Document of bibliographic reference 354666

BibliographicReference record

Type
Bibliographic resource
Type of document
Journal article
BibLvlCode
AS
Title
Three-dimensional quantification of copepods predictive distributions in the Ross Sea: first data based on a machine learning model approach and open access (FAIR) Data
Abstract
Zooplankton is a fundamental group in aquatic ecosystems representing the base of the food chain. It forms a link between the lower trophic levels with secondary consumers and shows marked fluctuations in populations with environmental change, especially reacting to heating and water acidification. Marine copepods account for approx. 70% of the abundance of zooplankton and are a target of monitoring activities in key areas such as the Southern Ocean. In this study, we have used FAIR-inspired legacy data (dating back to the 1980s) collected in the Ross Sea by the Italian National Antarctic Program at GBIF.org. Together with other open-access GIS data sources and tools, it allows one to generate, for the first time, three-dimensional predictive distribution maps for twenty-six copepod species. These predictive maps were obtained by applying machine learning techniques to grey literature data, which were visualized in open-source GIS platforms. In a Species Distribution Modeling (SDM) framework, we used machine learning with three types of algorithms (TreeNet, RandomForest, and Ensemble) to analyze the presence and absence of copepods in different areas and depth classes as a function of environmental descriptors obtained from the Polar Macroscope Layers present in Quantartica. The models allow, for the first time, to map-predict the food chain per depth class in quantitative terms, showing the relative index of occurrence (RIO) in 3Dimensions and identifying the presence of each copepod species analyzed in the Ross Sea, a globally-relevant wilderness area of conservation concern. Our results show marked geographical preferences that vary with species and trophic strategy. This study demonstrates that machine learning is a successful method in accurately predicting the Antarctic copepod presence, also providing useful data to orient future sampling and the management of wildlife and conservation.
WebOfScience code
https://www.webofscience.com/wos/woscc/full-record/WOS:000803632200001
Bibliographic citation
Grillo, M.; Huettmann, F.; Guglielmo, L.; Schiaparelli, S. (2022). Three-dimensional quantification of copepods predictive distributions in the Ross Sea: first data based on a machine learning model approach and open access (FAIR) Data. Diversity 14(5): 355. https://dx.doi.org/10.3390/d14050355
Topic
Marine
Is peer reviewed
true
Access rights
open access
Is accessible for free
true

Authors

author
Name
Marco Grillo
author
Name
Falk Huettmann
author
Name
Letterio Guglielmo
author
Name
Stefano Schiaparelli

Links

referenced creativework
type
DOI
accessURL
https://dx.doi.org/10.3390/d14050355

taxonomic terms

taxonomic terms associated with this publication
Copepoda [copepods]

Document metadata

date created
2022-08-08
date modified
2022-08-08