Accurate channel knowledge is critical in massive multiple-input multiple-output (MIMO), which motivates the use of channel prediction. Machine learning techniques for channel prediction hold much promise, but current schemes are limited in their ability to adapt to changes in the environment because they require large training overheads. To accurately predict wireless channels for new environments with reduced training overhead, we propose a fast adaptive channel prediction technique based on a meta-learning algorithm for massive MIMO communications. We exploit the model-agnostic meta-learning (MAML) algorithm to achieve quick adaptation with a small amount of labeled data. Also, to improve the prediction accuracy, we adopt the denoising process for the training data by using deep image prior (DIP). Numerical results show that the proposed MAML-based channel predictor can improve the prediction accuracy with only a few fine-tuning samples. The DIP-based denoising process gives an additional gain in channel prediction, especially in low signal-to-noise ratio regimes.
翻译:精确的频道知识对于大规模多投入多重产出(MIMO)至关重要,这促使人们使用频道预测。频道预测的机器学习技术很有希望,但目前的计划由于需要大量的培训间接费用,在适应环境变化方面能力有限。为了准确预测无线频道以提供培训间接费用较少的新环境,我们提议基于大规模MIMO通信的元学习算法的快速适应性频道预测技术。我们利用模型-不可知性元学习算法,以少量的标签数据实现快速适应。此外,为了提高预测准确性,我们采用了先前使用深度图像(DIP)对培训数据进行分层处理的程序。数字结果显示,拟议的基于MAML的频道预测器只能用少量微调样本提高预测的准确性。基于DIP的分层分析过程在频道预测方面获得了额外收益,特别是在低信号到噪音比率制度中。