Movements of olive ridley sea turtles Lepidochelys olivacea and associated oceanographic features as determined by improved light-based geolocation
We demonstrate the use of pop-off satellite archival tags (PSAT)-derived geolocations to determine the most probable tracks (MPTs) of olive ridley sea turtles Lepidochelys olivacea off Costa Rica. We use a Kalman filter state-space model (KFSST) that uses light-based longitude and latitude and sea s...
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Published in | Endangered species research Vol. 10; pp. 245 - 254 |
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Main Authors | , , , , |
Format | Journal Article |
Language | English |
Published |
2010
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Subjects | |
Online Access | Get full text |
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Summary: | We demonstrate the use of pop-off satellite archival tags (PSAT)-derived geolocations to determine the most probable tracks (MPTs) of olive ridley sea turtles Lepidochelys olivacea off Costa Rica. We use a Kalman filter state-space model (KFSST) that uses light-based longitude and latitude and sea surface temperatures (SST). PSATs placed on 14 turtles remained fixed for an average 53 d (range: 29 to 111 d). The average reduction in longitude and latitude standard deviations was phi sub(lon) = 0.62 and phi sub(lat) = 0.28 between the raw and KFSST-derived MPTs, respectively. Geolocations were linked in time to oceanographic features such as SST and chlorophyll a, as reported by satellite-based sensors. Turtles went in all directions from their respective release points, independent of year and capture type (longline-caught vs. hand-caught). Turtles remained within a SST range between 23.3 and 30.5 degree C (mean = 27.1 degree C), with over 75% of all recorded temperatures between 25.0 and 28.0 degree C. Turtle locations were associated with mean chlorophyll a = 0.37 mg m super(-3). MPT data suggest that turtles spent a disproportionate amount of time in the general region of the Costa Rica Dome, a nutrient-rich quasi-permanent cyclonic eddy. Taken together, these findings support the increased utility of filtered light-based geolocation data in identifying environmental features characteristic of sea turtles' preferred habitat, information which can be useful in managing regional fisheries. |
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Bibliography: | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 23 |
ISSN: | 1863-5407 1613-4796 |
DOI: | 10.3354/esr00164 |