基于SUMO的移动无线网络合成数据集生成

Afonso Oliveira, T. Vazão
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引用次数: 8

摘要

随着移动无线网络的软件化,网络基础设施的自动化控制和管理也随之而来。机器学习解决方案是实现高效网络控制和管理的关键推动者。然而,这些机器学习解决方案需要数据来训练。在一些应用中,就像边缘的资源分配一样,需要大型数据集,包括小区之间的用户设备(UE)移动性和流量活动。出于隐私考虑,这些信息可能很难获得。这项工作提出了一个合成数据集生成器,旨在支持这些领域的研究活动。引入的数据集生成器使用了一个已知的城市交通模拟器,模拟城市交通(SUMO)的痕迹。它将它们与经验无线电信号质量和各种流量模型相匹配,以获得可以验证机器学习解决方案的大型数据集。从引入的生成器中,我们在柏林的城市场景中创建了一个持续时间超过6小时的数据集,包含21个单元提供的40000多个ue。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating Synthetic Datasets for Mobile Wireless Networks with SUMO
With the softwarization of mobile wireless networks comes automated control and management of network infrastructure. Machine learning solutions come as critical enablers to achieve efficient network control and management. However, these machine learning solutions need data to train. In some applications, as is the resource allocation in the edge, large datasets, including User Equipment (UE) mobility between cells and traffic activity, are required. These may be difficult to obtain due to privacy concerns. This work presents a synthetic dataset generator that aims at supporting research activities in these areas. The introduced dataset generator uses traces from a known urban mobility simulator, Simulation of Urban MObility (SUMO). It matches them with empirical radio signal quality and diverse traffic models to obtain large datasets that can validate machine learning solutions. From the introduced generator, we created a dataset in an urban scenario in the city of Berlin with more than 6h of duration, containing more than 40000 UEs served by 21 cells.
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