Adaptive Channel Prediction, Beamforming and Scheduling Design for 5G V2I Network
Tadilo Endeshaw Bogale, Xianbin Wang, Long Bao Le

TL;DR
This paper introduces a joint adaptive channel prediction, beamforming, and scheduling approach for 5G V2I networks, enhancing communication reliability and data rates without relying on training signals.
Contribution
It presents a novel training-signal-free channel prediction algorithm combined with optimized beamforming and scheduling for 5G V2I systems.
Findings
The proposed RLS-based channel prediction outperforms existing methods.
Joint beamforming and scheduling maximize uplink sum rate.
Numerical simulations validate the effectiveness of the algorithms.
Abstract
One of the important use-cases of 5G network is the vehicle to infrastructure (V2I) communication which requires accurate understanding about its dynamic propagation environment. As 5G base stations (BSs) tend to have multiple antennas, they will likely employ beamforming to steer their radiation pattern to the desired vehicle equipment (VE). Furthermore, since most wireless standards employ an OFDM system, each VE may use one or more sub-carriers. To this end, this paper proposes a joint design of adaptive channel prediction, beamforming and scheduling for 5G V2I communications. The channel prediction algorithm is designed without the training signal and channel impulse response (CIR) model. In this regard, first we utilize the well known adaptive recursive least squares (RLS) technique for predicting the next block CIR from the past and current block received signals (a block may have…
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