For realizing neural networks with binary memristor crossbars, memristors should be programmed by high-resistance state (HRS) and low-resistance state (LRS), according to the training algorithms like backpropagation. Unfortunately, it takes a very long time and consumes a large amount of power in training the memristor crossbar, because the program-verify scheme of memristor-programming is based on the incremental programming pulses, where many programming and verifying pulses are repeated until the target conductance. Thus, this reduces the programming time and power is very essential for energy-efficient and fast training of memristor networks. In this paper, we compared four different programming schemes, which are F-F, C-F, F-C, and C-C...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
Voltages and currents in a memristor crossbar can be significantly affected due to nonideal effects ...
Abstract—The artificial neural network (ANN) is among the most widely used methods in data processin...
Power density constraint and device reliability issues are driving energy efficient, fault tolerant ...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Analog crossbar arrays comprising programmable non-volatile resistors are under intense investigatio...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Memristor is being considered as a game changer for the realization of neuromorphic hardware systems...
A real memristor crossbar has defects, which should be considered during the retraining time after t...
CMOS/Memristor integrated architectures have shown to be powerful for realizing energy-efficient lea...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Neuromorphic computing describes the use of electrical circuits to mimic biological architecture pre...
Neuromorphic systems based on hardware neural networks (HNNs) are expected to be an energy and time-...
Compact online learning architectures can be used to enhance internet of things devices, allowing th...
Neuromorphic systems are gaining signi cant importance in an era where CMOS digital techniques are r...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
Voltages and currents in a memristor crossbar can be significantly affected due to nonideal effects ...
Abstract—The artificial neural network (ANN) is among the most widely used methods in data processin...
Power density constraint and device reliability issues are driving energy efficient, fault tolerant ...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Analog crossbar arrays comprising programmable non-volatile resistors are under intense investigatio...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Memristor is being considered as a game changer for the realization of neuromorphic hardware systems...
A real memristor crossbar has defects, which should be considered during the retraining time after t...
CMOS/Memristor integrated architectures have shown to be powerful for realizing energy-efficient lea...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Neuromorphic computing describes the use of electrical circuits to mimic biological architecture pre...
Neuromorphic systems based on hardware neural networks (HNNs) are expected to be an energy and time-...
Compact online learning architectures can be used to enhance internet of things devices, allowing th...
Neuromorphic systems are gaining signi cant importance in an era where CMOS digital techniques are r...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
Voltages and currents in a memristor crossbar can be significantly affected due to nonideal effects ...
Abstract—The artificial neural network (ANN) is among the most widely used methods in data processin...