Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach

The last report of the Intergovernmental Panel on Climate Change (IPCC) with high confidence postulated the changes of the marine ecoregions around the world. These shifts are particularly pronounced in polar regions, as they are expected to accumulate the impacts of climate change. The organisms th...

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Main Author: Pantiukhin, Dmitrii
Format: Thesis
Language:unknown
Published: M.Sc. Program for Polar and Marine Science POMOR 2019
Subjects:
Online Access:https://epic.awi.de/id/eprint/50558/
https://hdl.handle.net/10013/epic.459fdb72-e7b3-47c3-9f38-44efe7bfda76
id ftawi:oai:epic.awi.de:50558
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spelling ftawi:oai:epic.awi.de:50558 2024-09-15T17:50:49+00:00 Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach Pantiukhin, Dmitrii 2019 https://epic.awi.de/id/eprint/50558/ https://hdl.handle.net/10013/epic.459fdb72-e7b3-47c3-9f38-44efe7bfda76 unknown M.Sc. Program for Polar and Marine Science POMOR Pantiukhin, D. (2019) Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach , Master thesis, Saint Petersburg State University and Hamburg University. hdl:10013/epic.459fdb72-e7b3-47c3-9f38-44efe7bfda76 EPIC3M.Sc. Program for Polar and Marine Science POMOR Thesis notRev 2019 ftawi 2024-06-24T04:23:24Z The last report of the Intergovernmental Panel on Climate Change (IPCC) with high confidence postulated the changes of the marine ecoregions around the world. These shifts are particularly pronounced in polar regions, as they are expected to accumulate the impacts of climate change. The organisms that are most likely to be affected are benthic communities due to the predicted weakening of pelago-benthic coupling. In order to understand and predict these changes, a continuous classification of marine ecoregions is essential. However, the majority of modern classifications are based on qualitative assumptions of scientists or scientific groups, and, unfortunately, these are not suitable for dynamically developing systems. Moreover, delineating the boundaries of ecoregions remains a statistically challenging task as well. However, new machine learning methods, which are currently being actively applied in many fields of science, could potentially solve the problem of ecoregional classification. Such methods are particularly effective in studying the patterns of complex interactions of biotic and abiotic systems. In this study, multi-species data of macrobenthic species are grouped in relation to environmental variables via the novel unsupervised machine learning method of ‘Regions of common profile modelling with mixtures of experts’ (RCP). A RCP is a probabilistic area in which species share the same probability of occurrence, given certain environmental conditions. This method has many advantages, such as the possibility of predicting regions in a probabilistic form, handling of different datasets, performing forward model selection and prediction of regions under environmental changes. The RCP analysis was performed with an existing extensive dataset of biological data on macrobenthic species encompassing the Eurasian Arctic. All environmental data potentially affecting the distribution of macrobenthic communities were collected and processed in the framework of this study. The results provided fine-scale map of ... Thesis Arctic Climate change Alfred Wegener Institute for Polar- and Marine Research (AWI): ePIC (electronic Publication Information Center)
institution Open Polar
collection Alfred Wegener Institute for Polar- and Marine Research (AWI): ePIC (electronic Publication Information Center)
op_collection_id ftawi
language unknown
description The last report of the Intergovernmental Panel on Climate Change (IPCC) with high confidence postulated the changes of the marine ecoregions around the world. These shifts are particularly pronounced in polar regions, as they are expected to accumulate the impacts of climate change. The organisms that are most likely to be affected are benthic communities due to the predicted weakening of pelago-benthic coupling. In order to understand and predict these changes, a continuous classification of marine ecoregions is essential. However, the majority of modern classifications are based on qualitative assumptions of scientists or scientific groups, and, unfortunately, these are not suitable for dynamically developing systems. Moreover, delineating the boundaries of ecoregions remains a statistically challenging task as well. However, new machine learning methods, which are currently being actively applied in many fields of science, could potentially solve the problem of ecoregional classification. Such methods are particularly effective in studying the patterns of complex interactions of biotic and abiotic systems. In this study, multi-species data of macrobenthic species are grouped in relation to environmental variables via the novel unsupervised machine learning method of ‘Regions of common profile modelling with mixtures of experts’ (RCP). A RCP is a probabilistic area in which species share the same probability of occurrence, given certain environmental conditions. This method has many advantages, such as the possibility of predicting regions in a probabilistic form, handling of different datasets, performing forward model selection and prediction of regions under environmental changes. The RCP analysis was performed with an existing extensive dataset of biological data on macrobenthic species encompassing the Eurasian Arctic. All environmental data potentially affecting the distribution of macrobenthic communities were collected and processed in the framework of this study. The results provided fine-scale map of ...
format Thesis
author Pantiukhin, Dmitrii
spellingShingle Pantiukhin, Dmitrii
Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach
author_facet Pantiukhin, Dmitrii
author_sort Pantiukhin, Dmitrii
title Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach
title_short Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach
title_full Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach
title_fullStr Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach
title_full_unstemmed Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach
title_sort mapping arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’regions of common profile’ (rcp) approach
publisher M.Sc. Program for Polar and Marine Science POMOR
publishDate 2019
url https://epic.awi.de/id/eprint/50558/
https://hdl.handle.net/10013/epic.459fdb72-e7b3-47c3-9f38-44efe7bfda76
genre Arctic
Climate change
genre_facet Arctic
Climate change
op_source EPIC3M.Sc. Program for Polar and Marine Science POMOR
op_relation Pantiukhin, D. (2019) Mapping Arctic benthic community distribution patterns in relation to environmental drivers, using the model-based multi-species ’Regions of Common Profile’ (RCP) approach , Master thesis, Saint Petersburg State University and Hamburg University. hdl:10013/epic.459fdb72-e7b3-47c3-9f38-44efe7bfda76
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