Lumos5G Dataset
收藏IEEE2021-02-11 更新2026-04-17 收录
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https://ieee-dataport.org/open-access/lumos5g-dataset
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资源简介:
The emerging 5G services offer numerous new opportunities for networked applications. In this study, we seek to answer two key questions: i) is the throughput of mmWave 5G predictable, and ii) can we build good machine learning models for 5G throughput prediction? To this end, we conduct a measurement study of commercial mmWave 5G services in a major U.S. city, focusing on the throughput as perceived by applications running on user equipment (UE). Through extensive experiments and statistical analysis, we identify key UE-side factors that affect 5G performance and quantify to what extent the 5G throughput can be predicted. We then propose Lumos5G - a composable machine learning (ML) framework that judiciously considers features and their combinations, and apply state-of-the-art ML techniques for making context-aware 5G throughput predictions. We demonstrate that our framework is able to achieve 1.37x to 4.84x reduction in prediction error compared to existing models. Our work can be viewed as a feasibility study for building what we envisage as a dynamic 5G throughput map (akin to Google traffic map). We believe this approach provides opportunities and challenges in building future 5G-aware apps.
提供机构:
Li, Tao; Mehta, Rishabh; Verma, Saurabh; Hu, Xinyue; Fezeu, Rostand A.K.; Narayanan, Arvind; Dayalan, Udhaya Kumar; Qian, Feng; Ji, Peiqi; Ramadan, Eman; Zhang, Zhi-Li; Liu, Qingxu
创建时间:
2021-02-11



