A Study of Clustering Algorithms for Time-Varying Multipath Components in Wireless Channels

Guiqi Sun, Chen Huang, Zihang Cheng, R. He, B. Ai, A. Molisch
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引用次数: 1

Abstract

Extensive channel measurements have shown that multipath components (MPCs) generally exist as clusters, and cluster-based channel models are therefore widely used for system design and assessment. Since the dynamic behavior, i.e., the time evolution, of the channels plays an important role for many applications, an accurate algorithm for the clustering of time-varying MPCs is required; a variety of algorithms have been proposed, yet little attention has been given to a fair comparison of their relative advantages and drawbacks. In this paper, we review and investigate the typical clustering methods for MPCs in wireless channels. Three popular classes of algorithms, namely distance-based (K-Power-Means), density-based (K-power-density), and evolution-based clustering methods, are analyzed and compared based on both synthetic and measured channel data. The F-measure is used to quantify and evaluate the clustering performance of the three algorithms, and also investigate their performance when only static snapshots of the channel are available. From the comparison, the evolution-based clustering method shows great potential to address the dynamic clustering problem for wireless time-varying channels.
无线信道时变多径分量聚类算法研究
广泛的通道测量表明,多路径组件(mpc)通常以集群的形式存在,因此基于集群的通道模型被广泛用于系统设计和评估。由于信道的动态行为(即时间演化)在许多应用中起着重要作用,因此需要一种精确的时变mpc聚类算法;各种各样的算法已经被提出,但很少有人注意到他们的相对优点和缺点的公平比较。本文综述和研究了无线信道中MPCs的典型聚类方法。本文对基于距离的聚类算法(K-Power-Means)、基于密度的聚类算法(K-power-density)和基于进化的聚类算法进行了分析和比较。f度量用于量化和评估这三种算法的聚类性能,并研究它们在只有通道静态快照可用时的性能。通过比较,基于进化的聚类方法在解决无线时变信道的动态聚类问题上显示出很大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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