Hongying Zhang's research while affiliated with Xi'an Jiaotong University and other places

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Publications (1)


A Hypernetwork Based Framework for Non-Stationary Channel Prediction
  • Article
  • Full-text available

January 2024

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42 Reads

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1 Citation

IEEE Transactions on Vehicular Technology

Guanzhang Liu

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Zhengyang Hu

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Lei Wang

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[...]

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In order to break through the development bottleneck of modern wireless communication networks, a critical issue is the out-of-date channel state information (CSI) in high mobility scenarios. In general, non-stationary CSI has statistical properties which vary with time, implying that the data distribution changes continuously over time. This temporal distribution shift behavior undermines the accurate channel prediction and it is still an open problem in the related literature. In this paper, a hypernetwork based framework is proposed for non-stationary channel prediction. The framework aims to dynamically update the neural network (NN) parameters as the wireless channel changes to automatically adapt to various input CSI distributions. Based on this framework, we focus on low-complexity hypernetwork design and present a deep learning (DL) based channel prediction method, termed as LPCNet, which improves the CSI prediction accuracy with acceptable complexity. Moreover, to maximize the achievable downlink spectral efficiency (SE), a joint channel prediction and beamforming (BF) method is developed, termed as JLPCNet, which seeks to predict the BF vector. Our numerical results showcase the effectiveness and flexibility of the proposed framework, and demonstrate the superior performance of LPC-Net and JLPCNet in various scenarios for fixed and varying user speeds.

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Citations (1)


... Secondly, in contrast to modelbased approaches, deep learning-based methods exhibit poor generalization ability, requiring retraining when the CSI distribution changes. Although a few studies aim to improve generalization ability by meta-learning [25] or hypernetwork [26] , the additional adaptation stage or the hypernetwork branch increases the operational complexity. In summary, existing deep learning-empowered prediction models struggle to meet the requirements for high generalization performance and accurate prediction capabilities. ...

Reference:

LLM4CP: Adapting Large Language Models for Channel Prediction
A Hypernetwork Based Framework for Non-Stationary Channel Prediction

IEEE Transactions on Vehicular Technology