A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey

A probabilistic Bayesian Maximum Entropy (MaxEnt) technique was used to estimate the abundance of Antarctic krill (Euphausia superba) across the Scotia Sea using data from the CCAMLR 2000 Krill Synoptic Survey of Area 48 (CCAMLR-2000 Survey) and to map the density distribution of krill across the su...

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Main Authors: Brierley, Andrew Stuart, Heywood, BG, Gull, SF
Format: Article in Journal/Newspaper
Language:English
Published: 2006
Subjects:
Online Access:https://risweb.st-andrews.ac.uk/portal/en/researchoutput/a-quantified-bayesian-maximum-entropy-estimate-of-antarctic-krill-abundance-across-the-scotia-sea-and-in-smallscale-management-units-from-the-2000-ccamlr-survey(58f822d7-c760-4aae-8619-d76211d28350).html
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id ftunstandrewcris:oai:risweb.st-andrews.ac.uk:publications/58f822d7-c760-4aae-8619-d76211d28350
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spelling ftunstandrewcris:oai:risweb.st-andrews.ac.uk:publications/58f822d7-c760-4aae-8619-d76211d28350 2023-05-15T13:47:48+02:00 A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey Brierley, Andrew Stuart Heywood, BG Gull, SF 2006 https://risweb.st-andrews.ac.uk/portal/en/researchoutput/a-quantified-bayesian-maximum-entropy-estimate-of-antarctic-krill-abundance-across-the-scotia-sea-and-in-smallscale-management-units-from-the-2000-ccamlr-survey(58f822d7-c760-4aae-8619-d76211d28350).html http://www.scopus.com/inward/record.url?scp=33845268595&partnerID=8YFLogxK eng eng info:eu-repo/semantics/restrictedAccess Brierley , A S , Heywood , BG & Gull , SF 2006 , ' A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey ' , CCAMLR Science , vol. 13 , pp. 97-116 . Maximum Entropy Euphausia superba acoustic Bayes SSMU CCAMLR MINIMUM CROSS-ENTROPY ACOUSTIC-SURVEY DATA AXIOMATIC DERIVATION SOUTHERN-OCEAN RECONSTRUCTION VARIABILITY INFERENCE PRINCIPLE BIOMASS DENSITY article 2006 ftunstandrewcris 2021-12-26T14:14:20Z A probabilistic Bayesian Maximum Entropy (MaxEnt) technique was used to estimate the abundance of Antarctic krill (Euphausia superba) across the Scotia Sea using data from the CCAMLR 2000 Krill Synoptic Survey of Area 48 (CCAMLR-2000 Survey) and to map the density distribution of krill across the survey area. Density values for the unsurveyed off-transect portions of the survey area were inferred, and thus values for total biomass across the survey area, and within individual small-scale management units (SSMUs), were estimated. Abundance in some of the individual SSMUs had not previously been estimated due to the sparseness of data in these regions. The MaxEnt formalism allows an objective choice of the parameters of the estimation method, and hence an objective choice of the most probable reconstruction of krill distribution, given the data. The Bayesian framework also allows intrinsic calculation of the error in the density estimates. The total biomass inferred for the survey area was 208 million tonnes, with a standard deviation of 10 million tonnes. The MaxEnt method provides new insights into the extremely sparse survey data (only 0.6% of the survey area was directly acoustically sampled), and enhances the conservation and management potential of the CCAMLR-2000 Survey. Article in Journal/Newspaper Antarc* Antarctic Antarctic Krill Euphausia superba Scotia Sea Southern Ocean University of St Andrews: Research Portal Antarctic Scotia Sea Southern Ocean
institution Open Polar
collection University of St Andrews: Research Portal
op_collection_id ftunstandrewcris
language English
topic Maximum Entropy
Euphausia superba
