As memristor-simulating synaptic devices have become available in recent years, the optimization on non-linearity degree (NL, related to adjacent conductance values) is unignorable in the promotion of the learning accuracy of systems. Importantly, based on the theoretical support of the Mott theory and the three partial differential equations, and the model of conductive filaments (CFs), we analyzed and summarized the optimization schemes on the physical structure and the extra stimulus signal from the internal factor and external influence, two aspects, respectively. It is worth noting that we divided the extra stimulus signals into two categories, the combined pulse signal and the feedback pulse signal. The former has an internal logical ...
In recent times, much-coveted memristor emulators have found their use in a variety of applications ...
Memristors have attracted interest as neuromorphic computation elements because they show promise in...
Memristors are memory resistors that promise the efficient implementation of synaptic weights in art...
To realize an analog artificial neural network hardware, the circuit element for synapse function is...
Memristor provides nonlinear response in the current-voltage characteristic and the memristance is m...
Artificial synapse having good linearity is crucial to achieve an efficient learning process in neur...
To realize an analog artificial neural network hardware, the circuit element for synapse function is...
A linearized programming method of memristor-based neural weights is proposed. Memristor is known as...
Neuromorphic computing describes the use of electrical circuits to mimic biological architecture pre...
This paper is dedicated to the experimental study of learning properties of systems, based on polyan...
Synaptic devices with bipolar analog resistive switching behavior are the building blocks for memris...
A nimals' survival is dependent on their abilities to adapt to the changing environment by adju...
The investigation of new memory schemes, neural networks, computer systems and many other improved e...
International audience—This work discusses the modeling of memristive devices, for architectures whe...
In this paper, we present a synapse function using analog resistive-switching behaviors in a SiN<sub...
In recent times, much-coveted memristor emulators have found their use in a variety of applications ...
Memristors have attracted interest as neuromorphic computation elements because they show promise in...
Memristors are memory resistors that promise the efficient implementation of synaptic weights in art...
To realize an analog artificial neural network hardware, the circuit element for synapse function is...
Memristor provides nonlinear response in the current-voltage characteristic and the memristance is m...
Artificial synapse having good linearity is crucial to achieve an efficient learning process in neur...
To realize an analog artificial neural network hardware, the circuit element for synapse function is...
A linearized programming method of memristor-based neural weights is proposed. Memristor is known as...
Neuromorphic computing describes the use of electrical circuits to mimic biological architecture pre...
This paper is dedicated to the experimental study of learning properties of systems, based on polyan...
Synaptic devices with bipolar analog resistive switching behavior are the building blocks for memris...
A nimals' survival is dependent on their abilities to adapt to the changing environment by adju...
The investigation of new memory schemes, neural networks, computer systems and many other improved e...
International audience—This work discusses the modeling of memristive devices, for architectures whe...
In this paper, we present a synapse function using analog resistive-switching behaviors in a SiN<sub...
In recent times, much-coveted memristor emulators have found their use in a variety of applications ...
Memristors have attracted interest as neuromorphic computation elements because they show promise in...
Memristors are memory resistors that promise the efficient implementation of synaptic weights in art...