In this letter, we propose a Gaussian mixture model (GMM)-based channel estimator which is learned on imperfect training data, i.e., the training data is solely comprised of noisy and sparsely allocated pilot observations. In a practical application, recent pilot observations at the base station (BS) can be utilized for training. This is in sharp contrast to state-of-theart machine learning (ML) techniques where a reference dataset consisting of perfect channel state information (CSI) labels is a prerequisite, which is generally unaffordable. In particular, we propose an adapted training procedure for fitting the GMM which is a generative model that represents the distribution of all potential channels associated with a specific BS cell. To this end, the necessary modifications of the underlying expectation-maximization (EM) algorithm are derived. Numerical results show that the proposed estimator performs close to the case where perfect CSI is available for the training and exhibits a higher robustness against imperfections in the training data as compared to state-of-the-art ML techniques.
翻译:在这封信中,我们提出了一个基于高斯混合模型(GMM)的频道估计器,该模型是根据不完善的培训数据学习的,即,培训数据完全由杂乱和分散的试点观测组成。在实际应用中,基地站最近的试点观测可用于培训。这与最先进的机器学习(ML)技术形成鲜明的对照,因为在这种技术中,由完美的频道状态信息标签组成的参考数据集是一个先决条件,通常无法负担。特别是,我们提议了一个适应GMM的培训程序,该程序代表了与特定BS单元相关的所有潜在渠道的分布。为此,对基本预期-最大化(EM)算法进行了必要的修改。数字结果显示,拟议的估计器在接近于这样的情况下,即对培训进行完美的CSI,并显示与最先进的ML技术相比,对培训数据不完善的情况具有更大的活力。