Accounting for location error in Kalman filters: integrating animal borne sensor data into assimilation schemes.
Data assimilation is a crucial aspect of modern oceanography. It allows the future forecasting and backward smoothing of ocean state from the noisy observations. Statistical methods are employed to perform these tasks and are often based on or related to the Kalman filter. Typically Kalman filters a...
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doaj-ee1349b9611b4e6bb3de139294f525652020-11-24T22:08:40ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-0178e4209310.1371/journal.pone.0042093Accounting for location error in Kalman filters: integrating animal borne sensor data into assimilation schemes.Aritra SenguptaScott D FosterToby A PattersonMark BravingtonData assimilation is a crucial aspect of modern oceanography. It allows the future forecasting and backward smoothing of ocean state from the noisy observations. Statistical methods are employed to perform these tasks and are often based on or related to the Kalman filter. Typically Kalman filters assumes that the locations associated with observations are known with certainty. This is reasonable for typical oceanographic measurement methods. Recently, however an alternative and abundant source of data comes from the deployment of ocean sensors on marine animals. This source of data has some attractive properties: unlike traditional oceanographic collection platforms, it is relatively cheap to collect, plentiful, has multiple scientific uses and users, and samples areas of the ocean that are often difficult of costly to sample. However, inherent uncertainty in the location of the observations is a barrier to full utilisation of animal-borne sensor data in data-assimilation schemes. In this article we examine this issue and suggest a simple approximation to explicitly incorporate the location uncertainty, while staying in the scope of Kalman-filter-like methods. The approximation stems from a Taylor-series approximation to elements of the updating equation.http://europepmc.org/articles/PMC3416853?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Aritra Sengupta Scott D Foster Toby A Patterson Mark Bravington |
spellingShingle |
Aritra Sengupta Scott D Foster Toby A Patterson Mark Bravington Accounting for location error in Kalman filters: integrating animal borne sensor data into assimilation schemes. PLoS ONE |
author_facet |
Aritra Sengupta Scott D Foster Toby A Patterson Mark Bravington |
author_sort |
Aritra Sengupta |
title |
Accounting for location error in Kalman filters: integrating animal borne sensor data into assimilation schemes. |
title_short |
Accounting for location error in Kalman filters: integrating animal borne sensor data into assimilation schemes. |
title_full |
Accounting for location error in Kalman filters: integrating animal borne sensor data into assimilation schemes. |
title_fullStr |
Accounting for location error in Kalman filters: integrating animal borne sensor data into assimilation schemes. |
title_full_unstemmed |
Accounting for location error in Kalman filters: integrating animal borne sensor data into assimilation schemes. |
title_sort |
accounting for location error in kalman filters: integrating animal borne sensor data into assimilation schemes. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2012-01-01 |
description |
Data assimilation is a crucial aspect of modern oceanography. It allows the future forecasting and backward smoothing of ocean state from the noisy observations. Statistical methods are employed to perform these tasks and are often based on or related to the Kalman filter. Typically Kalman filters assumes that the locations associated with observations are known with certainty. This is reasonable for typical oceanographic measurement methods. Recently, however an alternative and abundant source of data comes from the deployment of ocean sensors on marine animals. This source of data has some attractive properties: unlike traditional oceanographic collection platforms, it is relatively cheap to collect, plentiful, has multiple scientific uses and users, and samples areas of the ocean that are often difficult of costly to sample. However, inherent uncertainty in the location of the observations is a barrier to full utilisation of animal-borne sensor data in data-assimilation schemes. In this article we examine this issue and suggest a simple approximation to explicitly incorporate the location uncertainty, while staying in the scope of Kalman-filter-like methods. The approximation stems from a Taylor-series approximation to elements of the updating equation. |
url |
http://europepmc.org/articles/PMC3416853?pdf=render |
work_keys_str_mv |
AT aritrasengupta accountingforlocationerrorinkalmanfiltersintegratinganimalbornesensordataintoassimilationschemes AT scottdfoster accountingforlocationerrorinkalmanfiltersintegratinganimalbornesensordataintoassimilationschemes AT tobyapatterson accountingforlocationerrorinkalmanfiltersintegratinganimalbornesensordataintoassimilationschemes AT markbravington accountingforlocationerrorinkalmanfiltersintegratinganimalbornesensordataintoassimilationschemes |
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