Results from simulations of weight perturbation as an on-chip learning scheme for analogue VLSI neural networks are presented. The limitations of analogue hardware are modelled as realistically as possible. Thus synaptic weight precision is defined according to the smallest change in the weight setting voltage which gives a measurable change at the output of the corresponding neuron. Tests are carried out on a hard classification problem constructed from mobile robot navigation data. The simulations show that the degradation in classification performance on a 500-pattern test set caused by the introduction of realistic hardware constraints is acceptable: with 8-bit weights, updated probabilistically and with a simplified output error criter...
This paper addresses the mixed analog-digital hardware implementation of a Hamming artificial neural...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Spiking Neural Networks (SNNs) are becoming increasingly popular for their application in Edge Artif...
Results from simulations of weight perturbation as an on-chip learning scheme for analogue VLSI neur...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
A VLSI feedforward neural network is presented that makes use of digital weights and analog multipli...
A VLSI feedforward neural network is presented that makes use of digital weights and analog multipli...
A VLSI feedforward neural network is presented that makes use of digital weights and analog multipli...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
implemented as custom analog, digital or hybrid VLSI systems. This paper describes the tradeoffs amo...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
This paper presents a mathematical analysis of the effect of limited precision analog hardware for w...
Two feed-forward neural-network hardware implementations are presented. The first uses analog synaps...
This paper addresses the mixed analog-digital hardware implementation of a Hamming artificial neural...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Spiking Neural Networks (SNNs) are becoming increasingly popular for their application in Edge Artif...
Results from simulations of weight perturbation as an on-chip learning scheme for analogue VLSI neur...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
A VLSI feedforward neural network is presented that makes use of digital weights and analog multipli...
A VLSI feedforward neural network is presented that makes use of digital weights and analog multipli...
A VLSI feedforward neural network is presented that makes use of digital weights and analog multipli...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
implemented as custom analog, digital or hybrid VLSI systems. This paper describes the tradeoffs amo...
Analog VLSI implementations of artificial neural networks are usually considered efficient for the s...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
This paper deals with analog VLSI architectures addressed to the implementation of smart adaptive sy...
This paper presents a mathematical analysis of the effect of limited precision analog hardware for w...
Two feed-forward neural-network hardware implementations are presented. The first uses analog synaps...
This paper addresses the mixed analog-digital hardware implementation of a Hamming artificial neural...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Spiking Neural Networks (SNNs) are becoming increasingly popular for their application in Edge Artif...