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首页> 外文期刊>IEEE signal processing letters >Nonlinear FIR adaptive filters with a gradient adaptive amplitude in the nonlinearity
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Nonlinear FIR adaptive filters with a gradient adaptive amplitude in the nonlinearity

机译:非线性中具有梯度自适应幅度的非线性FIR自适应滤波器

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摘要

A nonlinear gradient descent (NGD) learning algorithm with an adaptive amplitude of the nonlinearity is derived for the class of nonlinear finite impulse response (FIR) adaptive filters (dynamical perceptron). This is based on the adaptive amplitude backpropagation (AABP) algorithm for large-scale neural networks. The amplitude of the nonlinear activation function is made gradient adaptive to give the adaptive amplitude nonlinear gradient descent (AANGD) algorithm, making the AANGD suitable for processing nonlinear and nonstationary input signals with a large dynamical range. Experimental results show the AANGD algorithm outperforming the standard NGD algorithm on both colored and nonlinear input with large dynamics. Despite its simplicity, the considered algorithm proves suitable for adaptive filtering of nonlinear and nonstationary signals.
机译:针对一类非线性有限冲激响应(FIR)自适应滤波器(动态感知器),推导了一种具有非线性自适应幅度的非线性梯度下降(NGD)学习算法。这是基于用于大型神经网络的自适应幅度反向传播(AABP)算法。使非线性激活函数的振幅成为梯度自适应,以提供自适应振幅非线性梯度下降(AANGD)算法,从而使AANGD适合处理动态范围较大的非线性和非平稳输入信号。实验结果表明,在大动态的彩色和非线性输入上,AANGD算法均优于标准NGD算法。尽管它很简单,但是所考虑的算法证明适合于非线性和非平稳信号的自适应滤波。

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