SPITLGApr 1, 2020

A Modular Neural Network Based Deep Learning Approach for MIMO Signal Detection

arXiv:2004.00404v16 citations
AI Analysis

This addresses scalability issues in MIMO detection for wireless communications, but it is incremental as it builds on existing deep learning methods.

The paper tackles the problem of poor scalability in neural network-based MIMO signal detection by proposing a modular neural network (MNNet) that integrates parallel interference cancellation, which reduces interference linearly and achieves near-optimal performance with lower learning complexity.

In this paper, we reveal that artificial neural network (ANN) assisted multiple-input multiple-output (MIMO) signal detection can be modeled as ANN-assisted lossy vector quantization (VQ), named MIMO-VQ, which is basically a joint statistical channel quantization and signal quantization procedure. It is found that the quantization loss increases linearly with the number of transmit antennas, and thus MIMO-VQ scales poorly with the size of MIMO. Motivated by this finding, we propose a novel modular neural network based approach, termed MNNet, where the whole network is formed by a set of pre-defined ANN modules. The key of ANN module design lies in the integration of parallel interference cancellation in the MNNet, which linearly reduces the interference (or equivalently the number of transmit-antennas) along the feed-forward propagation; and so as the quantization loss. Our simulation results show that the MNNet approach largely improves the deep-learning capacity with near-optimal performance in various cases. Provided that MNNet is well modularized, the learning procedure does not need to be applied on the entire network as a whole, but rather at the modular level. Due to this reason, MNNet has the advantage of much lower learning complexity than other deep-learning based MIMO detection approaches.

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