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Early stopping criteria for adaptive training of dynamic nonlinear behavioural models

Authors :
Loughman, Meabh
Farrell, Ronan
Dooley, John
Loughman, Meabh
Farrell, Ronan
Dooley, John
Publication Year :
2019

Abstract

As the physical makeup of cellular basestations evolve into systems with multiple parallel transmission paths the effort involved in modelling these complex systems increases considerably. One task in particular which contributes to signal distortion on each signal path, is the power amplifier. In power amplifier (PA) modelling, Recursive Least Squares (RLS) has been used in the past to train Volterra models with memory terms. The Volterra model is widely used for modelling of PAs. In this paper we present a comparison of the stability performance for a PA model during training for various model memory lengths, model orders of non linearity and signal sample rates. This examination provides a technique to avoid instability occurring during the adaptive training of dynamic nonlinear behavioural models.

Details

Database :
OAIster
Notes :
text, Loughman, Meabh and Farrell, Ronan and Dooley, John (2019) Early stopping criteria for adaptive training of dynamic nonlinear behavioural models. In: 2019 30th Irish Signals and Systems Conference (ISSC). IEEE, pp. 1-5. ISBN 9781728128009, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1360237642
Document Type :
Electronic Resource