A location-aware coordinated beam search framework that narrows candidate beams to an error-bounded window around UE and reflector positions and uses an intelligent intra-window search to cut the number of measurements.
Robust Location-Aided Beam Alignment in Millimeter Wave Massive MIMO
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Location-aided beam alignment has been proposed recently as a potential approach for fast link establishment in millimeter wave (mmWave) massive MIMO (mMIMO) communications. However, due to mobility and other imperfections in the estimation process, the spatial information obtained at the base station (BS) and the user (UE) is likely to be noisy, degrading beam alignment performance. In this paper, we introduce a robust beam alignment framework in order to exhibit resilience with respect to this problem. We first recast beam alignment as a decentralized coordination problem where BS and UE seek coordination on the basis of correlated yet individual position information. We formulate the optimum beam alignment solution as the solution of a Bayesian team decision problem. We then propose a suite of algorithms to approach optimality with reduced complexity. The effectiveness of the robust beam alignment procedure, compared with classical designs, is then verified on simulation settings with varying location information accuracies.
fields
eess.SP 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
Location-aware Beam Alignment for mmWave Communications
A location-aware coordinated beam search framework that narrows candidate beams to an error-bounded window around UE and reflector positions and uses an intelligent intra-window search to cut the number of measurements.