In frequency division duplex (FDD) massive multiple-input multiple-output
(mMIMO) systems, the reciprocity mismatch caused by receiver distortion
seriously degrades the amplitude prediction performance of channel state
information (CSI). To tackle this issue, from the perspective of distortion
suppression and reciprocity calibration, a lightweight neural network-based
amplitude prediction method is proposed in this paper. Specifically, with the
receiver distortion at the base station (BS), conventional methods are employed
to extract the amplitude feature of uplink CSI. Then, learning along the
direction of the uplink wireless propagation channel, a dedicated and
lightweight distortion-learning network (Dist-LeaNet) is designed to restrain
the receiver distortion and calibrate the amplitude reciprocity between the
uplink and downlink CSI. Subsequently, by cascading, a single hidden
layer-based amplitude-prediction network (Amp-PreNet) is developed to
accomplish amplitude prediction of downlink CSI based on the strong amplitude
reciprocity. Simulation results show that, considering the receiver distortion
in FDD systems, the proposed scheme effectively improves the amplitude
prediction accuracy of downlink CSI while reducing the transmission and
processing delay.Comment: 10 pages, 5 figure