A direct analysis method to global h-stability of positive
Cohen-Grossberg neural networks with time-varying delays
Abstract
In this paper, global h-stability of nonlinear positive Cohen-Grossberg
neural network (PCGNN) system with time-varying delays is studied by
means of a direct analysis method. By selecting the appropriate h
function and determining its differential expression, global h-stability
is converted into two types of known stability, that is Lagrangian
exponential stability and global exponential stability. For the sake of
improving the accuracy of the stability results, we spare no effort to
optimize the fitting effect of the system state trajectory by changing
the differential expression of the h function. In addition, two examples
are given to verify the feasibility and effectiveness of this method in
PCGNN.