The article considers a large class of delayed neural networks (NNs) with extended memristors obeying the Stanford model. This is a widely used and popular model that accurately describes the switching dynamics of real nonvolatile memristor devices implemented in nanotechnology. The article studies via the Lyapunov method complete stability (CS), i.e., convergence of trajectories in the presence of multiple equilibrium points (EPs), for delayed NNs with Stanford memristors. The obtained conditions for CS are robust with respect to variations of the interconnections and they hold for any value of the concentrated delay. Moreover, they can be checked either numerically, via a linear matrix inequality (LMI), or analytically, via the concept of...
The paper considers a feedback cellular neural network (CNN) obtained by interconnecting elementary ...
This article investigates the global exponential stabilization (GES) of inertial memristive neural n...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...
Neural networks with memristors are promising candidates to overcome the limitations of traditional ...
Recent papers in the literature introduced a class of neural networks (NNs) with memristors, named d...
This article shows a focus on the positivity and stability of Cohen-Grossberg-type time-delay memris...
The paper considers a neural network with a class of real extended memristors obtained via the paral...
© 2020 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Memristor-based neural networks refer to the utilisation of memristors, the newly emerged nanoscale ...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cog...
The paper introduces a class of memristor neural networks (NNs) that are characterized by the follow...
We present both an overview and a perspective of recent experimental advances and proposed new appro...
This article focuses on the hybrid effects of memristor characteristics, time delay, and biochemical...
The paper considers a class of CNNs, named dynamic-memristor (DM) CNNs, where each cell has an ideal...
The paper considers a feedback cellular neural network (CNN) obtained by interconnecting elementary ...
This article investigates the global exponential stabilization (GES) of inertial memristive neural n...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...
Neural networks with memristors are promising candidates to overcome the limitations of traditional ...
Recent papers in the literature introduced a class of neural networks (NNs) with memristors, named d...
This article shows a focus on the positivity and stability of Cohen-Grossberg-type time-delay memris...
The paper considers a neural network with a class of real extended memristors obtained via the paral...
© 2020 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Memristor-based neural networks refer to the utilisation of memristors, the newly emerged nanoscale ...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cog...
The paper introduces a class of memristor neural networks (NNs) that are characterized by the follow...
We present both an overview and a perspective of recent experimental advances and proposed new appro...
This article focuses on the hybrid effects of memristor characteristics, time delay, and biochemical...
The paper considers a class of CNNs, named dynamic-memristor (DM) CNNs, where each cell has an ideal...
The paper considers a feedback cellular neural network (CNN) obtained by interconnecting elementary ...
This article investigates the global exponential stabilization (GES) of inertial memristive neural n...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...