Jie ZHANG, Lihua YANG, Zenghao WANG, et al. A novel deep learning based time-varying channel prediction method[J]. Telecommunications science, 2021, 37(1): 39-47.
DOI:
Jie ZHANG, Lihua YANG, Zenghao WANG, et al. A novel deep learning based time-varying channel prediction method[J]. Telecommunications science, 2021, 37(1): 39-47. DOI: 10.11959/j.issn.1000-0801.2021011.
A novel deep learning based time-varying channel prediction method
For high-speed mobile orthogonal frequency division multiplexing (OFDM) systems
a novel time-varying channel prediction method based on deep learning was proposed.To avoid the influence caused by random initialization of network parameters
the proposed method firstly obtains an ideal channel estimation based on data and pilot
and then pre-trains the back propagation (BP) neural network based on the channel estimation to obtain the ideal network initial parameters.Then
based on the initial network value obtained by pre-training
the proposed method uses the channel estimation based on pilot to train the BP neural network again.Finally
the proposed method realizes the single-time-and multi-time prediction of time-varying channels through on-line prediction.Simulation results show that the proposed method can significantly improve the prediction accuracy of time-varying channels and has a low computational complexity.
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