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Optimization of Resource Allocation in Multi-Cell OFDM Systems: A Distributed Reinforcement Learning Approach

机译:多小区OFDM系统中资源分配的优化:一种分布式强化学习方法

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In this paper, the problem of joint subcarrier and power allocation is studied for multi-cell orthogonal frequency-division multiplexing (OFDM) systems. This joint subcarrier and power resource allocation problem is formulated as an optimization problem whose goal is to maximize the system spectral efficiency. To solve the proposed problem, the original optimization problem is first decomposed into two subproblems: subcarrier allocation and power allocation. By solving these two subproblems, an initial subcarrier and power allocation scheme is accordingly obtained. An multi-agent reinforcement learning (MARL) algorithm is proposed to further increase the spectral efficiency. In particular, using the proposed MARL algorithm, each BS can adapt its allocation scheme according to the wireless environmental states. Numerical results show that the proposed MARL method can achieve up to 53.6% gain in terms of spectral efficiency compared to the conventional scheme. The proposed MARL scheme also converges more rapidly than the conventional single-agent Q-learning approach.
机译:本文研究了多小区正交频分复用(OFDM)系统中子载波和功率分配的联合问题。这个联合的副载波和功率资源分配问题被表述为一个优化问题,其目标是使系统频谱效率最大化。为了解决所提出的问题,首先将原始的优化问题分解为两个子问题:子载波分配和功率分配。通过解决这两个子问题,相应地获得了初始子载波和功率分配方案。为了进一步提高频谱效率,提出了一种多智能体强化学习算法。特别地,使用所提出的MARL算法,每个BS可以根据无线环境状态来适配其分配方案。数值结果表明,与传统方案相比,所提出的MARL方法在频谱效率方面可以实现高达53.6%的增益。与传统的单代理Q学习方法相比,拟议的MARL方案的收敛速度也更快。

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