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Adaptive Exponential State Estimation for Markovian Jumping Neural Networks with Multi-delays and Lévy Noises

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Abstract

This paper discusses the adaptive exponential state estimation problem of neutral-type neural networks with multi-delays and Lévy noises. The M-matrix method being different from other methods, such as the LMIs method, has been applied to deal with the problem. According to the M-matrix method, some state estimation criteria for neural networks concerning neutral-type delays and no neutral-type delays are acquired to ensure the adaptive exponential estimation. Finally, a simulation example is offered to show the advantages of the theoretical results.

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Acknowledgements

This study was funded by the National Natural Science Foundation of China (61673257; 11501367; 61573095; 61673221); the Natural Science Foundation of Jiangsu Province (BK20181418); the fifteenth batch of Six Talent Peaks Project in Jiangsu Province (DZXX-019).

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Correspondence to Dongbing Tong, Wuneng Zhou or Yuhua Xu.

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Chen, Q., Tong, D., Zhou, W. et al. Adaptive Exponential State Estimation for Markovian Jumping Neural Networks with Multi-delays and Lévy Noises. Circuits Syst Signal Process 38, 3321–3339 (2019). https://doi.org/10.1007/s00034-018-1004-4

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