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Distributed Inter-cell Interference Coordination for Small Cell Wireless Communications: A Multi-Agent Deep Q-Learning Approach

机译:小蜂窝无线通信的分布式小区间干扰协调:一种多代理深度Q学习方法

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Densely deployed small cell multiple-input multiple-output (MIMO) systems can potentially improve the system capacity. However, their overlapping and neighboring cells lead to an increase in inter-cell interference (ICI) and thus decrease the system capacity. To suppress such ICI, base stations (BSs) can perform the exhaustive search (ES) in order to find the optimal combination of transmit power levels and beamforming vectors from a pre-defined codebook. However, ES requires a large amount of computational complexity that grows exponentially with the number of BSs. To reduce the complexity, a super-vised learning (SL) scheme for neural networks (NNs) that can approximate ES with much less complexity has been proposed. However, the SL scheme for NNs still needs training data found by ES, which makes it difficult to apply the scheme into systems including many BSs. To cope with such a problem, this paper introduces independent deep Q-learning (IDQL) that can be classified into multi-agent reinforcement learning. The proposed IDQL-based scheme can control both the transmit power and beamforming in a distributed manner. Simulation results show that the proposed IDQL-based scheme can achieve the system capacity close to that of the SL scheme for NNs, even though the proposed scheme does not require any training data.
机译:密集部署的小型小区多输入多输出(MIMO)系统可以潜在地提高系统容量。但是,它们重叠和相邻的小区会导致小区间干扰(ICI)增加,从而降低系统容量。为了抑制这样的ICI,基站(BS)可以执行穷举搜索(ES),以便从预定义的码本中找到发射功率电平和波束成形矢量的最佳组合。但是,ES需要大量的计算复杂性,并且随着BS数量的增加呈指数增长。为了降低复杂度,已提出了一种神经网络的监督学习(SL)方案,该方案可以用更少的复杂度来近似ES。然而,用于NN的SL方案仍然需要ES找到的训练数据,这使得难以将该方案应用到包括许多BS的系统中。为了解决这个问题,本文介绍了独立的深度Q学习(IDQL),可以将其分类为多主体强化学习。所提出的基于IDQL的方案可以以分布式方式控制发射功率和波束成形。仿真结果表明,即使所提出的方案不需要任何训练数据,所提出的基于IDQL的方案也可以实现接近于SL方案的系统容量。

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