Reliability is of paramount importance for the physical layer of wireless systems due to its decisive impact on end-to-end performance. However, the uncertainty of prevailing deep learning (DL)-based physical layer algorithms is hard to quantify due to the black-box nature of neural networks. This limitation is a major obstacle that hinders their practical deployment. In this paper, we attempt to quantify the uncertainty of an important category of DL-based channel estimators. An efficient statistical method is proposed to make blind predictions for the mean squared error of the DL-estimated channel solely based on received pilots, without knowledge of the ground-truth channel, the prior distribution of the channel, or the noise statistics. The complexity of the blind performance prediction is low and scales only linearly with the number of antennas. Simulation results for ultra-massive multiple-input multiple-output (UM-MIMO) channel estimation with a mixture of far-field and near-field paths are provided to verify the accuracy and efficiency of the proposed method.
翻译:由于无线系统对端至端性能的决定性影响,对无线系统物理层的可靠性至关重要,然而,由于神经网络的黑盒性质,以深层为主的物理层算法的不确定性难以量化。这一限制是阻碍其实际部署的一个主要障碍。在本文件中,我们试图量化基于DL的频道测量器的一个重要类别的不确定性。提议采用有效的统计方法,仅根据已接收的飞行员,对DL估计的频道的平均正方形错误作出盲点预测,而没有了解地面真相频道、频道的先前分布或噪音统计。盲点性预测的复杂性低,与天线数量相比,范围仅线性化。提供了超小型多输出多输出道(UM-MIMO)的模拟结果,并混合了远场和近场路径,以核实拟议方法的准确性和效率。