时间序列非线性自适应滤波的神经网络结构

Nils Hoffmann, J. Larsen
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引用次数: 4

摘要

提出了一种结合模块化原理的神经网络自适应滤波结构。它有利于稀疏参数化,即在监督训练过程中需要估计的参数更少。主要思想是使用预处理器来确定输入空间的维度,并且可以独立于随后的非线性设计。对预处理器提出了两种建议:导数预处理器和主成分分析。给出了一种新的固定Volterra非线性的实现方法。它通过缩放和限制输入信号强制多项式的有界性。非线性由切比切夫多项式构成。作者采用二阶算法更新自适应非线性的权值。仿真结果表明,两种预处理方法有互补的趋势,而ANL和FNL的性能没有明显差异
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural architecture for nonlinear adaptive filtering of time series
A neural architecture for adaptive filtering which incorporates a modularization principle is proposed. It facilitates a sparse parameterization, i.e. fewer parameters have to be estimated in a supervised training procedure. The main idea is to use a preprocessor which determines the dimension of the input space and can be designed independently of the subsequent nonlinearity. Two suggestions for the preprocessor are presented: the derivative preprocessor and the principal component analysis. A novel implementation of fixed Volterra nonlinearities is given. It forces the boundedness of the polynominals by scaling and limiting the inputs signals. The nonlinearity is constructed from Chebychev polynominals. The authors apply a second-order algorithm for updating the weights for adaptive nonlinearities. Finally the simulations indicate that the two kinds of preprocessing tend to complement each other while there is no obvious difference between the performance of the ANL and FNL.<>
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