Multi-agent estimation and filtering for minimizing team mean-squared error
Abstract
Motivated by estimation problems arising in autonomous vehicles and decentralized control of unmanned aerial vehicles, we consider multi-agent estimation and filtering problems in which multiple agents generate state estimates based on decentralized information and the objective is to minimize a coupled mean-squared error which we call \emph{team mean-square error}. We call the resulting estimates as minimum team mean-squared error (MTMSE) estimates. We show that MTMSE estimates are different from minimum mean-squared error (MMSE) estimates. We derive closed-form expressions for MTMSE estimates, which are linear function of the observations where the corresponding gain depends on the weight matrix that couples the estimation error. We then consider a filtering problem where a linear stochastic process is monitored by multiple agents which can share their observations (with delay) over a communication graph. We derive expressions to recursively compute the MTMSE estimates. To illustrate the effectiveness of the proposed scheme we consider an example of estimating the distances between vehicles in a platoon and show that MTMSE estimates significantly outperform MMSE estimates and consensus Kalman filtering estimates.
Cite
@article{arxiv.1903.12018,
title = {Multi-agent estimation and filtering for minimizing team mean-squared error},
author = {Mohammad Afshari and Aditya Mahajan},
journal= {arXiv preprint arXiv:1903.12018},
year = {2021}
}
Comments
16 pages, 7 figures, Submitted to the IEEE Transactions on Signal Processing