Global Exponential Dissipativity of Impulsive Recurrent Neural Networks with Multi-proportional Delays

作者:Liqun Zhou

摘要

This paper addresses the global exponential dissipativity (GED) of impulsive recurrent neural networks (IRNNs) with proportional delays. By introducing some adjustable parameters, skillfully designing several Lyapunov functionals and utilizing matrix norm properties, serval delay-dependent GED criteria are developed, and global attractive sets (GAS) and global exponential attractive sets (GEAS) of the proposed system are given. These adjustable parameters are related to the exponential decay rate and contribute greatly to expand the attractive sets of this paper. Here the criteria proposed improve and extend the earlier global dissipativity criteria. Several numerical examples are used to verify the obtained results and show that the obtained results are independent of each other.

论文关键词:Global exponential dissipativity, Proportional delay, Recurrent neural networks (RNNs), Adjustable parameters, Impulsive effect

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论文官网地址:https://doi.org/10.1007/s11063-021-10451-8