Assessing performance of Bayesian state-space models fit to Argos satellite telemetry locations processed with Kalman filtering.

Argos recently implemented a new algorithm to calculate locations of satellite-tracked animals that uses a Kalman filter (KF). The KF algorithm is reported to increase the number and accuracy of estimated positions over the traditional Least Squares (LS) algorithm, with potential advantages to the a...

Full description

Bibliographic Details
Main Authors: Mónica A Silva, Ian Jonsen, Deborah J F Russell, Rui Prieto, Dave Thompson, Mark F Baumgartner
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3961316?pdf=render
id doaj-e67aa6666b6d4b0eb866695fa07772f0
record_format Article
spelling doaj-e67aa6666b6d4b0eb866695fa07772f02020-11-25T02:11:58ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0193e9227710.1371/journal.pone.0092277Assessing performance of Bayesian state-space models fit to Argos satellite telemetry locations processed with Kalman filtering.Mónica A SilvaIan JonsenDeborah J F RussellRui PrietoDave ThompsonMark F BaumgartnerArgos recently implemented a new algorithm to calculate locations of satellite-tracked animals that uses a Kalman filter (KF). The KF algorithm is reported to increase the number and accuracy of estimated positions over the traditional Least Squares (LS) algorithm, with potential advantages to the application of state-space methods to model animal movement data. We tested the performance of two Bayesian state-space models (SSMs) fitted to satellite tracking data processed with KF algorithm. Tracks from 7 harbour seals (Phoca vitulina) tagged with ARGOS satellite transmitters equipped with Fastloc GPS loggers were used to calculate the error of locations estimated from SSMs fitted to KF and LS data, by comparing those to "true" GPS locations. Data on 6 fin whales (Balaenoptera physalus) were used to investigate consistency in movement parameters, location and behavioural states estimated by switching state-space models (SSSM) fitted to data derived from KF and LS methods. The model fit to KF locations improved the accuracy of seal trips by 27% over the LS model. 82% of locations predicted from the KF model and 73% of locations from the LS model were <5 km from the corresponding interpolated GPS position. Uncertainty in KF model estimates (5.6 ± 5.6 km) was nearly half that of LS estimates (11.6 ± 8.4 km). Accuracy of KF and LS modelled locations was sensitive to precision but not to observation frequency or temporal resolution of raw Argos data. On average, 88% of whale locations estimated by KF models fell within the 95% probability ellipse of paired locations from LS models. Precision of KF locations for whales was generally higher. Whales' behavioural mode inferred by KF models matched the classification from LS models in 94% of the cases. State-space models fit to KF data can improve spatial accuracy of location estimates over LS models and produce equally reliable behavioural estimates.http://europepmc.org/articles/PMC3961316?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Mónica A Silva
Ian Jonsen
Deborah J F Russell
Rui Prieto
Dave Thompson
Mark F Baumgartner
spellingShingle Mónica A Silva
Ian Jonsen
Deborah J F Russell
Rui Prieto
Dave Thompson
Mark F Baumgartner
Assessing performance of Bayesian state-space models fit to Argos satellite telemetry locations processed with Kalman filtering.
PLoS ONE
author_facet Mónica A Silva
Ian Jonsen
Deborah J F Russell
Rui Prieto
Dave Thompson
Mark F Baumgartner
author_sort Mónica A Silva
title Assessing performance of Bayesian state-space models fit to Argos satellite telemetry locations processed with Kalman filtering.
title_short Assessing performance of Bayesian state-space models fit to Argos satellite telemetry locations processed with Kalman filtering.
title_full Assessing performance of Bayesian state-space models fit to Argos satellite telemetry locations processed with Kalman filtering.
title_fullStr Assessing performance of Bayesian state-space models fit to Argos satellite telemetry locations processed with Kalman filtering.
title_full_unstemmed Assessing performance of Bayesian state-space models fit to Argos satellite telemetry locations processed with Kalman filtering.
title_sort assessing performance of bayesian state-space models fit to argos satellite telemetry locations processed with kalman filtering.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Argos recently implemented a new algorithm to calculate locations of satellite-tracked animals that uses a Kalman filter (KF). The KF algorithm is reported to increase the number and accuracy of estimated positions over the traditional Least Squares (LS) algorithm, with potential advantages to the application of state-space methods to model animal movement data. We tested the performance of two Bayesian state-space models (SSMs) fitted to satellite tracking data processed with KF algorithm. Tracks from 7 harbour seals (Phoca vitulina) tagged with ARGOS satellite transmitters equipped with Fastloc GPS loggers were used to calculate the error of locations estimated from SSMs fitted to KF and LS data, by comparing those to "true" GPS locations. Data on 6 fin whales (Balaenoptera physalus) were used to investigate consistency in movement parameters, location and behavioural states estimated by switching state-space models (SSSM) fitted to data derived from KF and LS methods. The model fit to KF locations improved the accuracy of seal trips by 27% over the LS model. 82% of locations predicted from the KF model and 73% of locations from the LS model were <5 km from the corresponding interpolated GPS position. Uncertainty in KF model estimates (5.6 ± 5.6 km) was nearly half that of LS estimates (11.6 ± 8.4 km). Accuracy of KF and LS modelled locations was sensitive to precision but not to observation frequency or temporal resolution of raw Argos data. On average, 88% of whale locations estimated by KF models fell within the 95% probability ellipse of paired locations from LS models. Precision of KF locations for whales was generally higher. Whales' behavioural mode inferred by KF models matched the classification from LS models in 94% of the cases. State-space models fit to KF data can improve spatial accuracy of location estimates over LS models and produce equally reliable behavioural estimates.
url http://europepmc.org/articles/PMC3961316?pdf=render
work_keys_str_mv AT monicaasilva assessingperformanceofbayesianstatespacemodelsfittoargossatellitetelemetrylocationsprocessedwithkalmanfiltering
AT ianjonsen assessingperformanceofbayesianstatespacemodelsfittoargossatellitetelemetrylocationsprocessedwithkalmanfiltering
AT deborahjfrussell assessingperformanceofbayesianstatespacemodelsfittoargossatellitetelemetrylocationsprocessedwithkalmanfiltering
AT ruiprieto assessingperformanceofbayesianstatespacemodelsfittoargossatellitetelemetrylocationsprocessedwithkalmanfiltering
AT davethompson assessingperformanceofbayesianstatespacemodelsfittoargossatellitetelemetrylocationsprocessedwithkalmanfiltering
AT markfbaumgartner assessingperformanceofbayesianstatespacemodelsfittoargossatellitetelemetrylocationsprocessedwithkalmanfiltering
_version_ 1724911496920563712