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Deep Learning-Based Transmit Power Control for Device Activity Detection and Channel Estimation in Massive Access
Journal article   Peer reviewed

Deep Learning-Based Transmit Power Control for Device Activity Detection and Channel Estimation in Massive Access

Zhuo Sun, Nan Yang, Chunhui Li, Jinhong Yuan and Tony Q. S. Quek
IEEE wireless communications letters, Vol.11(1), pp.183-187
01/2022

Abstract

Approximation algorithms Channel estimation compressed sensing Deep learning Massive access Performance evaluation Power control Rayleigh channels Sparse matrices transmit power control
We propose a transmit power control (TPC) scheme for grant-free multiple access, where each device is able to determine its transmit power based on a TPC function. For the proposed scheme, we design a novel deep learning framework to jointly design the TPC functions and the parametric Stein's unbiased risk estimate (SURE) approximate message passing (AMP) algorithm, which significantly improves the accuracy of active device detection and channel estimation, particularly for short pilot sequences. Simulations are conducted to demonstrate the advantages of our proposed deep learning framework on massive device activity detection and channel estimation compared to existing schemes.

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