Accounting for Uncertainties in Biodiversity Estimations: A New Methodology and Its Application to the Mesopelagic Sound Scattering Layer of the High Arctic
Permanent lenke
https://hdl.handle.net/10037/27419Dato
2022-04-27Type
Journal articleTidsskriftartikkel
Peer reviewed
Forfatter
Herrmann, Bent; Cerbule, Kristine; Brčić, Jure; Grimaldo Vela, Eduardo Enrique; Geoffroy, Maxime; Daase, Malin; Berge, JørgenSammendrag
Measures of biological diversity (biodiversity) are important for monitoring the state
of ecosystems. Several indices and methods are used to describe biodiversity from
field observations. Marine faunal biodiversity is often quantified based on analysis
of samples collected using a trawl during research surveys. To monitor spatial and
temporal changes in biodiversity between surveys, samples are generally collected
from a series of stations. Inference regarding changes in biodiversity must account for
uncertainties in the estimation of the values for the different biodiversity indices used.
Estimation for a single station is affected by spatial-temporal variation in the species
composition in the area and by uncertainty due to the finite sample size taken by the
trawl. Therefore, variation between stations needs to be accounted for when estimating
uncertainty for values of different indices during a survey as total or as mean for the
survey. Herein, we present a method based on nested bootstrapping that accounts for
uncertainties in the estimation of various indices and which can be used to infer changes
in biodiversity. Application of this methodology is demonstrated using data collected in
the mesopelagic sound scattering layer in the high Arctic.
Forlag
Frontiers MediaSitering
Herrmann, Cerbule, Brčić, Grimaldo Vela, Geoffroy, Daase, Berge. Accounting for Uncertainties in Biodiversity Estimations: A New Methodology and Its Application to the Mesopelagic Sound Scattering Layer of the High Arctic. Frontiers in Ecology and Evolution. 2022;10Metadata
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