Adaptive filtering and prediction based on Hopfield neural networks

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Resumen

Adaptive filters have been successfully used in the solutions of several practical problems such as echo and noise cancelers, line enhancers, speech coding, equalizers, etc. Due to that, intensive research have been carried out to develop more efficient adaptive filter structures and adaptation algorithms, almost all of them implemented in a digital way. This is because with the advance of digital technology it is possible to implement more sophisticated and efficient adaptive filter algorithms. However the adaptive digital filters still present several limitations when required to handle frequencies higher than those in the audio range. Recently the interest on adaptive analog filters has grow because they have the ability to handle much higher frequencies, and their size and power requirements are potentially much smaller than their digital counterparts. This paper propose an analog adaptive structure for filtering and prediction whose coefficients are estimated in a continuous time way by using an artificial Hopfield neural network. Simulation results are given to show the desirable features of the proposed structure.

Idioma originalInglés
Título de la publicación alojada1997 IEEE International Conference on Neural Networks, ICNN 1997
Páginas680-684
Número de páginas5
DOI
EstadoPublicada - 1997
Evento1997 IEEE International Conference on Neural Networks, ICNN 1997 - Houston, TX, Estados Unidos
Duración: 9 jun. 199712 jun. 1997

Serie de la publicación

NombreIEEE International Conference on Neural Networks - Conference Proceedings
Volumen2
ISSN (versión impresa)1098-7576

Conferencia

Conferencia1997 IEEE International Conference on Neural Networks, ICNN 1997
País/TerritorioEstados Unidos
CiudadHouston, TX
Período9/06/9712/06/97

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