Deep Plug-and-Play Prior for Multitask Channel Reconstruction in Massive MIMO Systems

Scalability is a major concern in implementing deep learning (DL) based methods in wireless communication systems. Given various channel reconstruction tasks, applying one DL model for one specific task is costly in both model training and model storage. In this paper, we propose a novel unsupervise...

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Hauptverfasser: Wan, Weixiao, Chen, Wei, Wang, Shiyue, Li, Geoffrey Ye, Ai, Bo
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creator Wan, Weixiao
Chen, Wei
Wang, Shiyue
Li, Geoffrey Ye
Ai, Bo
description Scalability is a major concern in implementing deep learning (DL) based methods in wireless communication systems. Given various channel reconstruction tasks, applying one DL model for one specific task is costly in both model training and model storage. In this paper, we propose a novel unsupervised deep plug-and-play prior method for three channel reconstruction tasks in the downlink of massive multiple-input multiple-output (MIMO) systems, including channel estimation, antenna extrapolation and channel state information (CSI) feedback. The proposed method corresponding to these three channel reconstruction tasks employs a common DL model, which greatly reduces the overhead of model training and storage. Unlike general multi-task learning, the DL model of the proposed method does not require further fine-tuning for specific channel reconstruction tasks. Extensive experiments are conducted on the DeepMIMO dataset to demonstrate the convergence, performance, and storage overhead of the proposed method for the three channel reconstruction tasks.
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title Deep Plug-and-Play Prior for Multitask Channel Reconstruction in Massive MIMO Systems
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