In this paper we present the analog on-chip learning architecture of a gradient descent learning algorithm: the weight perturbation learning algorithm. From the circuit implementation point of view our approach is based on current mode and translinear operated circuits. The proposed architecture is very efficient in terms of speed, size, precision and power consumption; moreover it exhibits also high scalability and modularit
This chapter describes an analog VLSI implementation of a multilayer perceptron neural network with ...
International audienceIn this paper, we tackle the problem of incrementally learning a classifier, o...
The purpose of this study is to make precise estimations of the amount of power consumed by CMOS VLS...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
Results from simulations of weight perturbation as an on-chip learning scheme for analogue VLSI neur...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
The analog VLSI implementation of an on-chip learning neural network is discussed in this paper. The...
In this paper we present the analog CMOS design of a multi-layer-perceptron network with on-chip by-...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
A VLSI feedforward neural network is presented that makes use of digital weights and analog multipli...
In this paper we present the analog CMOS architecture of a Multi Layer Perceptron network with onchi...
In this paper we present the analog CMOS design of a Multi-Layer-Perceptron network with on-chip by-...
This paper presents a new stochastic learning algorithm suitable for analog implementation. The Neur...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
This chapter describes an analog VLSI implementation of a multilayer perceptron neural network with ...
International audienceIn this paper, we tackle the problem of incrementally learning a classifier, o...
The purpose of this study is to make precise estimations of the amount of power consumed by CMOS VLS...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
Results from simulations of weight perturbation as an on-chip learning scheme for analogue VLSI neur...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
The analog VLSI implementation of an on-chip learning neural network is discussed in this paper. The...
In this paper we present the analog CMOS design of a multi-layer-perceptron network with on-chip by-...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
A VLSI feedforward neural network is presented that makes use of digital weights and analog multipli...
In this paper we present the analog CMOS architecture of a Multi Layer Perceptron network with onchi...
In this paper we present the analog CMOS design of a Multi-Layer-Perceptron network with on-chip by-...
This paper presents a new stochastic learning algorithm suitable for analog implementation. The Neur...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
This chapter describes an analog VLSI implementation of a multilayer perceptron neural network with ...
International audienceIn this paper, we tackle the problem of incrementally learning a classifier, o...
The purpose of this study is to make precise estimations of the amount of power consumed by CMOS VLS...