DNN-assisted Particle-based Bayesian Joint Synchronization and
Localization
- URL: http://arxiv.org/abs/2110.02771v1
- Date: Wed, 29 Sep 2021 08:58:31 GMT
- Title: DNN-assisted Particle-based Bayesian Joint Synchronization and
Localization
- Authors: Meysam Goodarzi, Vladica Sark, Nebojsa Maletic, Jes\'us Guti\'errez,
Giuseppe Caire, and Eckhard Grass
- Abstract summary: We propose a Deep neural network-assisted Particle Filter-based (DePF) approach to address the Mobile User (MU) joint synchronization and localization (sync&loc) problem in ultra dense networks.
DePF deploys an asymmetric time-stamp exchange mechanism between the MUs and the Access Points (APs), which, traditionally, provides us with information about the MUs' clock offset and skew.
To perform joint sync&loc, DePF capitalizes on particle Gaussian mixtures that allow for a hybrid particle-based and parametric Bayesian Recursive Filtering (BRF) fusion.
- Score: 42.077355130261715
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this work, we propose a Deep neural network-assisted Particle Filter-based
(DePF) approach to address the Mobile User (MU) joint synchronization and
localization (sync\&loc) problem in ultra dense networks. In particular, DePF
deploys an asymmetric time-stamp exchange mechanism between the MUs and the
Access Points (APs), which, traditionally, provides us with information about
the MUs' clock offset and skew. However, information about the distance between
an AP and an MU is also intrinsic to the propagation delay experienced by
exchanged time-stamps. In addition, to estimate the angle of arrival of the
received synchronization packet, DePF draws on the multiple signal
classification algorithm that is fed by Channel Impulse Response (CIR)
experienced by the sync packets. The CIR is also leveraged on to determine the
link condition, i.e. Line-of-Sight (LoS) or Non-LoS. Finally, to perform joint
sync\&loc, DePF capitalizes on particle Gaussian mixtures that allow for a
hybrid particle-based and parametric Bayesian Recursive Filtering (BRF) fusion
of the aforementioned pieces of information and thus jointly estimate the
position and clock parameters of the MUs. The simulation results verifies the
superiority of the proposed algorithm over the state-of-the-art schemes,
especially that of Extended Kalman filter- and linearized BRF-based joint
sync\&loc. In particular, only drawing on the synchronization time-stamp
exchange and CIRs, for 90$\%$of the cases, the absolute position and clock
offset estimation error remain below 1 meter and 2 nanoseconds, respectively.
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