5G多层网络切换参数优化的动态模糊q学习

Jin Wu, Jing Liu, Zhangpeng Huang, Shuqiang Zheng
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引用次数: 32

摘要

移动性鲁棒性优化可以显著提高小基站密集不协调部署场景下的服务质量,这是未来第5代(5G)无线接入技术的目标。目前的解决方案大多依赖于先验知识和基于规则的算法,这些解决方案确实取得了很好的性能。然而,仍有很大的改进空间,特别是在没有足够的先验知识的情况下。在本文中,我们提出了一种动态模糊q -学习算法用于小蜂窝网络的移动性管理。该算法最初没有模糊规则,通过系统学习逐渐生成新的模糊规则,得到所需参数,从而在切换引起的信令成本和掉话率对用户体验的影响之间达到平衡。在LTE系统级模拟器中对性能进行了评估,并考虑了UE速度的影响。仿真结果表明,该算法在最小化切换次数的同时保持了最小的掉话率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic fuzzy Q-learning for handover parameters optimization in 5G multi-tier networks
The mobility robustness optimization can significantly enhance the quality of service in scenarios characterized by dense uncoordinated deployment of small cells, as targeted by future 5th generation (5G) radio access technology. Current solutions mostly rely on priori knowledge and rule based algorithms, these solutions do have achieved good performance. There is still, however, a lot of room for further improvements, especially when enough priori knowledge is not available. In this paper, we propose a dynamic fuzzy Q-Learning algorithm for mobility management in small-cell networks. There are no fuzzy rules initially, this algorithm gradually generates new fuzzy rules and gets the required parameters through system learning, so as to reach a balance between the signaling cost caused by handover and the user experience affected by call dropping ratio. Performances are evaluated in a LTE system level simulator and impact of UE speed is considered. Simulation results show the efficiency of the proposed algorithm in minimizing the number of handovers while maintaining call dropping ratio at a minimal level.
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