MIMO Detection via Gaussian Mixture Expectation Propagation: A Bayesian Machine Learning Approach for High-Order High-Dimensional MIMO Systems
MIMO systems can simultaneously transmit multiple data streams within the same frequency band, thus exploiting the spatial dimension to enhance performance. MIMO detection poses considerable challenges due to the interference and noise introduced by the concurrent transmission of multiple streams. E...
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Zusammenfassung: | MIMO systems can simultaneously transmit multiple data streams within the
same frequency band, thus exploiting the spatial dimension to enhance
performance. MIMO detection poses considerable challenges due to the
interference and noise introduced by the concurrent transmission of multiple
streams. Efficient Uplink (UL) MIMO detection algorithms are crucial for
decoding these signals accurately and ensuring robust communication. In this
paper a MIMO detection algorithm is proposed which improves over the
Expectation Propagation (EP) algorithm. The proposed algorithm is based on a
Gaussian Mixture Model (GMM) approximation for Belief Propagation (BP) and EP
messages. The GMM messages better approximate the data prior when EP fails to
do so and thus improve detection. This algorithm outperforms state of the art
detection algorithms while maintaining low computational complexity. |
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DOI: | 10.48550/arxiv.2412.09068 |