DocumentCode
1391143
Title
Adaptive Information Collection by Robotic Sensor Networks for Spatial Estimation
Author
Graham, Rishi ; Cortés, Jorge
Author_Institution
Monterey Bay Aquarium Res. Inst., Monterey, CA, USA
Volume
57
Issue
6
fYear
2012
fDate
6/1/2012 12:00:00 AM
Firstpage
1404
Lastpage
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.
Keywords
computational complexity; geometry; minimisation; robots; sensors; NP-hard problem; adaptive information collection; estimator maximum predictive variance minimization; generalized disk-covering problem; generalized multicircumcenter trajectories; geometric optimization problem; high-dimensional multimodal nonsmooth optimization problem; maximum velocity restriction; optimal sampling problem; robotic sensor network trajectory optimization; spatial estimation; spatio-temporal random field; Correlation; Optimization; Robot sensing systems; Trajectory; Uncertainty; Vectors; Distributed algorithms; geometric optimization; optimal sampling; robotic sensor networks; spatial estimation;
fLanguage
English
Journal_Title
Automatic Control, IEEE Transactions on
Publisher
ieee
ISSN
0018-9286
Type
jour
DOI
10.1109/TAC.2011.2178332
Filename
6096368
Link To Document