학술논문

Convergence of Neural Networks with a Class of Real Memristors with Rectifying Characteristics
Document Type
article
Source
Mathematics, Vol 10, Iss 21, p 4024 (2022)
Subject
convergence
diode-like nonlinearities
flux–charge analysis method
image processing
invariants of motion
Lyapunov functions
Mathematics
QA1-939
Language
English
ISSN
2227-7390
Abstract
The paper considers a neural network with a class of real extended memristors obtained via the parallel connection of an ideal memristor and a nonlinear resistor. The resistor has the same rectifying characteristic for the current as that used in relevant models in the literature to account for diode-like effects at the interface between the memristor metal and insulating material. The paper proves some fundamental results on the trajectory convergence of this class of real memristor neural networks under the assumption that the interconnection matrix satisfies some symmetry conditions. First of all, the paper shows that, while in the case of neural networks with ideal memristors, it is possible to explicitly find functions of the state variables that are invariants of motions, the same functions can be used as Lyapunov functions that decrease along the trajectories in the case of real memristors with rectifying characteristics. This fundamental property is then used to study convergence by means of a reduction-of-order technique in combination with a Lyapunov approach. The theoretical predictions are verified via numerical simulations, and the convergence results are illustrated via the applications of real memristor neural networks to the solution of some image processing tasks in real time.