基于分散q学习的上行功率控制

S. Dzulkifly, L. Giupponi, F. Said, M. Dohler
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引用次数: 4

摘要

分数功率控制(FPC)是长期演进(LTE)中开环功率控制(OLPC)的简化版本,它依赖于来自基站(BS)的下行路径损耗信息。这允许用户设备(UE)决定使用哪个电源进行上行传输。然而,在拥挤的网络中,上行和下行传输的不对称行为可能导致不公平的发射功率估计。这促使我们研究实现上行路径损耗和q-学习算法,使UE能够自行决定合适的发射功率。在本研究中,我们将FPC的概念应用到q-learning中,使UE能够根据上行路径损耗找到合适的发射功率。本研究利用3GPP上行路径损耗模型。我们比较了我们提出的方法和FPC的输出。从仿真中,我们发现DQL在信噪比(SINR)方面比分数功率控制表现更好,平均增加因子为3.5。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decentralized Q-learning for uplink power control
Fractional power control (FPC) is the simplified version of open loop power control (OLPC) in long term evolution (LTE) that relies on downlink path loss information from base station (BS). This allows user equipment (UE) to decide which power to use for uplink transmission. However, asymmetric behavior of uplink and downlink transmission in crowded network might cause unfair transmit power estimation. This motivates our investigation of implementing uplink path loss and q-learning algorithm to enable UE to decide appropriate transmit power on its own. In this study we apply the concept of FPC into q-learning, enabling UE to find suitable transmit power with respect to uplink path loss. 3GPP uplink path loss model is exploited in our study. We compare outputs between our proposed method and FPC. . From simulation, we find out that DQL performs better as compared to fractional power control in terms of signal-to-interference-noise-ratio (SINR) with average increase factor of 3.5.
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