Monte Carlo sensor networks

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Publication Type technical report
School or College College of Engineering
Department Computing, School of
Program Advanced Research Projects Agency
Creator Henderson, Thomas C.
Other Author Erickson, Brandt; Longoria, Travis; Grant, Eddie; Luthy, Kyle; Mattos, Leonardo; Craver, Matt
Contributor North Carolina State University
Title Monte Carlo sensor networks
Date 2005-01-20
Description Biswas et al. [1] introduced a probabilistic approach to inference with limited information in sensor networks. They represented the sensor network as a Bayesian network and performed approximate inference using Markov Chain Monte Carlo (MCMC). The goal is to robustly answer queries even under noisy or partial information scenarios. We propose an alternative method based on simple Monte Carlo estimation; our method allows a distributed algorithm, pre-computation of probabilities, a more refined spatial analysis, as well as desiderata for sensor placement in the friendly agent surrounded by enemies problem. In addition, we performed experiments with real microphones and robots to determine the sensor correct response probability.
Type Text
Publisher University of Utah
Subject Monte Carlo sensor networks; Markov Chain Monte Carlo; MCMC
Subject LCSH Sensor networks
Language eng
Bibliographic Citation Henderson, Thomas C.; Erickson, Brandt; Longoria, Travis; Grant, Eddie; Luthy, Kyle; Mattos, Leonardo; Craver, Matt (2005). Monte Carlo sensor networks. UUCS-05-001.
Series University of Utah Computer Science Technical Report
Relation is Part of ARPANET
Rights Management ©University of Utah
Format Medium application/pdf
Format Extent 174,654 bytes
Source University of Utah School of Computing
ARK ark:/87278/s6kh15w2
Setname ir_uspace
ID 706346
Reference URL https://collections.lib.utah.edu/ark:/87278/s6kh15w2
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