Clustering Validation for mmWave Multipath Components in Outdoor Transmissions

Miead Tehrani Moayyed, B. Antonescu, S. Basagni
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引用次数: 3

Abstract

Radio channel propagation models for the mmWave spectrum are of paramount importance for the design and planning of future 5G wireless communications systems. Since transmitted radio signals are received as clusters of multipath rays, the problem arise about how to identify them, which is functional to extract better spatial and temporal characteristics of the mmWave channel. This paper deals with the validation of the results produced by the clustering process. Specifically, we estimate the effectiveness of the k-means clustering algorithm in predicting the number of clusters by using cluster validity indices (CVIs) and score fusion techniques. We consider directive transmissions in outdoor scenarios and we show the importance of the correct estimation of the number of clusters for the mmWave radio channel simulated with a software ray-tracer tool. Our investigation shows that clustering is no trivial task because the optimal number of clusters is not always given by one or by a combination of more CVIs. In fact, a few of the CVIs used in our study were not capable to determine correct partitioning. However, using score fusion methods and additional techniques we find two solutions for the number of clusters based on power and time of arrival of the multipath rays or based on their angle of arrival.
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户外传输毫米波多径组件的聚类验证
毫米波频谱的无线信道传播模型对于未来5G无线通信系统的设计和规划至关重要。由于发射的无线电信号是作为多径射线簇接收的,因此如何识别它们是一个问题,该问题可以更好地提取毫米波信道的时空特征。本文讨论了聚类过程产生的结果的验证。具体来说,我们通过使用聚类有效性指数(CVIs)和分数融合技术来估计k-means聚类算法在预测聚类数量方面的有效性。我们考虑了室外场景下的指令传输,并展示了正确估计毫米波无线电信道簇数的重要性,这些簇数是用软件射线追踪工具模拟的。我们的调查表明,聚类不是一项简单的任务,因为最优的聚类数量并不总是由一个或多个CVIs的组合给出。事实上,我们研究中使用的一些CVIs不能确定正确的划分。然而,使用分数融合方法和其他技术,我们找到了基于多径射线的功率和到达时间或基于它们的到达角度的两种簇数解决方案。
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