Abstract
The delay-dependent state estimation problem for Takagi-Sugeno fuzzy stochastic neural networks with time-varying delays is considered in this paper. We aim to design state estimators to estimate the network states such that the dynamics of the estimation error systems are guaranteed to be exponentially stable in the mean square. Both fuzzy-rule-independent and the fuzzy-rule-dependent state estimators are designed. Delay-dependent sufficient conditions are presented to guarantee the existence of the desired state estimators for the fuzzy stochastic neural networks. Finally, two numerical examples demonstrate that the proposed approaches are effective.
Funding statement: Funding: The National Natural Science Foundation of China, (Grant / Award Number: ’60874114’).
Acknowledgements:
This work is supported by the National Natural Science Foundation of China under grants 60874114 and the Natural Science Foundation of Guang Dong province under grants 2015A030310336.
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© 2017 Walter de Gruyter GmbH, Berlin/Boston
Articles in the same Issue
- Frontmatter
- Rosenau-KdV Equation Coupling with the Rosenau-RLW Equation: Conservation Laws and Exact Solutions
- Stability Analysis of HIV/AIDS Transmission with Treatment and Role of Female Sex Workers
- Numerical Study of the Discharged Heat Water Effect on the Aquatic Environment from Thermal Power Plant by using Two Water Discharged Pipes
- An Efficient Wavelet-Based Collocation Method for Handling Singularly Perturbed Boundary-Value Problems in Fluid Mechanics
- Improved Results on State Estimation for Uncertain Takagi-Sugeno Fuzzy Stochastic Neural Networks with Time-Varying Delays
- Numerical Simulation of Heat Distribution with Temperature-Dependent Thermal Conductivity in a Two-Dimensional Liquid Flow
- Experimental Synchronization of Two Van der Pol Oscillators with Nonlinear and Delayed Unidirectional Coupling
- Real-Time Swing-up and Stabilization Control of a Cart-Pendulum System with Constrained Cart Movement
- Effect of the Nonlinear Parameters on the Propagation in Bi-isotropic Media
Articles in the same Issue
- Frontmatter
- Rosenau-KdV Equation Coupling with the Rosenau-RLW Equation: Conservation Laws and Exact Solutions
- Stability Analysis of HIV/AIDS Transmission with Treatment and Role of Female Sex Workers
- Numerical Study of the Discharged Heat Water Effect on the Aquatic Environment from Thermal Power Plant by using Two Water Discharged Pipes
- An Efficient Wavelet-Based Collocation Method for Handling Singularly Perturbed Boundary-Value Problems in Fluid Mechanics
- Improved Results on State Estimation for Uncertain Takagi-Sugeno Fuzzy Stochastic Neural Networks with Time-Varying Delays
- Numerical Simulation of Heat Distribution with Temperature-Dependent Thermal Conductivity in a Two-Dimensional Liquid Flow
- Experimental Synchronization of Two Van der Pol Oscillators with Nonlinear and Delayed Unidirectional Coupling
- Real-Time Swing-up and Stabilization Control of a Cart-Pendulum System with Constrained Cart Movement
- Effect of the Nonlinear Parameters on the Propagation in Bi-isotropic Media