Modeling polyp activity of Paragorgia arborea using supervised learning

While the distribution patterns of cold-water corals, such as Paragorgia arborea, have received increasing attention in recent studies, little is known about their in situ activity patterns. In this paper, we examine polyp activity in P. arborea using machine learning techniques to analyze high-reso...

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Published in:Ecological Informatics
Main Authors: Johanson, Arne N., Flögel, Sascha, Dullo, Wolf Christian, Linke, Peter, Hasselbring, Wilhelm
Format: Article in Journal/Newspaper
Language:English
Published: 2017
Subjects:
Online Access:https://eprints.soton.ac.uk/488747/
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spelling ftsouthampton:oai:eprints.soton.ac.uk:488747 2024-05-12T08:09:37+00:00 Modeling polyp activity of Paragorgia arborea using supervised learning Johanson, Arne N. Flögel, Sascha Dullo, Wolf Christian Linke, Peter Hasselbring, Wilhelm 2017-04-29 https://eprints.soton.ac.uk/488747/ English eng Johanson, Arne N., Flögel, Sascha and Dullo, Wolf Christian , et al. (2017) Modeling polyp activity of Paragorgia arborea using supervised learning. Ecological Informatics, 39, 109-118. (doi:10.1016/j.ecoinf.2017.02.007 <http://dx.doi.org/10.1016/j.ecoinf.2017.02.007>). Article PeerReviewed 2017 ftsouthampton https://doi.org/10.1016/j.ecoinf.2017.02.007 2024-04-17T14:08:58Z While the distribution patterns of cold-water corals, such as Paragorgia arborea, have received increasing attention in recent studies, little is known about their in situ activity patterns. In this paper, we examine polyp activity in P. arborea using machine learning techniques to analyze high-resolution time series data and photographs obtained from an autonomous lander cluster deployed in the Stjernsund, Norway. An interactive illustration of the models derived in this paper is provided online as supplementary material. We find that the best predictor of the degree of extension of the coral polyps is current direction with a lag of three hours. Other variables that are not directly associated with water currents, such as temperature and salinity, offer much less information concerning polyp activity. Interestingly, the degree of polyp extension can be predicted more reliably by sampling the laminar flows in the water column above the measurement site than by sampling the more turbulent flows in the direct vicinity of the corals. Our results show that the activity patterns of the P. arborea polyps are governed by the strong tidal current regime of the Stjernsund. It appears that P. arborea does not react to shorter changes in the ambient current regime but instead adjusts its behavior in accordance with the large-scale pattern of the tidal cycle itself in order to optimize nutrient uptake. Article in Journal/Newspaper Paragorgia arborea University of Southampton: e-Prints Soton Norway Ecological Informatics 39 109 118
institution Open Polar
collection University of Southampton: e-Prints Soton
op_collection_id ftsouthampton
language English
description While the distribution patterns of cold-water corals, such as Paragorgia arborea, have received increasing attention in recent studies, little is known about their in situ activity patterns. In this paper, we examine polyp activity in P. arborea using machine learning techniques to analyze high-resolution time series data and photographs obtained from an autonomous lander cluster deployed in the Stjernsund, Norway. An interactive illustration of the models derived in this paper is provided online as supplementary material. We find that the best predictor of the degree of extension of the coral polyps is current direction with a lag of three hours. Other variables that are not directly associated with water currents, such as temperature and salinity, offer much less information concerning polyp activity. Interestingly, the degree of polyp extension can be predicted more reliably by sampling the laminar flows in the water column above the measurement site than by sampling the more turbulent flows in the direct vicinity of the corals. Our results show that the activity patterns of the P. arborea polyps are governed by the strong tidal current regime of the Stjernsund. It appears that P. arborea does not react to shorter changes in the ambient current regime but instead adjusts its behavior in accordance with the large-scale pattern of the tidal cycle itself in order to optimize nutrient uptake.
format Article in Journal/Newspaper
author Johanson, Arne N.
Flögel, Sascha
Dullo, Wolf Christian
Linke, Peter
Hasselbring, Wilhelm
spellingShingle Johanson, Arne N.
Flögel, Sascha
Dullo, Wolf Christian
Linke, Peter
Hasselbring, Wilhelm
Modeling polyp activity of Paragorgia arborea using supervised learning
author_facet Johanson, Arne N.
Flögel, Sascha
Dullo, Wolf Christian
Linke, Peter
Hasselbring, Wilhelm
author_sort Johanson, Arne N.
title Modeling polyp activity of Paragorgia arborea using supervised learning
title_short Modeling polyp activity of Paragorgia arborea using supervised learning
title_full Modeling polyp activity of Paragorgia arborea using supervised learning
title_fullStr Modeling polyp activity of Paragorgia arborea using supervised learning
title_full_unstemmed Modeling polyp activity of Paragorgia arborea using supervised learning
title_sort modeling polyp activity of paragorgia arborea using supervised learning
publishDate 2017
url https://eprints.soton.ac.uk/488747/
geographic Norway
geographic_facet Norway
genre Paragorgia arborea
genre_facet Paragorgia arborea
op_relation Johanson, Arne N., Flögel, Sascha and Dullo, Wolf Christian , et al. (2017) Modeling polyp activity of Paragorgia arborea using supervised learning. Ecological Informatics, 39, 109-118. (doi:10.1016/j.ecoinf.2017.02.007 <http://dx.doi.org/10.1016/j.ecoinf.2017.02.007>).
op_doi https://doi.org/10.1016/j.ecoinf.2017.02.007
container_title Ecological Informatics
container_volume 39
container_start_page 109
op_container_end_page 118
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