4.7 Article

Learning-Based Signal Detection for MIMO Systems With Unknown Noise Statistics

期刊

IEEE TRANSACTIONS ON COMMUNICATIONS
卷 69, 期 5, 页码 3025-3038

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCOMM.2021.3058999

关键词

Signal detection; MIMO; impulsive noise; unknown noise statistics; unsupervised learning; generative models

资金

  1. NSFC [61871139/61801132]
  2. International Science and Technology Cooperation Projects of Guangdong Province [2020A0505100060]
  3. Natural Science Foundation of Guangdong Province [2017A030308006/2018A030310338/2020A1515010484]
  4. Science and Technology Program of Guangzhou [201807010103]
  5. research program of Guangzhou University [YK2020008]
  6. European Union
  7. Greek national funds through the Competitiveness, Entrepreneurship and Innovation Operational Program (EPAnEK), under the special actions AQUACULTURE-INDUSTRIAL MATERIALS-OPEN INNOVATION IN CULTURE [T6YBP-00134]

向作者/读者索取更多资源

This paper proposes a novel ML detection framework that effectively approximates unknown noise distribution through normalizing flow to achieve robust signal detection and recovery in MIMO systems. Simulation results show its superiority in non-analytical noise environments over existing algorithms, while reaching the ML performance bound in analytical noise environments.
This paper aims to devise a generalized maximum likelihood (ML) estimator to robustly detect signals with unknown noise statistics in multiple-input multiple-output (MIMO) systems. In practice, there is little or even no statistical knowledge on the system noise, which in many cases is non-Gaussian, impulsive and not analyzable. Existing detection methods have mainly focused on specific noise models, which are not robust enough with unknown noise statistics. To tackle this issue, we propose a novel ML detection framework to effectively recover the desired signal. Our framework is a fully probabilistic one that can efficiently approximate the unknown noise distribution through a normalizing flow. Importantly, this framework is driven by an unsupervised learning approach, where only the noise samples are required. To reduce the computational complexity, we further present a low-complexity version of the framework, by utilizing an initial estimation to reduce the search space. Simulation results show that our framework outperforms other existing algorithms in terms of bit error rate (BER) in non-analytical noise environments, while it can reach the ML performance bound in analytical noise environments.

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