This paper presents a new technique for automatically creating analog circuit models. The method extracts- from trained neural networks- piecewise linear models express-ing the linear dependencies between circuit performances and design parameters. The paper illustrates the technique for an OTA circuit for which models for gain and bandwidth were automatically generated. The extracted models have a simple form that accurately fits the sampled points and the behavior of the trained neural networks. These models are useful for fast simulation of systems with non-linear behav-ior and performances. 1
Artificial neural networks (ANNs) are presented for the technology-independent modeling of active de...
Abstract: The paper addresses a simple and fast new approach to implement Artificial Neural Networks...
Artificial neural networks (ANNs) are presented for the technology-independent modeling of active de...
are applied to modeling of electronic circuits. ANNs are used for application of the black-box model...
This paper presents a method for fast time-domain simulation of analog systems with nonlinear parame...
One of the typical applications of neural networks is based on their ability to generate fitting sur...
AbstractIn the neural network field, many application models have been proposed. Previous analog neu...
We introduce CompNN, a compositional method for the construction of a neural-network (NN) capturing ...
This paper presents a neural network system for the diagnosis of analog circuits and shows how the p...
This paper presents a neural network system for the diagnosis of analog circuits and shows how the p...
We present an analog VLSI neural network for texture analysis; in particular we show that the filter...
In this work we want to present a novel application of Neural Networks as a Black-Box model, which a...
In this work we want to present a novel application of Neural Networks as a Black-Box model, which a...
The parameter extraction of device models is critically important for circuit simulation. The device...
In this study, a neuron model designed with symmetrical multi-input OTA is presented. The behaviour ...
Artificial neural networks (ANNs) are presented for the technology-independent modeling of active de...
Abstract: The paper addresses a simple and fast new approach to implement Artificial Neural Networks...
Artificial neural networks (ANNs) are presented for the technology-independent modeling of active de...
are applied to modeling of electronic circuits. ANNs are used for application of the black-box model...
This paper presents a method for fast time-domain simulation of analog systems with nonlinear parame...
One of the typical applications of neural networks is based on their ability to generate fitting sur...
AbstractIn the neural network field, many application models have been proposed. Previous analog neu...
We introduce CompNN, a compositional method for the construction of a neural-network (NN) capturing ...
This paper presents a neural network system for the diagnosis of analog circuits and shows how the p...
This paper presents a neural network system for the diagnosis of analog circuits and shows how the p...
We present an analog VLSI neural network for texture analysis; in particular we show that the filter...
In this work we want to present a novel application of Neural Networks as a Black-Box model, which a...
In this work we want to present a novel application of Neural Networks as a Black-Box model, which a...
The parameter extraction of device models is critically important for circuit simulation. The device...
In this study, a neuron model designed with symmetrical multi-input OTA is presented. The behaviour ...
Artificial neural networks (ANNs) are presented for the technology-independent modeling of active de...
Abstract: The paper addresses a simple and fast new approach to implement Artificial Neural Networks...
Artificial neural networks (ANNs) are presented for the technology-independent modeling of active de...