Near-Field Sensing Enabled Predictive Beamforming: From Estimation to Tracking
Hao Jiang, Zhaolin Wang, Yuanwei Liu

TL;DR
This paper introduces a near-field sensing framework for predictive beamforming that estimates full user motion states, including distance and transverse velocity, enabling more accurate and robust high-mobility wireless communication.
Contribution
It proposes two novel full-motion state sensing approaches, AGD-AO and EKF, for near-field predictive beamforming, improving accuracy and robustness over traditional methods.
Findings
AGD-AO achieves faster convergence with stable descent.
Proposed methods outperform conventional far-field schemes.
EKF provides greater robustness in low SNR conditions.
Abstract
A near-field sensing (NISE) enabled predictive beamforming framework is proposed to facilitate wireless communications with high-mobility channels. Unlike conventional far-field sensing, which only captures the angle and the radial velocity of the user, NISE enables the estimation of the full motion state, including additional distance and transverse velocity information. Two full-motion state sensing approaches are proposed based on the concepts of estimation and tracking, respectively. 1)AGD-AO approach: The full motion state of the user is estimated within a single CPI. In particular, the gradient descent is adopted to estimate the transverse and radial velocities of the user based on the maximum likelihood criteria, while the distance and the angle are calculated by the kinematic model. In this process, moment estimations are leveraged to adaptively tune the step size, thereby…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Antenna Design and Optimization · Electromagnetic Compatibility and Measurements
