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Dynamic resource allocation using reinforcement learning for LTE-U and WiFi in the unlicensed spectrum

机译:在非授权频谱中使用强化学习对LTE-U和WiFi进行动态资源分配

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The growing demand for spectrum resources and the limited licensed spectrum have led to widespread concern about the coexistence of LTE and WiFi in the unlicensed spectrum. Since LTE and WiFi are two different systems, many solutions have been proposed to solve their coexistence problems, including the coexistence scheme based on blank subframe allocation. This paper presents a scheme that uses Q-learning algorithm to dynamically allocate blank subframes so that both LTE-U and WiFi system can successfully coexist. To support the proposed scheme, we introduce a new LTE-U frame structure, which can not only allocate blank subframes but also reduce the LTE delay. Simulation results show that the proposed approach can effectively improve the overall system performance in terms of the utilization of spectrum.
机译:对频谱资源的不断增长的需求和有限的许可频谱已引起人们对LTE和WiFi在非许可频谱中共存的广泛关注。由于LTE和WiFi是两个不同的系统,因此提出了许多解决方案来解决它们的共存问题,包括基于空白子帧分配的共存方案。本文提出了一种使用Q学习算法动态分配空白子帧的方案,以使LTE-U和WiFi系统能够成功地共存。为了支持所提出的方案,我们引入了一种新的LTE-U帧结构,该结构不仅可以分配空白子帧,而且可以减少LTE延迟。仿真结果表明,该方法可以有效地利用频谱,提高整体系统性能。

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