Low-Complexity Channel Estimation for Internet of Vehicles AFDM Communications With Sparse Bayesian Learning
Xiangxiang Li, Haiyan Wang, Yao Ge, Xiaohong Shen, Miaowen Wen, Shun Zhang, Yong Liang Guan

TL;DR
This paper introduces low-complexity, off-grid Bayesian learning methods for accurate channel estimation in AFDM-based internet of vehicles, balancing precision and computational efficiency.
Contribution
It proposes distributed off-grid SBL estimators with dynamic grid updates for improved accuracy and reduced complexity in AFDM channel estimation.
Findings
D-GR-SBL and D-GE-SBL reduce computational complexity.
Proposed methods outperform existing schemes in accuracy.
Trade-off between performance and complexity demonstrated.
Abstract
Affine frequency division multiplexing (AFDM) has been considered as a promising waveform to enable high-reliable connectivity in the internet of vehicles. However, accurate channel estimation is critical and challenging to achieve the expected performance of the AFDM systems in doubly-dispersive channels. In this paper, we propose a sparse Bayesian learning (SBL) framework for AFDM systems and develop a dynamic grid update strategy with two off-grid channel estimation methods, i.e., grid-refinement SBL (GR-SBL) and grid-evolution SBL (GE-SBL) estimators. Specifically, the GR-SBL employs a localized grid refinement method and dynamically updates grid for a high-precision estimation. The GE-SBL estimator approximates the off-grid components via first-order linear approximation and enables gradual grid evolution for estimation accuracy enhancement. Furthermore, we develop a distributed…
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Taxonomy
TopicsAdvanced Wireless Communication Techniques · PAPR reduction in OFDM · Advanced MIMO Systems Optimization
