Graph Neural Network Aided Detection for the Multi-User Multi-Dimensional Index Modulated Uplink
Xinyu Feng, Mohammed EL-Hajjar, Chao Xu, Lajos Hanzo

TL;DR
This paper introduces GNN-based detectors for multi-user MIMO uplink systems that leverage compressed sensing and message passing algorithms, significantly reducing complexity while approaching optimal detection performance.
Contribution
It proposes novel GNN-based detectors, GEPNet and GNN-AMP, that enhance detection performance and reduce complexity in large-scale multi-user MIMO uplink systems.
Findings
GEPNet approaches ML detection performance.
GNN-AMP offers a favorable performance-complexity trade-off.
Proposed detectors are adaptable to various user numbers.
Abstract
The concept of Compressed Sensing-aided Space-Frequency Index Modulation (CS-SFIM) is conceived for the Large-Scale Multi-User Multiple-Input Multiple-Output Uplink (LS-MU-MIMO-UL) of Next-Generation (NG) networks. Explicitly, in CS-SFIM, the information bits are mapped to both spatial- and frequency-domain indices, where we treat the activation patterns of the transmit antennas and of the subcarriers separately. Serving a large number of users in an MU-MIMO-UL system leads to substantial Multi-User Interference (MUI). Hence, we design the Space-Frequency (SF) domain matrix as a joint factor graph, where the Approximate Message Passing (AMP) and Expectation Propagation (EP) based MU detectors can be utilized. In the LS-MU-MIMO-UL scenario considered, the proposed system uses optimal Maximum Likelihood (ML) and Minimum Mean Square Error (MMSE) detectors as benchmarks for comparison with…
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Taxonomy
TopicsEnergy Efficient Wireless Sensor Networks · IoT-based Smart Home Systems · Wireless Communication Networks Research
MethodsGraph Neural Network · Adversarial Model Perturbation
