YAN Huan, SONG Qian-kun, ZHAO Zhen-jiang. Global Stability of Impulsive Complex-Valued Neural Networks With Time Delay on Time Scales[J]. Applied Mathematics and Mechanics, 2015, 36(11): 1191-1203. doi: 10.3879/j.issn.1000-0887.2015.11.007
Citation: YAN Huan, SONG Qian-kun, ZHAO Zhen-jiang. Global Stability of Impulsive Complex-Valued Neural Networks With Time Delay on Time Scales[J]. Applied Mathematics and Mechanics, 2015, 36(11): 1191-1203. doi: 10.3879/j.issn.1000-0887.2015.11.007

Global Stability of Impulsive Complex-Valued Neural Networks With Time Delay on Time Scales

doi: 10.3879/j.issn.1000-0887.2015.11.007
Funds:  The National Natural Science Foundation of China((61273021; 61473332)
  • Received Date: 2015-06-16
  • Rev Recd Date: 2015-07-21
  • Publish Date: 2015-11-15
  • The global stability of impulsive complex-valued neural networks with time delay on time scales was investigated. Based on the time scale calculus theory, both the continuous-time and discrete-time neural networks were described under the same framework. For the considered complex-valued neural networks, the activation functions need not be bounded. According to the homeomorphism mapping principle in the complex domain, a sufficient condition for the existence and uniqueness of the equilibrium point of the addressed complex-valued neural networks was proposed in complex-valued linear matrix inequality (LMI). Through the construction of appropriate Lyapunov-Krasovskii functionals, and with the free weighting matrix method and matrix inequality technique, a delay-dependent criterion for checking the global stability of the complex-valued neural networks was established in the complex-valued LMIs. Finally, a simulation example shows the effectiveness of the obtained results.
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