Logo image
DL-based Adaptive Joint CSI Prediction and Feedback for Massive MIMO-OFDM Systems
Journal article   Peer reviewed

DL-based Adaptive Joint CSI Prediction and Feedback for Massive MIMO-OFDM Systems

Hongrui Shen, Long Zhao, Kan Zheng and Yi Ma
IEEE transactions on vehicular technology, pp.1-15
04/03/2026

Abstract

Adaptation models Correlation CSI feedback CSI prediction deep learning Feature extraction Gaussian processes Hands massive MIMO-OFDM Matrix decomposition Quantization (signal) Transmission line matrix methods Vectors History
Channel state information (CSI) is crucial for down link beamnforming in massive multiple-input multiple-output orthogonal frequency division multiplexing (MIMO-OFDM) systems. However, obtaining timely and accurate CSI remains a challenge in frequency division duplex (FDD) systems due to the time-varying channel and feedback delay. This paper proposes a deep learning (DL)-based joint prediction and feedback network for eigenvector-based CSI, termed as PCRANet, which could leverage history CSI to predict and feedback future CSI. On one hand, the PCRANet could fit for different subband numbers of input CSI. On the other hand, to enable flexible input lengths of temporal-domain CSI sequences for various UE speeds, padding and masking operations are employed to preprocess input CSI sequences. Furthermore, a feedback bit control unit (FBCU) module is introduced to realize the variable feedback overhead. Experiments indicate that the proposed PCRANet outperforms separated prediction-feedback schemes, and maintains robust performance across various temporal-frequency sizes of input CSI and adjustable feedback overhead.
pdf
TVT_DL-based_Adaptive_Joint_CSI_Prediction_and_Feedback_for_Massive_MIMO-OFDM_Systems2.29 MB
Author's Accepted Manuscript Restricted. Access maybe granted on request., This file will be open access upon publication.

Metrics

1 Record Views

Details

Logo image

Usage Policy