Early stopping criteria for adaptive training of dynamic nonlinear behavioural models

M. Loughman, R. Farrell, J. Dooley
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引用次数: 0

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.
动态非线性行为模型自适应训练的早期停止准则
随着蜂窝基站的物理组成演变成具有多个并行传输路径的系统,对这些复杂系统建模的工作量大大增加。在每个信号路径上造成信号失真的一个特别任务是功率放大器。在功率放大器(PA)建模中,递归最小二乘(RLS)过去一直用于训练具有记忆项的Volterra模型。Volterra模型被广泛用于pa的建模。在本文中,我们比较了在不同的模型记忆长度、非线性模型阶数和信号采样率下,PA模型在训练过程中的稳定性性能。这种检查提供了一种技术,以避免不稳定发生在动态非线性行为模型的自适应训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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