Trabalho completo: acesso restrito, p. 472-480Recurrent neural networks (RNNs) have been successfully applied to communications channel equalization because of their modeling capability for nonlinear dynamic systems. Major problems of gradient-descent learning techniques commonly employed to train RNNs are slow convergence rates and long training sequences required for satisfactory performance. This paper presents decision-feedback equalizers using an RNN trained with Kalman filtering algorithms. The main features of the proposed recurrent neural equalizers, using the extended Kalman filter(EKF) and unscented Kalman filter (UKF), are fast convergence and good performance using relatively short training symbols. Experimental results for vari...
In this paper we introduce an enhanced Decision Feedback Equalizer (DFE), based on the use of a feed...
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...
Abstract This paper applies neural networks to the adaptive channel equalization of a bipolar signal...
Real-time recurrent learning (RTRL), commonly employed for training a fully connected recurrent neur...
This paper presents a neuralnetwork -based equalizer for a digital communication system. In this equ...
ABSTRACT: Recurrent neural networks (RNNs) trained with gradient-based algorithms such as real-time ...
In this paper a novel approach to learning in Recurrent Neural Networks (RNN) is introduced and appl...
É investigado o uso de redes neurais aplicadas à equalização de canais de comunicação, sendo consid...
Decision feedback equalizers (DFE)s are used extensively in practical communication systems. They ar...
When digital signals are transmitted through frequency selective communication channels, one of the ...
Neural networks have been successfully applied to the equalization of digital communication channels...
In wireless communications, transmitted signals suffer from distortion caused by the channel. Equali...
Neural networks add flexibility to the design of equalizers for digital communications. In this work...
In recent years, a growing field of research in “Adaptive Systems” has resulted in a variety of adap...
The human brain has the capability to organize the neurons (experience-adapted connections) to perfo...
In this paper we introduce an enhanced Decision Feedback Equalizer (DFE), based on the use of a feed...
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...
Abstract This paper applies neural networks to the adaptive channel equalization of a bipolar signal...
Real-time recurrent learning (RTRL), commonly employed for training a fully connected recurrent neur...
This paper presents a neuralnetwork -based equalizer for a digital communication system. In this equ...
ABSTRACT: Recurrent neural networks (RNNs) trained with gradient-based algorithms such as real-time ...
In this paper a novel approach to learning in Recurrent Neural Networks (RNN) is introduced and appl...
É investigado o uso de redes neurais aplicadas à equalização de canais de comunicação, sendo consid...
Decision feedback equalizers (DFE)s are used extensively in practical communication systems. They ar...
When digital signals are transmitted through frequency selective communication channels, one of the ...
Neural networks have been successfully applied to the equalization of digital communication channels...
In wireless communications, transmitted signals suffer from distortion caused by the channel. Equali...
Neural networks add flexibility to the design of equalizers for digital communications. In this work...
In recent years, a growing field of research in “Adaptive Systems” has resulted in a variety of adap...
The human brain has the capability to organize the neurons (experience-adapted connections) to perfo...
In this paper we introduce an enhanced Decision Feedback Equalizer (DFE), based on the use of a feed...
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...
Abstract This paper applies neural networks to the adaptive channel equalization of a bipolar signal...