Journal of South China University of Technology(Natural Science Edition)

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An Channel Enhanced Deep Horblock Network Based Method for Time-Frequency Doubly Selective Channel Estimation

LIU Jiaojiao  WANG Ruochen  MA Biyun   

  1. School of Electronics and Information Engineering, South China University of Technology, Guangzhou 510640, Guangdong, China
  • Published:2025-03-24

Abstract:

In high-mobility scenarios, wireless communications undergo time and frequency doubly selective fading, making channel estimation essential for accurately obtaining channel state information (CSI), which in turn enhances the performance of communication systems. The Time-Frequency Doubly Selective Channel is a channel model that characterizes signal fading with selective properties in both time and frequency dimensions. To address the challenges of channel estimation in such environments, deep learning methods have been widely adopted in recent years. Networks that originally excelled in computer vision and natural language processing, such as Convolutional Neural Networks (CNN) and Long Short-Term Memory networks (LSTM), have been applied to channel estimation techniques. However, due to significant differences in data characteristics and task objectives between channel estimation and image processing, these approaches still face numerous challenges. This paper introduces a novel channel estimation deep learning algorithm based on an Channel Enhanced Deep Horblock Network (CEHNet). The proposed algorithm treats the time-frequency grid of the doubly selective channel as a two-dimensional image and employs a Super-Resolution (SR) network to reconstruct the CSI. Additionally, a data augmentation preprocessing method that increases amplitude features is utilized to expand the dataset, and Lasso regression is incorporated as a constraint to accelerate the network’s convergence speed. Experimental results demonstrate that, across various channel models, the proposed CEHNet algorithm outperforms traditional channel estimation methods such as Minimum Mean Square Error (MMSE) and conventional Super-Resolution Convolutional Neural Networks (SRCNN) when the number of pilots is limited. Furthermore, CEHNet exhibits significantly faster convergence rates, achieving a fourfold performance improvement over SRCNN at a signal-to-noise ratio (SNR) of 22 dB. These findings highlight the effectiveness of deep learning-based channel estimation techniques in complex time-frequency selective environments, offering substantial improvements in estimation accuracy and convergence efficiency.

Key words: channel estimation, super-resolution network, dual-selection channel, recursive gated Convolution