DocumentCode :
1623526
Title :
Uncertainty estimation of historical bathymetric data from Bayesian networks
Author :
Elmore, Paul A. ; Fabre, David H. ; Sawyer, Raymond T. ; Ladner, R. Wade
Author_Institution :
Mapping Charting & Geodesy Branch, Naval Res. Lab., Stennis Space Center, MS, USA
fYear :
2009
Firstpage :
1
Lastpage :
8
Abstract :
We have developed a Bayesian network to aid estimation of uncertainty for gridded bathymetry data sets in the Digital Bathymetrie Data Base - Variable Resolution, maintained at the Naval Oceanographie Office. These estimates did not previously exist and are now needed so that these data can be stored in the Bathymetrie Attributed Grid files, which require both bathymetry and uncertainty. Monte Carlo simulations have been used in the literature to calculate how navigation error, sensor error, and bottom gradient propagates into bathymetrie uncertainty. This procedure, however, requires the use of original soundings data. Attempting this approach for all soundings used to make the data base is not pragmatic due to the vast quantity of data used. Bayesian networks can be a pragmatic alternative, however, as this approach propagates probability densities of the inputs to calculate probabilities of the end result, resulting in computations that are simpler and more rapid than direct simulations. Valid application of the technique relies on the assumption that measurement errors and bottom slope propagate into bathymetrie uncertainty independent of actual measurement location. We discuss how we used the published Monte Carlo techniques on representative sets of soundings data to train the network and implemented the network to estimate the propagation of navigation error and bottom slope to bathymetrie uncertainty in historic data. We also test the validity of applying this approach to estimate bathymetrie uncertainty through comparisons of these estimates from the Bayesian net and Monte Carlo techniques.
Keywords :
Monte Carlo methods; bathymetry; belief networks; geophysics computing; oceanographic techniques; Bathymetric Attributed Grid files; Bayesian networks; Digital Bathymetric Data Base-Variable Resolution; Monte Carlo simulations; Naval Oceanographic Office; bathymetric uncertainty; bottom gradient; bottom slope; gridded bathymetry data; historical bathymetric data; measurement errors; navigation error; sensor error; soundings data; uncertainty estimation; Acoustic propagation; Acoustic sensors; Bayesian methods; Computer networks; Monte Carlo methods; Navigation; Oceanographic techniques; Probability; Sensor phenomena and characterization; Uncertainty; Bathymetry; Bayesian Networks; Uncertainty Estimation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
OCEANS 2009, MTS/IEEE Biloxi - Marine Technology for Our Future: Global and Local Challenges
Conference_Location :
Biloxi, MS
Print_ISBN :
978-1-4244-4960-6
Electronic_ISBN :
978-0-933957-38-1
Type :
conf
Filename :
5422417
Link To Document :
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