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Self-optimization of LTE Mobility State Estimation thresholds

机译:LTE移动状态估计阈值的自我优化

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This paper describes an algorithm for self-optimizing Mobility State Estimation (MSE) thresholds in heterogeneous Long Term Evolution (LTE) networks using Minimization of Drive Testing (MDT) measurement traces. The algorithm is using the MDT measurements to construct statistics of reselection and handover distributions for different mobility categories to learn how network topology and UE velocities are correlating in local geographical neighborhood. The distributions are used to self-optimize LTE Release 8 MSE thresholds by employing a standard score linear classifier. This allows simple, backward compatible and cost-efficient optimization of MSE thresholds. Moreover, such self-optimization results in a high classification accuracy of UE mobility states and decreases operator's manual parameter configuration complexity. Performance evaluation of the proposed algorithm was done by conducting extensive system simulations. The performance results indicate that in the studied sparse and dense heterogeneous networks the average classification accuracy was 72.2% and 78%, respectively.
机译:本文介绍了一种使用最小化路测(MDT)测量迹线,在异构长期演进(LTE)网络中自优化移动状态估计(MSE)阈值的算法。该算法使用MDT测量来构建不同移动性类别的重选和切换分布统计数据,以了解网络拓扑和UE速度在本地地理邻域中如何相互关联。通过采用标准评分线性分类器,这些分布可用于自优化LTE版本8 MSE阈值。这允许对MSE阈值进行简单,向后兼容和经济高效的优化。而且,这种自我优化导致UE移动性状态的高分类精度并且降低了操作员的手动参数配置复杂度。通过进行广泛的系统仿真,对提出的算法进行了性能评估。性能结果表明,在所研究的稀疏和密集异构网络中,平均分类准确率分别为72.2%和78%。

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