This paper present the design of a neural network for signal decomposition problems with application examples. For this class of problems the proposed network has the same dynamics as the Hopfield net, but it is shown to realize the O(M2) connection paths among the M neurons with a number of wires and conductances increasing only linearly with increasing M, i.e. reducing this number by one dimension with respect to the quadratically increasing number of wires and conductances required in the Hopfield net. Other advantages of the proposed neural network are discussed in relation to classical examples of decomposition problems. In particular, a new architecture for an N-bit A/D converter is presented employing 4N conductances instead of the N...
With the increase in data rates, signal integrity analysis has become more time and memory intensive...
It is shown that a Hopfield neural network (with linear transfer functions) augmented by an addition...
A model of neurons with CHN (Continuous Hysteresis Neurons) for the Hopfield neural networks is stud...
This paper present the design of a neural network for signal decomposition problems with application...
In this paper we study the problem of designing a neural network that gives the correct binary repre...
This book aims to present a viable alternative to the Hopfield Neural Network (HNN) model for analog...
Given the increased use of neural networks for various tasks in audio signal processing, this paper ...
The authors describe the potential of neural net filters in communication systems. They consider app...
Hopf ield neural net processors (NNP): n a v e been shown to be an interesting class '.of faul ...
Implementation of the Hopfield net which is used in the image processing type of applications where ...
Neural networks are finding increasing use as an adaptive signal classifier in many engineering appl...
AbstractIn this paper we consider possible extensions of the classical multilayer artificial neural ...
Abstract- We propose a neural network to answer a point query in ‘P partitioned based on the Voronoi...
This paper discusses the design of a neural network for solving some classes of combinatorial optimi...
Neural networks have shown promise as new computation tools for solving constrained optimization pro...
With the increase in data rates, signal integrity analysis has become more time and memory intensive...
It is shown that a Hopfield neural network (with linear transfer functions) augmented by an addition...
A model of neurons with CHN (Continuous Hysteresis Neurons) for the Hopfield neural networks is stud...
This paper present the design of a neural network for signal decomposition problems with application...
In this paper we study the problem of designing a neural network that gives the correct binary repre...
This book aims to present a viable alternative to the Hopfield Neural Network (HNN) model for analog...
Given the increased use of neural networks for various tasks in audio signal processing, this paper ...
The authors describe the potential of neural net filters in communication systems. They consider app...
Hopf ield neural net processors (NNP): n a v e been shown to be an interesting class '.of faul ...
Implementation of the Hopfield net which is used in the image processing type of applications where ...
Neural networks are finding increasing use as an adaptive signal classifier in many engineering appl...
AbstractIn this paper we consider possible extensions of the classical multilayer artificial neural ...
Abstract- We propose a neural network to answer a point query in ‘P partitioned based on the Voronoi...
This paper discusses the design of a neural network for solving some classes of combinatorial optimi...
Neural networks have shown promise as new computation tools for solving constrained optimization pro...
With the increase in data rates, signal integrity analysis has become more time and memory intensive...
It is shown that a Hopfield neural network (with linear transfer functions) augmented by an addition...
A model of neurons with CHN (Continuous Hysteresis Neurons) for the Hopfield neural networks is stud...