TY - JOUR
T1 - Joint Activity Detection and Channel Estimation for Asynchronous mMTC
T2 - A Model-Driven GNN Approach
AU - Xie, Junyu
AU - Guo, Jing
AU - Zheng, Zhong
AU - Zhao, Lou
AU - Fei, Zesong
N1 - Publisher Copyright:
© 2012 IEEE.
PY - 2026
Y1 - 2026
N2 - This work investigates the joint activity detection and channel estimation (JADCE) problem in asynchronous uplink massive machine-type communications (mMTC), where a model-driven graph neural network (GNN) approach is developed under the variational inference framework. Specifically, we first formulate the JADCE problem as an equivalent channel estimation task and derive its optimal variational distribution. Then, all potential access time slots of each device are modeled as nodes to construct a homogeneous graph, and the learnable GNN layers are integrated with the variational inference process to efficiently infer the associated hyperparameters. To further reduce the computational complexity and enhance estimation performance, a residual-based aggregation strategy and a multi-task update architecture are incorporated into the GNN design. Finally, simulation results show that our approach achieves better performance in both channel estimation and activity detection compared with benchmarks, while maintaining acceptable computational complexity and strong scalability.
AB - This work investigates the joint activity detection and channel estimation (JADCE) problem in asynchronous uplink massive machine-type communications (mMTC), where a model-driven graph neural network (GNN) approach is developed under the variational inference framework. Specifically, we first formulate the JADCE problem as an equivalent channel estimation task and derive its optimal variational distribution. Then, all potential access time slots of each device are modeled as nodes to construct a homogeneous graph, and the learnable GNN layers are integrated with the variational inference process to efficiently infer the associated hyperparameters. To further reduce the computational complexity and enhance estimation performance, a residual-based aggregation strategy and a multi-task update architecture are incorporated into the GNN design. Finally, simulation results show that our approach achieves better performance in both channel estimation and activity detection compared with benchmarks, while maintaining acceptable computational complexity and strong scalability.
KW - Activity detection
KW - asynchronous mMTC
KW - channel estimation
KW - graph neural network
KW - variational inference
UR - https://www.scopus.com/pages/publications/105038692631
U2 - 10.1109/LWC.2026.3690488
DO - 10.1109/LWC.2026.3690488
M3 - Article
AN - SCOPUS:105038692631
SN - 2162-2337
VL - 15
SP - 3034
EP - 3038
JO - IEEE Wireless Communications Letters
JF - IEEE Wireless Communications Letters
ER -