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Deep Transfer Learning-Based Downlink Channel Prediction for FDD Massive MIMO Systems

机译:基于深度传输学习的FDD大型MIMO系统的下行链路通道预测

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摘要

Artificial intelligence (AI) based downlink channel state information (CSI) prediction for frequency division duplexing (FDD) massive multiple-input multiple-output (MIMO) systems has attracted growing attention recently. However, existing works focus on the downlink CSI prediction for the users under a given environment and is hard to adapt to users in new environment especially when labeled data is limited. To address this issue, we formulate the downlink channel prediction as a deep transfer learning (DTL) problem, and propose the direct-transfer algorithm based on the fully-connected neural network architecture, where the network is trained in the manner of classical deep learning and is then fine-tuned for new environments. To further improve the transfer efficiency, we propose the meta-learning algorithm that trains the network by alternating inner-task and across-task updates and then adapts to a new environment with a small number of labeled data. Simulation results show that the direct-transfer algorithm achieves better performance than the deep learning algorithm, which implies that the transfer learning benefits the downlink channel prediction in new environments. Moreover, the meta-learning algorithm significantly outperforms the direct-transfer algorithm, which validates its effectiveness and superiority.
机译:基于人工智能(AI)的下行链路信道状态信息(CSI)对频分双工(FDD)的预测(FDD)大规模多输入多输出(MIMO)系统最近引起了不断的关注。然而,现有的作品侧重于给定环境下的用户的下行链路CSI预测,并且难以适应新环境中的用户,尤其是当标记数据有限时。为了解决这个问题,我们将下行链路信道预测作为深度传输学习(DTL)问题,并提出了基于完全连接的神经网络架构的直接传输算法,网络培训了经典深度学习的方式培训然后对新环境进行微调。为了进一步提高转移效率,我们提出了通过交替的内部任务和跨任务更新来培训网络的元学习算法,然后将其适应具有少量标记数据的新环境。仿真结果表明,直转移算法比深度学习算法实现了更好的性能,这意味着转移学习使新环境中的下行链路信道预测受益。此外,元学习算法显着优于直移算法,验证其有效性和优越性。

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