학술논문

Exponential Synchronization for Semi-Markovian Delayed Memristive Neural Networks with Intermittent Sampled-Data Control
Document Type
Conference
Source
2023 International Conference on New Trends in Computational Intelligence (NTCI) New Trends in Computational Intelligence (NTCI), 2023 International Conference on. 1:341-346 Nov, 2023
Subject
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Stability
Neural networks
Market research
Control systems
Linear matrix inequalities
Control theory
Synchronization
Intermittent sampled-data control
Semi-Markov jump parameters
Memristive neural networks
Exponential synchronization
Language
Abstract
This paper studies the problem of Exponential Synchronization (PES) for Memristor-based Neural Networks (MNNs) with Time-varying Delayed (TD) and semi-Markov Jump Parameters (semi-MJPs), employing Intermittent Sampled-data control (ISDC). By exploiting the free-matrix exponential-type inequality in conjunction with other analytical methodologies, a novel criterion for the stochastic exponential stability (CSES) of the error system is established, rooted in the LKF approach. This newly obtained criterion is expressed in terms of linear matrix inequalities, thereby alleviating the computational load associated with nonlinear matrix inequalities. Finally, present a numerical example that demonstrates the effectiveness of the proposed result.