改进的分散q -学习算法在lte -飞蜂窝中的抗干扰

M. Simsek, A. Czylwik, Ana Galindo-Serrano, L. Giupponi
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引用次数: 50

摘要

作为一种克服室内覆盖问题和提高当前大型蜂窝系统效率的战略,飞蜂窝正引起人们对移动通信的极大兴趣。然而,这种网络的不利因素是宏基站和飞基站之间以及相邻飞基站之间的共信道干扰,这会大大降低网络的总容量。在本文中,我们提出了一种基于改进的分散q学习算法的强化学习(RL)框架,用于共享宏蜂窝频谱的飞蜂窝。由于q学习的主要缺点是收敛速度慢,我们提出了一个智能初始化过程。本文提出的算法将与基本的Q-learning算法和文献中的一些功率控制(PC)算法进行比较,例如固定功率分配、基于接收功率的PC。目标是展示性能改进和增强的收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved decentralized Q-learning algorithm for interference reduction in LTE-femtocells
Femtocells are receiving considerable interest in mobile communications as a strategy to overcome the indoor coverage problems as well as to improve the efficiency of current macrocell systems. Nevertheless, the detrimental factor in such networks is co-channel interference between macrocells and femtocells, as well as among neighboring femtocells which can dramatically decrease the overall capacity of the network. In this paper we propose a Reinforcement Learning (RL) framework, based on an improved decentralized Q-learning algorithm for femtocells sharing the macrocell spectrum. Since the major drawback of Q-learning is its slow convergence, we propose a smart initialization procedure. The proposed algorithm will be compared with a basic Q-learning algorithm and some power control (PC) algorithms from literature, e.g., fixed power allocation, received power based PC. The goal is to show the performance improvement and enhanced convergence.
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