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An Almost Blank Subframe Allocation Algorithm for 5G New Radio in Unlicensed Bands

机译:无执照频段中用于5G新无线电的几乎空白的子帧分配算法

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The 5G new radio communications in unlicensed bands (5G NR-U) can meet the growing data traffic requirements and make better use of the unlicensed bands. However, the harmonic coexistence of NR-U and WiFi in unlicensed bands is a challenging problem as NR-U and WiFi employ different access technologies. To address this problem, this paper proposes an almost blank subframe (ABS) optimization mechanism by jointly considering the data transmission of WiFi users and the positions of ABS, which can achieve fair coexistence of NR-U and WiFi and effectively improve the system throughput. Specifically, we first investigate the optimal number of ABS according the data transmission of WiFi users. Then, we use the Q-learning algorithm to learn the data transmission rules of WiFi users to solve the problem of matching data transmission positions of WiFi users with ABS positions. Simulation results show that the algorithm can effectively improve the total throughput compared with the traditional ABS allocation algorithm.
机译:非许可频段(5G NR-U)中的5G新无线电通信可以满足不断增长的数据流量需求,并更好地利用非许可频段。但是,由于NR-U和WiFi采用不同的接入技术,因此在未许可频段中NR-U和WiFi的谐波共存是一个具有挑战性的问题。针对这一问题,本文结合WiFi用户的数据传输和ABS的位置,提出了一种近乎空白的子帧(ABS)优化机制,可以实现NR-U和WiFi的公平共存,有效提高系统吞吐量。具体来说,我们首先根据WiFi用户的数据传输来研究ABS的最佳数量。然后,通过Q学习算法学习WiFi用户的数据传输规则,解决了WiFi用户的数据传输位置与ABS位置匹配的问题。仿真结果表明,与传统的ABS分配算法相比,该算法可以有效提高总吞吐量。

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