Extrinsic Graph Neural Network-Aided Expectation Propagation for Turbo-MIMO Receiver
ID:25 View Protection:ATTENDEE Updated Time:2022-10-11 11:04:22 Hits:525 Oral Presentation

Start Time:2022-10-20 09:00(Asia/Shanghai)

Duration:15min

Session:RS Regular Session » RS3RS3: Signal Detection and Channel Decoding

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Abstract
Deep neural networks (NNs) promise excellent performance and high efficiency in constructing multiple-input multiple-output (MIMO) receivers. Recently, graph NNs (GNNs) have been applied to enhance expectation propagation (EP) for MIMO detection and to overcome the inaccuracy of Gaussian approximation caused by multi-user interference. However, GNN-aided EP detector fails to generate extrinsic information required by Turbo-MIMO receivers. We develop a customized training scheme in this paper as a remedy to enable extrinsic output from the GNN-aided EP detector and further enhance the interaction with the channel decoder by adaptively scaling the soft information feedback. Simulation results show that the proposed Turbo-MIMO receiver significantly outperforms the EP-based receiver and achieves comparable performance to the sphere decoding-based receiver with shorter running time.
Keywords
Speaker
Xingyu Zhou
Southeast University

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Important Date
  • Conference Date

    Oct 19

    2022

    to

    Oct 22

    2022

Sponsored By
Zhejiang University
Organized By
Zhejiang University