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Main Authors: Feng, Kaijun, Wan, Ziwei, Liao, Anwen, Ma, Wenyan, Zhu, Lipeng, Xiao, Zhenyu, Gao, Zhen, Zhang, Rui
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.07870
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author Feng, Kaijun
Wan, Ziwei
Liao, Anwen
Ma, Wenyan
Zhu, Lipeng
Xiao, Zhenyu
Gao, Zhen
Zhang, Rui
author_facet Feng, Kaijun
Wan, Ziwei
Liao, Anwen
Ma, Wenyan
Zhu, Lipeng
Xiao, Zhenyu
Gao, Zhen
Zhang, Rui
contents Movable antenna (MA) has emerged as a promising technology for future wireless systems. Compared with traditional fixed-position antennas, MA improves system performance by antenna movement to optimize channel conditions. For multiuser wideband MA systems, this paper proposes deep learning-based framework integrating channel estimation (CE), antenna position optimization, and beamforming, with a clear workflow and enhanced efficiency. Specifically, to obtain accurate channel state information (CSI), we design a two-stage CE mechanism: first reconstructing the channel matrix from limited measurements via compressive sensing, then introducing a Swin-Transformer-based denoising network to refine CE accuracy for subsequent optimization. Building on this, we address the joint optimization challenge by proposing a Transformer-based network that intelligently maps CSI sequences of candidate positions to optimal MA positions while combining a model-driven weighted minimum mean square error (WMMSE) beamforming approach to achieve better performance. Simulation results demonstrate that the proposed methods achieve superior performance compared with existing counterparts under various conditions. The codes about this work are available at https://github.com/ZiweiWan/Code-4-DL-MA-CE-BF.
format Preprint
id arxiv_https___arxiv_org_abs_2602_07870
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Deep learning based Channel Estimation and Beamforming in Movable Antenna Systems
Feng, Kaijun
Wan, Ziwei
Liao, Anwen
Ma, Wenyan
Zhu, Lipeng
Xiao, Zhenyu
Gao, Zhen
Zhang, Rui
Information Theory
Movable antenna (MA) has emerged as a promising technology for future wireless systems. Compared with traditional fixed-position antennas, MA improves system performance by antenna movement to optimize channel conditions. For multiuser wideband MA systems, this paper proposes deep learning-based framework integrating channel estimation (CE), antenna position optimization, and beamforming, with a clear workflow and enhanced efficiency. Specifically, to obtain accurate channel state information (CSI), we design a two-stage CE mechanism: first reconstructing the channel matrix from limited measurements via compressive sensing, then introducing a Swin-Transformer-based denoising network to refine CE accuracy for subsequent optimization. Building on this, we address the joint optimization challenge by proposing a Transformer-based network that intelligently maps CSI sequences of candidate positions to optimal MA positions while combining a model-driven weighted minimum mean square error (WMMSE) beamforming approach to achieve better performance. Simulation results demonstrate that the proposed methods achieve superior performance compared with existing counterparts under various conditions. The codes about this work are available at https://github.com/ZiweiWan/Code-4-DL-MA-CE-BF.
title Deep learning based Channel Estimation and Beamforming in Movable Antenna Systems
topic Information Theory
url https://arxiv.org/abs/2602.07870