GSM系统中RBF网络均衡中的中心定位

Arto Kantsila, M. Lehtokangas, J. Saarinen
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引用次数: 0

摘要

本文研究了GSM(全球移动通信系统)环境下径向基函数(RBF)网络均衡中的中心定位方法。在这里,均衡被认为是一个分类问题,其思想是使用RBF网络均衡器将接收到的复值信号映射为期望的二值。研究了两种RBF中心定位技术。第一个应用最近邻型聚类过程,第二个使用估计的通道系数来计算可能的中心位置。从误码率和计算效率两个方面对这些方法进行了研究。将每个接收到的训练序列向量作为中心,并采用Viterbi均衡器,对已有的RBF网络进行了性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On center locating in RBF network equalization in the GSM system
In this paper we have studied methods for center locating in radial basis function (RBF) network equalization in the GSM (Global System for Mobile Communications) environment. Here, equalization is considered as a classification problem, where the idea is to map the received complex-valued signal into desired binary values using RBF network equalizer. Two techniques for the RBF center locating have been studied. The first one applies a nearest-neighbor type clustering procedure and the second one uses estimated channel coefficients for computing the possible center locations. These methods are studied in terms of bit error rates and computational efficiency. Performance comparisons are made to a previously studied RBF network, which considers each received training sequence vector as a center and also to a Viterbi equalizer.
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