论文标题
转移学习和基于元学习的快速下行链接波束形成适应
Transfer Learning and Meta Learning Based Fast Downlink Beamforming Adaptation
论文作者
论文摘要
本文研究了多源多输入单输出下行链路系统中的信噪比加上噪声比率平衡问题的快速自适应波束形成优化。现有的基于深度学习的方法来预测波束形成,这取决于训练和测试渠道遵循相同的分布的假设,而相同的分布可能无法实践。结果,当测试网络环境变化时,受过训练的模型可能导致性能恶化。为了处理此任务不匹配问题,我们提出了基于深层转移学习和元学习的两种离线自适应算法,当测试无线环境变化时,它们能够通过有限的新标记数据来快速适应。此外,我们提出了一种在线算法,以增强在现实的非平稳环境中离线元算法的适应能力。仿真结果表明,所提出的自适应算法的性能要比直接深度学习算法而没有在新环境中进行适应。元学习算法的表现优于深层传输学习算法,并且取得了几乎最佳的性能。此外,与离线元学习算法相比,提出的在线元学习算法在不断变化的环境中显示出卓越的适应性性能。
This paper studies fast adaptive beamforming optimization for the signal-to-interference-plus-noise ratio balancing problem in a multiuser multiple-input single-output downlink system. Existing deep learning based approaches to predict beamforming rely on the assumption that the training and testing channels follow the same distribution which may not hold in practice. As a result, a trained model may lead to performance deterioration when the testing network environment changes. To deal with this task mismatch issue, we propose two offline adaptive algorithms based on deep transfer learning and meta-learning, which are able to achieve fast adaptation with the limited new labelled data when the testing wireless environment changes. Furthermore, we propose an online algorithm to enhance the adaptation capability of the offline meta algorithm in realistic non-stationary environments. Simulation results demonstrate that the proposed adaptive algorithms achieve much better performance than the direct deep learning algorithm without adaptation in new environments. The meta-learning algorithm outperforms the deep transfer learning algorithm and achieves near optimal performance. In addition, compared to the offline meta-learning algorithm, the proposed online meta-learning algorithm shows superior adaption performance in changing environments.