基于GPS地理定位的5G网络用户移动性数据集

Siham Bouchelaghem, Hakim Boudjelaba, Mawloud Omar, M. Amad
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引用次数: 2

摘要

地理定位技术是5G最令人兴奋的进步领域,它利用大量准确的位置数据来源,为用户提供有效的位置定位服务和应用。随着5G网络背景下对用户移动性预测的研究稳步增长,对可用移动性相关数据的需求对于支持新的个人移动性模式的开发和评估至关重要。提出了一种基于用户GPS轨迹数据的5G网络移动数据集生成方法。首先,我们建议聚合用户的GPS轨迹,并通过表示用户经过的一组蜂窝基站的移动图来建模用户的位置历史。其次,我们实现了提出的建模方法来构建自定义移动数据集,并提供了我们方法的详细描述。生成的数据集依赖于来自真实世界Geolife数据集的移动轨迹,并包含128个用户的移动图记录。最后,我们讨论了选定的用例,我们认为我们的数据集将是有价值的。
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User Mobility Dataset for 5G Networks Based on GPS Geolocation
Geolocation technology is the most exciting area of advancement in 5G, leveraging massive sources of accurate location data to provide users with effective location-positioning services and applications. As research on user mobility prediction is steadily growing in the context of 5G networks, the need for available mobility-related data is of utmost importance to support the development and evaluation of new individual mobility patterns. This paper presents a novel mobility dataset generation method for 5G networks based on users' GPS trajectory data. First, we propose aggregating the user's GPS trajectories and modeling his location history by a mobility graph representing the set of cell base stations he passed through. Second, we implement the proposed modeling approach to build a custom mobility dataset and provide a detailed description of our methodology. The generated dataset relies on mobility traces from the real-world Geolife dataset and contains the mobility graph records of 128 users. Finally, we discuss selected use cases for which we believe our dataset would be valuable.
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