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Noisy Network Localization via Optimal Measurement Refinement Part 2: Distance-Only Network Localization

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Authors

Shames, Iman
Bishop, Adrian

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International Federation of Automatic Control (IFAC)

Abstract

In this paper we review some results on the problem of noisy localization and review the characteristics of networks labeled as easily localizable networks. We then present a more general result on such networks before moving to the main problem of interest in this paper. That is, proposing computationally efficient algorithms to refine noisy distance measurements in easily localizable networks.

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IFAC World Congress 2011 proceedings

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Restricted until

2037-12-31