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首页> 外文期刊>IEEE transactions on mobile computing >Learning-Based Tracking Area List Management in 4G and 5G Networks
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Learning-Based Tracking Area List Management in 4G and 5G Networks

机译:基于学习的跟踪区域列表管理4G和5G网络

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Mobility management in 5G networks is a very challenging issue. It requires novel ideas and improved management so that signaling is kept minimized and far from congesting the network. Mobile networks have become massive generators of data and in the forthcoming years this data is expected to increase drastically. The use of intelligence and analytics based on big data is a good ally for operators to enhance operational efficiency and provide individualized services. This work proposes to exploit User Equipment (UE) patterns and hidden relationships from geo-spatial time series to minimize signaling due to idle mode mobility. We propose a holistic methodology to generate optimized Tracking Area Lists (TALs) in a per UE manner, considering its learned individual behavior. The k-means algorithm is proposed to find the allocation of cells into tracking areas. This is used as a basis for the TALs optimization itself, which follows a combined multi-objective and single-objective approach depending on the UE behavior. The last stage identifies UE profiles and performs the allocation of the TAL by using a neural network. The goodness of each technique has been evaluated individually and jointly under very realistic conditions and different situations. Results demonstrate important signaling reductions and good sensitivity to changing conditions.
机译:5G网络中的移动性管理是一个非常具有挑战性的问题。它需要新颖的想法和改进的管理,使得信令保持最小化,远远不受网络。移动网络已成为数据的大量发电机,在即将到来的几年中,此数据预计将大幅增加。基于大数据的智能和分析的使用是一个良好的运营商盟友,以提高运营效率并提供个性化服务。这项工作建议利用来自地理空间时间序列的用户设备(UE)模式和隐藏的关系,以最小化由于空闲模式移动性导致的信令。我们提出了一种整体方法,以便以每个UE方式生成优化的跟踪区域列表(TALS),考虑其学习的单独行为。提出了K-Means算法,以发现将单元分配到跟踪区域。这被用作TLA优化本身的基础,这遵循了根据UE行为的组合的多目标和单目标方法。最后阶段标识UE配置文件并通过使用神经网络来执行Tal的分配。在非常现实的条件和不同的情况下,每种技术的良好都在单独和共同评估。结果表明,对不断变化的条件的重要信号减少和良好的敏感性。

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