Asynchronous \(l_{2}\)–\(l_{\infty }\) Filtering for Discrete-Time Fuzzy Markov Jump Neural Networks with Unreliable Communication Links

作者:Yigang Zhang, Jianwei Xia, Xia Huang, Jing Wang, Hao Shen

摘要

This paper investigates the problem of \(l_{2}\)–\(l_{\infty }\) asynchronous filtering for a class of discrete-time fuzzy neural networks subject to Markov jump parameters and unreliable communication links. Due to the fact that neural networks possess the nonlinear dynamic characteristic, it is difficult to deal with such a nonlinear characteristic directly, so the Takagi–Sugeno fuzzy model is introduced to approximate the system. Directed against the unreliable communication links, the data packet loss depicted by a stochastic variable with Bernoulli distribution and the signal quantization phenomenon occurring in communication channels are taken into consideration simultaneously. The attention of this paper is mainly centered on devising an asynchronous \(l_{2}\)–\(l_{\infty }\) filter for ensuring the \(l_{2}\)–\(l_{\infty }\) performance of the studied system under asynchronous conditions. Some sufficient conditions for the existence of the asynchronous \(l_{2}\)–\(l_{\infty }\) filter are presented. Finally, a numerical example is given to carry out the simulation experiment, which can verify the effectiveness of the obtained results.

论文关键词:Fuzzy Markov jump neural networks, Asynchronous \(l_{2}-l_{\infty }\) filter, Data packet loss, Signal quantization

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论文官网地址:https://doi.org/10.1007/s11063-020-10337-1