Bayes-Optimal Unsupervised Learning for Channel Estimation in Near-Field Holographic MIMO

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

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Author(s)

  • Wentao Yu
  • Hengtao He
  • Shenghui Song
  • Jun Zhang
  • Ross Murch
  • Khaled B. Letaief

Related Research Unit(s)

Detail(s)

Original languageEnglish
Journal / PublicationIEEE Journal on Selected Topics in Signal Processing
Online publishedJun 2024
Publication statusOnline published - Jun 2024

Abstract

Holographic MIMO (HMIMO) is being increasingly recognized as a key enabling technology for 6G wireless systems through the deployment of an extremely large number of antennas within a compact space to fully exploit the potentials of the electromagnetic (EM) channel. Nevertheless, the benefits of HMIMO systems cannot be fully unleashed without an efficient means to estimate the high-dimensional channel, whose distribution becomes increasingly complicated due to the accessibility of the near-field region. In this paper, we address the fundamental challenge of designing a low-complexity Bayes-optimal channel estimator in near-field HMIMO systems operating in unknown EM environments. The core idea is to estimate the HMIMO channels solely based on the Stein' s score function of the received pilot signals and an estimated noise level, without relying on priors or supervision that is not feasible in practical deployment. A neural network is trained with the unsupervised denoising score matching objective to learn the parameterized score function. Meanwhile, a principal component analysis (PCA)-based algorithm is proposed to estimate the noise level leveraging the low-rank near-field spatial correlation. Building upon these techniques, we develop a Bayes-optimal score-based channel estimator for fully-digital HMIMO transceivers in a closed form. The optimal score-based estimator is also extended to hybrid analog-digital HMIMO systems by incorporating it into a low-complexity message passing algorithm. The (quasi-) Bayes-optimality of the proposed estimators is validated both in theory and by extensive simulation results. In addition to optimality, it is shown that our proposal is robust to various mismatches and can quickly adapt to dynamic EM environments in an online manner thanks to its unsupervised nature, demonstrating its potential in real-world deployment.


Research Area(s)

  • Accuracy, Bayes methods, Channel estimation, Correlation, Holographic MIMO, message passing, MIMO communication, MMSE channel estimation, Noise level, PCA, score matching, unsupervised learning, Unsupervised learning