acoustic
Bayes
SSMU
CCAMLR
MINIMUM CROSS-ENTROPY
ACOUSTIC-SURVEY DATA
AXIOMATIC DERIVATION
SOUTHERN-OCEAN
RECONSTRUCTION
VARIABILITY
INFERENCE
PRINCIPLE
BIOMASS
DENSITY
spellingShingle Maximum Entropy
Euphausia superba
acoustic
Bayes
SSMU
CCAMLR
MINIMUM CROSS-ENTROPY
ACOUSTIC-SURVEY DATA
AXIOMATIC DERIVATION
SOUTHERN-OCEAN
RECONSTRUCTION
VARIABILITY
INFERENCE
PRINCIPLE
BIOMASS
DENSITY
Brierley, Andrew Stuart
Heywood, BG
Gull, SF
A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey
topic_facet Maximum Entropy
Euphausia superba
acoustic
Bayes
SSMU
CCAMLR
MINIMUM CROSS-ENTROPY
ACOUSTIC-SURVEY DATA
AXIOMATIC DERIVATION
SOUTHERN-OCEAN
RECONSTRUCTION
VARIABILITY
INFERENCE
PRINCIPLE
BIOMASS
DENSITY
description A probabilistic Bayesian Maximum Entropy (MaxEnt) technique was used to estimate the abundance of Antarctic krill (Euphausia superba) across the Scotia Sea using data from the CCAMLR 2000 Krill Synoptic Survey of Area 48 (CCAMLR-2000 Survey) and to map the density distribution of krill across the survey area. Density values for the unsurveyed off-transect portions of the survey area were inferred, and thus values for total biomass across the survey area, and within individual small-scale management units (SSMUs), were estimated. Abundance in some of the individual SSMUs had not previously been estimated due to the sparseness of data in these regions. The MaxEnt formalism allows an objective choice of the parameters of the estimation method, and hence an objective choice of the most probable reconstruction of krill distribution, given the data. The Bayesian framework also allows intrinsic calculation of the error in the density estimates. The total biomass inferred for the survey area was 208 million tonnes, with a standard deviation of 10 million tonnes. The MaxEnt method provides new insights into the extremely sparse survey data (only 0.6% of the survey area was directly acoustically sampled), and enhances the conservation and management potential of the CCAMLR-2000 Survey.
format Article in Journal/Newspaper
author Brierley, Andrew Stuart
Heywood, BG
Gull, SF
author_facet Brierley, Andrew Stuart
Heywood, BG
Gull, SF
author_sort Brierley, Andrew Stuart
title A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey
title_short A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey
title_full A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey
title_fullStr A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey
title_full_unstemmed A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey
title_sort quantified bayesian maximum entropy estimate of antarctic krill abundance across the scotia sea and in small-scale management units from the 2000 ccamlr survey
publishDate 2006
url https://risweb.st-andrews.ac.uk/portal/en/researchoutput/a-quantified-bayesian-maximum-entropy-estimate-of-antarctic-krill-abundance-across-the-scotia-sea-and-in-smallscale-management-units-from-the-2000-ccamlr-survey(58f822d7-c760-4aae-8619-d76211d28350).html
http://www.scopus.com/inward/record.url?scp=33845268595&partnerID=8YFLogxK
geographic Antarctic
Scotia Sea
Southern Ocean
geographic_facet Antarctic
Scotia Sea
Southern Ocean
genre Antarc*
Antarctic
Antarctic Krill
Euphausia superba
Scotia Sea
Southern Ocean
genre_facet Antarc*
Antarctic
Antarctic Krill
Euphausia superba
Scotia Sea
Southern Ocean
op_source Brierley , A S , Heywood , BG & Gull , SF 2006 , ' A quantified Bayesian Maximum Entropy estimate of Antarctic krill abundance across the Scotia Sea and in Small-Scale Management Units from the 2000 CCAMLR Survey ' , CCAMLR Science , vol. 13 , pp. 97-116 .
op_rights info:eu-repo/semantics/restrictedAccess
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