Channel Estimation for Movable Antenna Aided Wideband Communication Systems
Zhenyu Xiao, Songqi Cao, Lipeng Zhu, Boyu Ning, Xiang-Gen Xia, and Rui, Zhang

TL;DR
This paper proposes a novel channel estimation method for wideband movable antenna systems, utilizing sparse representations and iterative refinement to accurately recover channel state information with limited measurements.
Contribution
It introduces a compressed sensing-based framework with an alternating refinement approach for precise wideband channel estimation in movable antenna systems.
Findings
High accuracy in channel reconstruction demonstrated in simulations
The alternating refinement improves estimation accuracy over initial methods
The approach reduces measurement requirements for effective channel estimation
Abstract
Movable antenna (MA) is an emerging technology that can significantly improve communication performance via the continuous adjustment of the antenna positions. To unleash the potential of MAs in wideband communication systems, acquiring accurate channel state information (CSI), i.e., the channel frequency responses (CFRs) between any position pair within the transmit (Tx) region and the receive (Rx) region across all subcarriers, is a crucial issue. In this paper, we study the channel estimation problem for wideband MA systems. To start with, we express the CFRs as a combination of the field-response vectors (FRVs), delay-response vector (DRV), and path-response tensor (PRT), which exhibit sparse characteristics and can be recovered by using a limited number of channel measurements at selected position pairs of Tx and Rx MAs over a few subcarriers. Specifically, we first formulate the…
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Taxonomy
TopicsWireless Communication Networks Research · Advanced MIMO Systems Optimization · Advanced Wireless Communication Techniques
MethodsMixing Adam and SGD
