Weighted Sum Synchronization of Memristive Coupled Neural Networks
It is well known that weighted sum of node states plays an essential role in function implementation of neural networks. Therefore, this paper proposes a new weighted sum synchronization model for memristive neural networks. Unlike the existing synchronization models of memristive neural networks which control each network node to reach synchronization, the proposed model treats the networks as dynamic entireties by weighted sum of node states and makes the entireties instead of each node reach expected synchronization. In this paper, weighted sum complete synchronization and quasi-synchronization are both investigated by designing feedback controller and aperiodically intermittent controller, respectively. Meanwhile, a flexible control scheme is designed for the proposed model by utilizing some switching parameters and can improve anti-interference ability of control system. By applying Lyapunov method and some differential inequalities, some effective criteria are derived to ensure the synchronizations of memristive neural networks. Moreover, the error level of the quasi-synchronization is given. Finally, numerical simulation examples are used to certify the effectiveness of the derived results.
Item Type | Article |
---|---|
Uncontrolled Keywords | Feedback control; Intermittent control; Lyapunov function; Memristive coupled neural networks; Weighted sum synchronization |
Subjects |
Computer Science(all) > Computer Science Applications Neuroscience(all) > Cognitive Neuroscience Computer Science(all) > Artificial Intelligence |
Date Deposited | 26 Jul 2024 22:36 |
Last Modified | 26 Jul 2024 22:36 |
Explore Further
Read more research from the creator(s):
Find work associated with the faculties and division(s):
- Centre for Engineering Research
- Communications and Intelligent Systems
- School of Physics, Engineering & Computer Science
- Department of Engineering and Technology
Find other related resources: