Stability analysis of switched cellular neural networks: A mode-dependent average dwell time approach

Neural Netw. 2016 Oct:82:84-99. doi: 10.1016/j.neunet.2016.07.009. Epub 2016 Jul 26.

Abstract

This paper addresses the exponential stability of switched cellular neural networks by using the mode-dependent average dwell time (MDADT) approach. This method is quite different from the traditional average dwell time (ADT) method in permitting each subsystem to have its own average dwell time. Detailed investigations have been carried out for two cases. One is that all subsystems are stable and the other is that stable subsystems coexist with unstable subsystems. By employing Lyapunov functionals, linear matrix inequalities (LMIs), Jessen-type inequality, Wirtinger-based inequality, reciprocally convex approach, we derived some novel and less conservative conditions on exponential stability of the networks. Comparing to ADT, the proposed MDADT show that the minimal dwell time of each subsystem is smaller and the switched system stabilizes faster. The obtained results extend and improve some existing ones. Moreover, the validness and effectiveness of these results are demonstrated through numerical simulations.

Keywords: Cellular neural network; Lyapunov method; Mode-dependent average dwell time; Stability; Switched system.

MeSH terms

  • Algorithms
  • Computer Simulation / trends
  • Neural Networks, Computer*
  • Neurons* / physiology