Assessing the effectiveness of the Neuse nitrogen TMDL program and its impacts on estuarine chlorophyll dynamics

<p>Coastal eutrophication is a complex process that is caused largely by anthropogenic nutrient enrichment. Estuaries are particularly susceptible to nutrient impairment, owing to their intimate connection with the contributing watersheds. Estuaries experiencing accelerating eutrophication are...

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Main Author: Alameddine, Ibrahim
Other Authors: Reckhow, Kenneth H
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/10161/5689
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spelling ndltd-DUKE-oai-dukespace.lib.duke.edu-10161-56892013-05-25T03:05:55ZAssessing the effectiveness of the Neuse nitrogen TMDL program and its impacts on estuarine chlorophyll dynamicsAlameddine, IbrahimEnvironmental SciencesWater Resource ManagementEnvironmental StudiesBayesian modelingEstuaryEutrophicationNeuseTMDLWater Quality<p>Coastal eutrophication is a complex process that is caused largely by anthropogenic nutrient enrichment. Estuaries are particularly susceptible to nutrient impairment, owing to their intimate connection with the contributing watersheds. Estuaries experiencing accelerating eutrophication are subject to a loss of key ecological functions and services. This doctoral dissertation presents the development and implementation of an integrated approach toward assessing the water quality in the Neuse Estuary following the implementation of the total maximum daily load (TMDL) program in the Neuse River basin. In order to accomplish this task, I have developed a series of water quality models and modeling strategies that can be effectively used in assessing nutrient based eutrophication. Two watershed-level nutrient loading models that operate on a different temporal scale are developed and used to quantify nitrogen loading to the Neuse Estuary over time. The models are used to probabilistically assess the success of the adopted mitigation measures in achieving the 30 % load reduction goal stipulated by the TMDL. Additionally, a novel structure learning approach is adopted to develop a Bayesian Network (BN) model that describes chlorophyll dynamics in the Upper Neuse Estuary. The developed BN model is compared to pre-TMDL models to assess any changes in the role that nutrient loading and physical forcings play in modulating chlorophyll levels in that section of the estuary. Finally, a set of empirical models are developed to assess the water quality monitoring program in the estuary, while also exploring the possibility of incorporating remotely sensed satellite data in an effort to augment the existing in-situ monitoring programs.</p>DissertationReckhow, Kenneth H2011Dissertationhttp://hdl.handle.net/10161/5689
collection NDLTD
sources NDLTD
topic Environmental Sciences
Water Resource Management
Environmental Studies
Bayesian modeling
Estuary
Eutrophication
Neuse
TMDL
Water Quality
spellingShingle Environmental Sciences
Water Resource Management
Environmental Studies
Bayesian modeling
Estuary
Eutrophication
Neuse
TMDL
Water Quality
Alameddine, Ibrahim
Assessing the effectiveness of the Neuse nitrogen TMDL program and its impacts on estuarine chlorophyll dynamics
description <p>Coastal eutrophication is a complex process that is caused largely by anthropogenic nutrient enrichment. Estuaries are particularly susceptible to nutrient impairment, owing to their intimate connection with the contributing watersheds. Estuaries experiencing accelerating eutrophication are subject to a loss of key ecological functions and services. This doctoral dissertation presents the development and implementation of an integrated approach toward assessing the water quality in the Neuse Estuary following the implementation of the total maximum daily load (TMDL) program in the Neuse River basin. In order to accomplish this task, I have developed a series of water quality models and modeling strategies that can be effectively used in assessing nutrient based eutrophication. Two watershed-level nutrient loading models that operate on a different temporal scale are developed and used to quantify nitrogen loading to the Neuse Estuary over time. The models are used to probabilistically assess the success of the adopted mitigation measures in achieving the 30 % load reduction goal stipulated by the TMDL. Additionally, a novel structure learning approach is adopted to develop a Bayesian Network (BN) model that describes chlorophyll dynamics in the Upper Neuse Estuary. The developed BN model is compared to pre-TMDL models to assess any changes in the role that nutrient loading and physical forcings play in modulating chlorophyll levels in that section of the estuary. Finally, a set of empirical models are developed to assess the water quality monitoring program in the estuary, while also exploring the possibility of incorporating remotely sensed satellite data in an effort to augment the existing in-situ monitoring programs.</p> === Dissertation
author2 Reckhow, Kenneth H
author_facet Reckhow, Kenneth H
Alameddine, Ibrahim
author Alameddine, Ibrahim
author_sort Alameddine, Ibrahim
title Assessing the effectiveness of the Neuse nitrogen TMDL program and its impacts on estuarine chlorophyll dynamics
title_short Assessing the effectiveness of the Neuse nitrogen TMDL program and its impacts on estuarine chlorophyll dynamics
title_full Assessing the effectiveness of the Neuse nitrogen TMDL program and its impacts on estuarine chlorophyll dynamics
title_fullStr Assessing the effectiveness of the Neuse nitrogen TMDL program and its impacts on estuarine chlorophyll dynamics
title_full_unstemmed Assessing the effectiveness of the Neuse nitrogen TMDL program and its impacts on estuarine chlorophyll dynamics
title_sort assessing the effectiveness of the neuse nitrogen tmdl program and its impacts on estuarine chlorophyll dynamics
publishDate 2011
url http://hdl.handle.net/10161/5689
work_keys_str_mv AT alameddineibrahim assessingtheeffectivenessoftheneusenitrogentmdlprogramanditsimpactsonestuarinechlorophylldynamics
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