Evaluation of a Gaussian Mixture Model-based Channel Estimator using Measurement Data

N. Turan, B. Fesl, Moritz Grundei, M. Koller, W. Utschick
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引用次数: 6

Abstract

In this work, we use real-world data in order to evaluate and validate a machine learning (ML)-based algorithm for physical layer functionalities. Specifically, we apply a recently introduced Gaussian mixture model (GMM)-based algorithm in order to estimate uplink channels stemming from a measurement campaign. For this estimator, there is an initial (offline) training phase, where a GMM is fitted onto given channel (training) data. Thereafter, the fitted GMM is used for (online) channel estimation. Our experiments suggest that the GMM estimator learns the intrinsic characteristics of a given base station's whole radio propagation environment. Essentially, this ambient information is captured due to universal approximation properties of the initially fitted GMM. For a large enough number of GMM components, the GMM estimator was shown to approximate the (unknown) mean squared error (MSE)-optimal channel estimator arbitrarily well. In our experiments, the GMM estimator shows significant performance gains compared to approaches that are not able to capture the ambient information. To validate the claim that ambient information is learnt, we generate synthetic channel data using a state-of-the-art channel simulator and train the GMM estimator once on these and once on the real data, and we apply the estimator once to the synthetic and once to the real data. We then observe how providing suitable ambient information in the training phase beneficially impacts the later channel estimation performance.
利用测量数据评估基于高斯混合模型的信道估计器
在这项工作中,我们使用真实世界的数据来评估和验证基于机器学习(ML)的物理层功能算法。具体来说,我们应用了最近引入的基于高斯混合模型(GMM)的算法来估计来自测量活动的上行信道。对于这个估计器,有一个初始(离线)训练阶段,其中GMM被拟合到给定的通道(训练)数据上。然后,将拟合的GMM用于(在线)信道估计。我们的实验表明,GMM估计器学习给定基站整个无线电传播环境的固有特性。从本质上讲,由于初始拟合的GMM的普遍近似特性,这些环境信息被捕获。对于足够多的GMM分量,GMM估计器可以任意地近似(未知的)均方误差(MSE)-最优信道估计器。在我们的实验中,与无法捕获环境信息的方法相比,GMM估计器显示出显着的性能提升。为了验证环境信息被学习的说法,我们使用最先进的信道模拟器生成合成信道数据,并在这些数据和真实数据上分别训练GMM估计器一次,我们将估计器一次应用于合成数据,一次应用于真实数据。然后,我们观察在训练阶段提供合适的环境信息如何对后期的信道估计性能产生有益的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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