Exponential Stabilization for Hybrid Recurrent Neural Networks by Delayed Noises Rooted in Discrete Observations of State and Mode

作者:Lichao Feng, Jinde Cao, Jun Hu, Zhihui Wu, Leszek Rutkowski

摘要

Recently, the random noises derived from discrete state observations are creatively designed to realize the role of stabilization for deterministic systems in the existing result. However, for a hybrid neural network, except for the factor of discrete state observations, one always needs to consider the factors of delays and discrete mode identifications. Hence, taking delays and discrete mode identifications into account for random noises is more reasonable and practical than the original work. Motivated by the idea above, this brief is to design delayed random noises derived from discrete state observations and discrete mode identifications to almost surely exponentially stabilize an unstable hybrid recurrent neural networks, by virtue of M-matrix and stochastic analysis methods.

论文关键词:Hybrid recurrent neural networks, Random noises, Exponential stabilization, Discrete observations, Delay

论文评审过程:

论文官网地址:https://doi.org/10.1007/s11063-019-10059-z