Jorge Cortés
Professor
Cymer Corporation Endowed Chair
Adaptive information collection by robotic sensor networks for spatial estimation
R. Graham, J. Cortés
IEEE Transactions on Automatic Control 57 (6) (2012), 1404-1419
Abstract
This work deals with trajectory optimization for a robotic sensor
network sampling a spatio-temporal random field. We examine the
optimal sampling problem of minimizing the maximum predictive
variance of the estimator over the space of network
trajectories. This is a high-dimensional, multi-modal, nonsmooth
optimization problem, known to be NP-hard even for static fields and
discrete design spaces. Under an asymptotic regime of
near-independence between distinct sample locations, we show that
the solutions to a novel generalized disk-covering problem are
solutions to the optimal sampling problem. This result effectively
transforms the search for the optimal trajectories into a geometric
optimization problem. Constrained versions of the latter are also
of interest as they can accommodate trajectories that satisfy a
maximum velocity restriction on the robots. We characterize the
solution for the unconstrained and constrained versions of the
geometric optimization problem as generalized multicircumcenter
trajectories, and provide algorithms which enable the network to
find them in a distributed fashion. Several simulations illustrate
our results.
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