov function and switched system theory, the expected mode-dependent estimator is developed to guarantee that the resulting estimation error system is mean-square exponentially stable and meets a prescribed energy-to-peak performance index. In the end, the applicability of the proposed method is illustrated by utilizing a numerical example.


Energy-to-peak state estimation Persistent dwell-time Switched neural networks Packet dropouts 


Compliance with ethical standards

Conflict of interest

No potential conflict of interest was reported by the authors.


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Authors and Affiliations

  1. 1.School of Electrical and Information EngineeringAnhui University of TechnologyMa’anshanChina
  2. 2.College of Electrical Engineering and AutomationShandong University of Science and TechnologyQingdaoChina
  3. 3.School of Electronics and InformationJiangsu University of Science and TechnologyZhenjiangChina

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