4.5 Article

Independent vector analysis based blind interference reduction and signal recovery for MIMO IoT green communications

Journal

CHINA COMMUNICATIONS
Volume 19, Issue 7, Pages 79-88

Publisher

CHINA INST COMMUNICATIONS
DOI: 10.23919/JCC.2022.07.007

Keywords

independent vector analysis; blind source separation; MIMO; green communications

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This paper proposes a new detection mechanism called independent vector analysis (IVA) for blind adaptive signal recovery in MIMO IoT green communication. The IVA method reduces inter-carrier interference and multiple access interference, enhancing the separation performance.
In application to time convolutive mixing model or frequency domain blind separation model for wireless receiving applications, frequency domain independent component analysis (FDICA) has been a very popular method but with adverse random permutation ambiguity influence. In order to solve this inherent problem in FDICA assisted multiple-input multiple-output orthogonal frequency-division multiplexing (MIMO-OFDM) based the Internet of Thing (IoT) systems, this paper proposes an new detection mechanism, named independent vector analysis (IVA), for realizing blind adaptive signal recovery in MIMO IoT green communication to reduce inter-carrier interference (ICI) and multiple access interference (MAI). IVA jointly implements separation work for different frequency bin data while the FDICA deals with it separately. In IVA, the dependencies of frequency bins can be exploited in mitigating the random permutation problem. In addition, multivariate prior distributions are employed to preserve the inter-frequency dependencies for individual sources, which can result in separation performance enhancement. Simulation results and analysis corroborate the effectiveness of the proposed method.

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