The paper proposes a deep learning-based channel estimation framework for terahertz (THz) band massive MIMO (M-MIMO) systems. The key highlights are:
The considered system model incorporates both far-field and near-field channel components, resulting in a hybrid-field channel model. This model captures the unique propagation characteristics of THz communications.
The framework also accounts for the impact of radio frequency (RF) impairments, particularly phase noise, which significantly affects the channel estimation performance in high-frequency M-MIMO systems.
The proposed deep learning architecture leverages the sequential learning capabilities of bidirectional long short-term memory (BiLSTM) and gated recurrent units (GRU) to effectively model the dynamic behaviors of phase noise and accurately estimate the hybrid-field channel.
Simulation results demonstrate that the proposed deep learning-assisted scheme outperforms conventional channel estimation techniques, such as least squares, minimum mean square error, and standalone deep neural network and LSTM-based approaches, across various signal-to-noise ratio (SNR) levels.
The performance advantage of the proposed framework is more pronounced at low SNR conditions and in the presence of higher phase noise variances, showcasing its robustness in practical THz M-MIMO deployments.
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by Pulok Tarafd... في arxiv.org 09-26-2024
https://arxiv.org/pdf/2409.16420.pdfاستفسارات أعمق