Finite-time stabilization of complex-valued neural networks with proportional delays and inertial terms: A non-separation approach.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

This article mainly dedicates on the issue of finite-time stabilization of complex-valued neural networks with proportional delays and inertial terms via directly constructing Lyapunov functions without separating the original complex-valued neural networks into two real-valued subsystems equivalently. First of all, in order to facilitate the analysis of the second-order derivative caused by the inertial term, two intermediate variables are introduced to transfer complex-valued inertial neural networks (CVINNs) into the first-order differential equation form. Then, under the finite-time stability theory, some new criteria with less conservativeness are established to ensure the finite-time stabilizability of CVINNs by a newly designed complex-valued feedback controller. In addition, for reducing expenses of the control, an adaptive control strategy is also proposed to achieve the finite-time stabilization of CVINNs. At last, numerical examples are given to demonstrate the validity of the derived results.

Authors

  • Changqing Long
    School of Mathematics and statistics, South-Central University For Nationalities, Wuhan 430074, China.
  • Guodong Zhang
  • Zhigang Zeng
  • Junhao Hu
    College of Mathematics and Statistics, South-Central University for Nationalities, Wuhan 430074, China. Electronic address: junhaohu74@163.com.