Parallel feedforward equalization-a new nonlinear adaptive algorithm

Jian Zhan, Jin S. Zhang, Fu Li, Z. Fan
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引用次数: 0

Abstract

Adaptive equalization can be used to improve digital data transmission on wireless links with time-varying multipath distortion. It was proved by Zhou, Proakis and Ling (see IEEE Transactions on Communications, vol.38, p.8-24, no.1, 1990) that feedforward schemes are universally capable of approximating any measurable function to any desired degree of accuracy. We propose a new realization of such feedforward scheme to the channel equalization problem, parallel feedforward equalization (PFE). An important feature of the new approach is the decomposition of any equalization into linear and nonlinear components. The new approach chooses F/sub j/(/spl middot/) (j=1, ...) from a family of nonlinear functions to approximate the nonlinear component decomposed from the desired mapping f(/spl middot/). The other new idea proposed in this paper is a measure called nonlinearity distribution which characterizes the nonlinearity in multipath fading channels. The architecture of the new equalization consists of parallel feedforward nonlinear filters, each of them has a specifically tailored nonlinear function F/sub j/(/spl middot/).
并行前馈均衡——一种新的非线性自适应算法
自适应均衡可以改善时变多径失真无线链路上的数字数据传输。它由Zhou, Proakis和Ling证明(见IEEE Transactions on Communications, vol.38, p.8-24, no. 5)。1, 1990),前馈方案普遍能够逼近任何可测量的函数到任何所需的精度程度。针对信道均衡问题,我们提出了一种新的前馈方案——并行前馈均衡(PFE)。新方法的一个重要特征是将任何均衡分解为线性和非线性分量。该方法从一组非线性函数中选取F/sub j/(/spl middot/) (j=1,…)来逼近由期望映射F (/spl middot/)分解的非线性分量。本文提出的另一个新思想是非线性分布的度量,它表征了多径衰落信道的非线性。新均衡的架构由并联前馈非线性滤波器组成,每个滤波器都有一个专门定制的非线性函数F/sub j/(/spl middot/)。
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