Multivariate LTE Performance Assessment through an Expectation-Maximization Algorithm Approach

N. Pasquino, G. Ventre, S. Zinno, Federica Ignarro, S. Petrocelli
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引用次数: 2

Abstract

Quality characterization of a Long Term Evolution (LTE) cellular network with Multiple Input Multiple Output (MIMO) configuration is carried out through an experimental multivariate analysis of the main parameters of signal quality, which is crucial to optimize network performance. We adopted a technique based on the Expectation-Maximization (EM) algorithm that aims at statistically model radio-layer parameters with a blind machine learning technique that clusters data collected by a mobile operator. Data are retrieved with a smartphone-based methodology during a drive-test campaign.Clustering of the performance indicators has also been done spatially, by locating areas with different levels of signal quality on a map, to highlight those spots were improvements are required to overcome porr signal quality mostly due to the presence of co-channel or adjacent channel interference.
基于期望最大化算法的多变量LTE性能评估
通过对信号质量主要参数的实验多元分析,对具有多输入多输出(MIMO)配置的长期演进(LTE)蜂窝网络进行了质量表征,这对优化网络性能至关重要。我们采用了一种基于期望最大化(EM)算法的技术,该技术旨在利用盲机器学习技术对移动运营商收集的数据进行聚类,对无线电层参数进行统计建模。在试车活动期间,使用基于智能手机的方法检索数据。性能指标的聚类也在空间上完成,通过在地图上定位具有不同信号质量水平的区域,以突出那些需要改进以克服主要由于同信道或相邻信道干扰而导致的不良信号质量的点。
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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