The electrophysiological behavior of real neurons is emulated by the silicon neuron. The network of neurons helps to obtain accurate results for a complicated system which has a non-linear behavior. The network is integrated on a single VLSI device and implemented in various fields as Neural Network. Neural Network is comprises of Asynchronous circuit, Memory architecture, Neuron, and Synapse circuits. The fast access, connectivity and power hungry operation are based on the Asynchronous and memory circuits. Since the power consumption has become a major limiting factor in any VLSI design, the proposed work presents an efficient Neural Network Architecture whose power consumption is minimized by differential and symmetrical properties of t...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
Goser K, Hilleringmann U, Rückert U, Schumacher K. VLSI Technologies for Artificial Neural Networks....
A compact neural network architecture using a hybrid digital-analog design is implemented in Very La...
<p>In recent years, neuromorphic architectures have been an increasingly effective tool used to solv...
Compared to modern supercomputers, which consume roughly 10^6 W of power, the human brain requires o...
Neural networks used as content-addressable memories show unequaled retrieval and speed capabilities...
Graduation date: 1989The brain has long attracted the interest of researchers. Some tasks, such as p...
The explosive growth of data and information has motivated technological developments in computing s...
Rapid advances in the semiconductor industry have provided the technologies for the implementation o...
This paper presents a digital silicon neuronal network which simulates the nerve system in creatures...
In this paper we present an asynchronous VLSI neuromorphic architecture comprising an array of integ...
We discuss the integration architecture of spiking neu-rons, predicted to be next-generation basic c...
Abstract—We implement a digital neuron in silicon using delay-insensitive asynchronous circuits. Our...
Abstract — This paper presents an analogue VLSI circuit intended to be used in a neural network arch...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
Goser K, Hilleringmann U, Rückert U, Schumacher K. VLSI Technologies for Artificial Neural Networks....
A compact neural network architecture using a hybrid digital-analog design is implemented in Very La...
<p>In recent years, neuromorphic architectures have been an increasingly effective tool used to solv...
Compared to modern supercomputers, which consume roughly 10^6 W of power, the human brain requires o...
Neural networks used as content-addressable memories show unequaled retrieval and speed capabilities...
Graduation date: 1989The brain has long attracted the interest of researchers. Some tasks, such as p...
The explosive growth of data and information has motivated technological developments in computing s...
Rapid advances in the semiconductor industry have provided the technologies for the implementation o...
This paper presents a digital silicon neuronal network which simulates the nerve system in creatures...
In this paper we present an asynchronous VLSI neuromorphic architecture comprising an array of integ...
We discuss the integration architecture of spiking neu-rons, predicted to be next-generation basic c...
Abstract—We implement a digital neuron in silicon using delay-insensitive asynchronous circuits. Our...
Abstract — This paper presents an analogue VLSI circuit intended to be used in a neural network arch...
Engineering neural network systems are best known for their abilities to adapt to the changing chara...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
Goser K, Hilleringmann U, Rückert U, Schumacher K. VLSI Technologies for Artificial Neural Networks....