Performance Analysis of Orthogonal Gradient Sign Algorithm Using Spline-based Hammerstein Model for Smart Application

S. Sitjongsataporn, S. Prongnuch
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Abstract

This paper presents a spline-based Hammerstein model for adaptive filtering based on a sign algorithm with the normalised orthogonal gradient algorithm. Spline-based Hammerstein architecture consists of an interpolation spline-based adaptive lookup table in the part of nonlinear filter and an adaptive finite impulse response filter used in the part of linear filter. Hammerstein spline adaptive filter (HSAF) is a nonlinear filter for the nonlinear systems among the advantages in the low computational cost and high performance. An adaptive lookup table and spline control points are determined and derived with the orthogonal gradient-based mechanism. Performance analysis in terms of convergence properties and mean square analysis based on the mean square error (MSE) constraint are proven by using the Taylor series expansion of the estimation error in the form of the excess MSE. Experimental results indicate the robust performance of the proposed algorithm can provide the better performance than the other models based on the conventional least mean square Hammerstein spline adaptive filtering algorithm.
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基于样条Hammerstein模型的正交梯度符号算法的性能分析
提出了一种基于符号算法和归一化正交梯度算法的样条自适应滤波Hammerstein模型。基于样条的Hammerstein结构由非线性滤波器部分基于插值样条的自适应查找表和线性滤波器部分使用的自适应有限脉冲响应滤波器组成。Hammerstein样条自适应滤波器(HSAF)是一种针对非线性系统的非线性滤波器,具有计算成本低、性能高等优点。利用基于正交梯度的机制确定和推导了自适应查找表和样条控制点。利用估计误差的泰勒级数展开式(以过量均方误差的形式)证明了基于均方误差约束的收敛性性能分析和均方分析。实验结果表明,该算法的鲁棒性优于传统最小均方Hammerstein样条自适应滤波算法。
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