Explaining Changes in Fish Community Biomass Using Pressure Indicators: Comparison of Data Analysis Methods and Regional Results

This thesis focuses on assessing relationships among ecological indicators, including identifying pressures that best explain changes in the fish community of two Northwest Atlantic ecosystems. The Grand Bank experienced complex ecological changes over three decades, including a rapid collapse and p...

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Main Author: Dempsey, Danielle P
Other Authors: Department of Engineering Mathematics & Internetworking, Doctor of Philosophy, Sarah Gaichas, William Phillips, Gordon Fenton, Keith Thompson, Wendy Gentleman, Not Applicable, Yes
Language:English
Published: 2019
Subjects:
Online Access:http://hdl.handle.net/10222/75389
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spelling ftdalhouse:oai:DalSpace.library.dal.ca:10222/75389 2023-05-15T17:45:47+02:00 Explaining Changes in Fish Community Biomass Using Pressure Indicators: Comparison of Data Analysis Methods and Regional Results Dempsey, Danielle P Department of Engineering Mathematics & Internetworking Doctor of Philosophy Sarah Gaichas William Phillips Gordon Fenton Keith Thompson Wendy Gentleman Not Applicable Yes 2019-03-28T17:46:37Z http://hdl.handle.net/10222/75389 en eng http://hdl.handle.net/10222/75389 ecosystem based fisheries management multivariate linear regression neural networks Grand Bank Georges Bank fish community ecosystem indicators 2019 ftdalhouse 2022-03-06T00:10:41Z This thesis focuses on assessing relationships among ecological indicators, including identifying pressures that best explain changes in the fish community of two Northwest Atlantic ecosystems. The Grand Bank experienced complex ecological changes over three decades, including a rapid collapse and partial recovery of fish biomass, and I synthesized fish community, environmental, and human indicators that reflect these changes. I first used this suite to demonstrate that relationships among fish functional groups changed after the collapse, identify a representative subset of pressure indicators, show the response to pressures varies over different time scales, and illustrate that a common conceptual framework can be misleading. Next, I compared multivariate linear regression (MLR) and non-linear neural networks (NN) for modelling the biomasses of six fish functional groups using fishing and environmental pressures, identified the most influential pressures, and assessed the effect of different delay types and lengths. In contrast to MLR, the delays had negligible impact on NN fit, which illustrates the powerful ability of NN to extract patterns from data. However, MLR generally had better fit than simple 1-hidden node NN ensembles. Both approaches showed that top-down and bottom-up pressures are influential, and that the most influential pressures changed after the collapse. A preliminary assessment of NN predictive power showed that future efforts should continue investigating NN forecast ability. Another case study applying these approaches to the Georges Bank fish community supported these main conclusions. Different pressures were influential for each region, highlighting the need for ecosystem-specific indicator sets. My thesis contributes to knowledge of past and present dynamics of these ecosystems and can potentially inform ecosystem based fisheries management approaches. I recommend MLR models over NN for this application because they are easier to construct and interpret, although NN may be able to provide complementary information through forecasts. Finally, I discuss implications of my findings and suggest future work to build on this research. Other/Unknown Material Northwest Atlantic Dalhousie University: DalSpace Institutional Repository
institution Open Polar
collection Dalhousie University: DalSpace Institutional Repository
op_collection_id ftdalhouse
language English
topic ecosystem based fisheries management
multivariate linear regression
neural networks
Grand Bank
Georges Bank
fish community
ecosystem indicators
spellingShingle ecosystem based fisheries management
multivariate linear regression
neural networks
Grand Bank
Georges Bank
fish community
ecosystem indicators
Dempsey, Danielle P
Explaining Changes in Fish Community Biomass Using Pressure Indicators: Comparison of Data Analysis Methods and Regional Results
topic_facet ecosystem based fisheries management
multivariate linear regression
neural networks
Grand Bank
Georges Bank
fish community
ecosystem indicators
description This thesis focuses on assessing relationships among ecological indicators, including identifying pressures that best explain changes in the fish community of two Northwest Atlantic ecosystems. The Grand Bank experienced complex ecological changes over three decades, including a rapid collapse and partial recovery of fish biomass, and I synthesized fish community, environmental, and human indicators that reflect these changes. I first used this suite to demonstrate that relationships among fish functional groups changed after the collapse, identify a representative subset of pressure indicators, show the response to pressures varies over different time scales, and illustrate that a common conceptual framework can be misleading. Next, I compared multivariate linear regression (MLR) and non-linear neural networks (NN) for modelling the biomasses of six fish functional groups using fishing and environmental pressures, identified the most influential pressures, and assessed the effect of different delay types and lengths. In contrast to MLR, the delays had negligible impact on NN fit, which illustrates the powerful ability of NN to extract patterns from data. However, MLR generally had better fit than simple 1-hidden node NN ensembles. Both approaches showed that top-down and bottom-up pressures are influential, and that the most influential pressures changed after the collapse. A preliminary assessment of NN predictive power showed that future efforts should continue investigating NN forecast ability. Another case study applying these approaches to the Georges Bank fish community supported these main conclusions. Different pressures were influential for each region, highlighting the need for ecosystem-specific indicator sets. My thesis contributes to knowledge of past and present dynamics of these ecosystems and can potentially inform ecosystem based fisheries management approaches. I recommend MLR models over NN for this application because they are easier to construct and interpret, although NN may be able to provide complementary information through forecasts. Finally, I discuss implications of my findings and suggest future work to build on this research.
author2 Department of Engineering Mathematics & Internetworking
Doctor of Philosophy
Sarah Gaichas
William Phillips
Gordon Fenton
Keith Thompson
Wendy Gentleman
Not Applicable
Yes
author Dempsey, Danielle P
author_facet Dempsey, Danielle P
author_sort Dempsey, Danielle P
title Explaining Changes in Fish Community Biomass Using Pressure Indicators: Comparison of Data Analysis Methods and Regional Results
title_short Explaining Changes in Fish Community Biomass Using Pressure Indicators: Comparison of Data Analysis Methods and Regional Results
title_full Explaining Changes in Fish Community Biomass Using Pressure Indicators: Comparison of Data Analysis Methods and Regional Results
title_fullStr Explaining Changes in Fish Community Biomass Using Pressure Indicators: Comparison of Data Analysis Methods and Regional Results
title_full_unstemmed Explaining Changes in Fish Community Biomass Using Pressure Indicators: Comparison of Data Analysis Methods and Regional Results
title_sort explaining changes in fish community biomass using pressure indicators: comparison of data analysis methods and regional results
publishDate 2019
url http://hdl.handle.net/10222/75389
genre Northwest Atlantic
genre_facet Northwest Atlantic
op_relation http://hdl.handle.net/10222/75389
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