Fixed time synchronization of delayed fractional memristive Hopfield neural networks and its fractal dimension analysis
Key Points
Achieving fixed time synchronization enhances the performance of memristive neural networks, enabling them to operate effectively under delayed conditions.
The analysis explores the fractal dimension of these networks, providing insight into their complex dynamical systems.
A mathematical framework underpins the synchronization process, which relies on the properties of Hopfield networks and their memristive characteristics.
Further validation may be needed to assess performance in more complex or practical implementations of memristive systems.