In this chapter, we introduce an analog chip hosting a self-learning neural network with local learning rate adaptation. The neural architecture has been validated through intensive simulation on the recognition of handwritten characters. It has hence been mapped onto an analog architecture. The prototype chip implementing the whole on-chip learning neural architecture has been designed and fabricated by using a 0.7 um channel length CMOS technology, Experimental results on two learning tasks confirm the functionality of the chip and the soundness of the approach. The chip features a peak performance of 2.65 \uf0b4 10^6 connections updated per second
This paper addresses the mixed analog-digital hardware implementation of a Hamming artificial neural...
An ASIC analog chip which implements the basic computational primitives of a neural model with on-ch...
In this paper we present the analog CMOS architecture of a Multi Layer Perceptron network with onchi...
The analog VLSI implementation of an on-chip learning neural network is discussed in this paper. The...
In this paper we present the analog architecture and the implementation of an on-chip learning Multi...
In this paper we present the analog architecture and the implementation of an on-chip learning Multi...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
We present and discuss the major results of our research activity aimed to the analog VLSI implement...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
We present and discuss the major results of our research activity aimed to the analog VLSI implement...
This chapter describes an analog VLSI implementation of a multilayer perceptron neural network with ...
In this paper we present the analog CMOS design of a Multi-Layer-Perceptron network with on-chip by-...
In this paper we present the analog CMOS design of a multi-layer-perceptron network with on-chip by-...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
This paper addresses the mixed analog-digital hardware implementation of a Hamming artificial neural...
An ASIC analog chip which implements the basic computational primitives of a neural model with on-ch...
In this paper we present the analog CMOS architecture of a Multi Layer Perceptron network with onchi...
The analog VLSI implementation of an on-chip learning neural network is discussed in this paper. The...
In this paper we present the analog architecture and the implementation of an on-chip learning Multi...
In this paper we present the analog architecture and the implementation of an on-chip learning Multi...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
We present and discuss the major results of our research activity aimed to the analog VLSI implement...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
We present and discuss the major results of our research activity aimed to the analog VLSI implement...
This chapter describes an analog VLSI implementation of a multilayer perceptron neural network with ...
In this paper we present the analog CMOS design of a Multi-Layer-Perceptron network with on-chip by-...
In this paper we present the analog CMOS design of a multi-layer-perceptron network with on-chip by-...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
This paper addresses the mixed analog-digital hardware implementation of a Hamming artificial neural...
An ASIC analog chip which implements the basic computational primitives of a neural model with on-ch...
In this paper we present the analog CMOS architecture of a Multi Layer Perceptron network with onchi...