机器学习增强非授权LTE信道选择

M. Tonnemacher, Chance Tarver, Joseph Cavallar, J. Camp
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引用次数: 5

摘要

我们提出了一种非授权LTE信道选择机制,该机制不仅考虑了Wi-Fi接入点之间和来自Wi-Fi接入点的干扰,而且还考虑了非授权频段中的其他LTE运营商。通过收集信道利用率统计数据并定期与其他未授权的LTE eNB共享此信息,每个eNB都可以在对完整拓扑了解有限的情况下改进其信道选择。在将我们的算法与现有解决方案进行比较时,我们发现相邻enb的Wi-Fi感知占用之间的相似性极大地影响了信道选择算法的性能。为了在不同的场景中获得更好的性能,我们扩展了我们的统计通道选择公式,包括强化学习,从而平衡共享的上下文信息和历史性能。我们使用我们的信道选择算法模拟了在未授权频带中的操作,并展示了如何联合使用Wi-Fi负载和小区间干扰估计来选择网络中所有小小区的传输信道。与贪婪信道选择相比,我们的方法可以提高整个频段的用户感知吞吐量和频谱效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Enhanced Channel Selection for Unlicensed LTE
We propose a mechanism for unlicensed LTE channel selection that not only takes into account interference to and from Wi-Fi access points but also considers other LTE operators in the unlicensed band. By collecting channel utilization statistics and sharing this information periodically with other unlicensed LTE eNBs, each eNB can improve their channel selection given their limited knowledge of the full topology. While comparing our algorithm to existing solutions, we find that the similarity between sensed Wi-Fi occupation at neighboring eNBs greatly impacts the performance of channel selection algorithms. To achieve better performance across diverse scenarios, we expand on our statistical channel selection formulation to include reinforcement learning, thereby balancing the shared contextual information with historical performance. We simulate operation in the unlicensed band using our channel selection algorithm and show how Wi-Fi load and inter-cell interference estimation can jointly be used to select transmission channels for all small cells in the network. Our approaches lead to an increase in user-perceived throughput and spectral efficiency across the entire band when compared to the greedy channel selection.
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