© 1982-2012 IEEE. Back propagation (BP) based on stochastic gradient descent is the prevailing method to train multilayer neural networks (MNNs) with hidden layers. However, the existence of the physical separation between memory arrays and arithmetic module makes it inefficient and ineffective to implement BP in conventional digital hardware. Although CMOS may alleviate some problems of the hardware implementation of MNNs, synapses based on CMOS cost too much power and areas in very large scale integrated circuits. As a novel device, memristor shows promises to overcome this shortcoming due to its ability to closely integrate processing and memory. This paper proposes a novel circuit for implementing a synapse based on a memristor and two ...
Neuromorphic computing describes the use of electrical circuits to mimic biological architecture pre...
Fuzzification of neural networks show great promise in improving system reliability and computationa...
Memristors are widely considered as promising elements for the efficient implementation of synaptic ...
Memristors offer great advantages as a new hardware solution for neuromorphic computing due to their...
Abstract—The artificial neural network (ANN) is among the most widely used methods in data processin...
At present, it is an urgent issue to effectively train artificial neural network (ANN), especially w...
Artificial Intelligence (AI) has found many applications in the past decade due to the ever increasi...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Artificial Intelligence has found many applications in the last decade due to increased computing po...
Analogue in-memory computing and brain-inspired computing based on the emerging memory technology ...
Memristor-based neuromorphic computing systems address the memory-wall issue in von Neumann architec...
Memristors are memory resistors that promise the efficient implementation of synaptic weights in art...
International audienceThe integration of memristive nanodevices within transistor-based electronic s...
Neuromorphic systems are gaining signi cant importance in an era where CMOS digital techniques are r...
CMOS/Memristor integrated architectures have shown to be powerful for realizing energy-efficient lea...
Neuromorphic computing describes the use of electrical circuits to mimic biological architecture pre...
Fuzzification of neural networks show great promise in improving system reliability and computationa...
Memristors are widely considered as promising elements for the efficient implementation of synaptic ...
Memristors offer great advantages as a new hardware solution for neuromorphic computing due to their...
Abstract—The artificial neural network (ANN) is among the most widely used methods in data processin...
At present, it is an urgent issue to effectively train artificial neural network (ANN), especially w...
Artificial Intelligence (AI) has found many applications in the past decade due to the ever increasi...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Artificial Intelligence has found many applications in the last decade due to increased computing po...
Analogue in-memory computing and brain-inspired computing based on the emerging memory technology ...
Memristor-based neuromorphic computing systems address the memory-wall issue in von Neumann architec...
Memristors are memory resistors that promise the efficient implementation of synaptic weights in art...
International audienceThe integration of memristive nanodevices within transistor-based electronic s...
Neuromorphic systems are gaining signi cant importance in an era where CMOS digital techniques are r...
CMOS/Memristor integrated architectures have shown to be powerful for realizing energy-efficient lea...
Neuromorphic computing describes the use of electrical circuits to mimic biological architecture pre...
Fuzzification of neural networks show great promise in improving system reliability and computationa...
Memristors are widely considered as promising elements for the efficient implementation of synaptic ...