Classifying Low Streamflow Parameters in Coastal Southeast Alaska Using Game Cameras and Random Forest Models

Southeast Alaska is located on the traditional territory of the Lingít, Haida, and Tsimshian People. It is comprised of the largest temperate rainforest in the world, with subregions receiving over 500 cm of rain annually. Climate change is predicted to alter the region's timing, type, and magn...

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Main Author: Lanphier, Kari
Other Authors: Sullivan, Pamela L., Bellmore, James R., Harley, John R.
Format: Master Thesis
Language:English
unknown
Published: Oregon State University
Subjects:
Online Access:https://ir.library.oregonstate.edu/concern/graduate_thesis_or_dissertations/2227mz05n
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spelling ftoregonstate:ir.library.oregonstate.edu:2227mz05n 2024-09-09T19:43:40+00:00 Classifying Low Streamflow Parameters in Coastal Southeast Alaska Using Game Cameras and Random Forest Models Lanphier, Kari Sullivan, Pamela L. Bellmore, James R. Harley, John R. https://ir.library.oregonstate.edu/concern/graduate_thesis_or_dissertations/2227mz05n English [eng] eng unknown Oregon State University https://ir.library.oregonstate.edu/concern/graduate_thesis_or_dissertations/2227mz05n All rights reserved Masters Thesis ftoregonstate 2024-07-22T18:06:05Z Southeast Alaska is located on the traditional territory of the Lingít, Haida, and Tsimshian People. It is comprised of the largest temperate rainforest in the world, with subregions receiving over 500 cm of rain annually. Climate change is predicted to alter the region's timing, type, and magnitude of precipitation and increase temperatures year-round. Potential impacts from these changes include decreased snow accumulation at lower elevations and less precipitation in the summer. These changes could result in an increased frequency of low streamflow occurrence across Southeast Alaska. Low flow conditions could impact fisheries, hydropower generation, and municipal water supply in Southeast Alaska. With much of the region being remote, there are limited streamflow gaging stations, which hampers efforts to monitor changing streamflow conditions. To address this paucity of data, this thesis considers two methods to better understand streamflow response to changing climate conditions in Southeast Alaska. Chapter 2 tests the efficacy of using game cameras to collect streamflow parameters during the summer months, and Chapter 3 leverages currently available data to understand the primary drivers of low flows. Chapter 2 successfully collected streamflow parameters of magnitude, timing, frequency, and duration of low and high streamflow events during the summer of 2022. Stage height data (collected from pressure transducers) and pixel counts (collected from images) found moderate correlation using unsupervised image segmentation (R2 0.52-0.89) and high correlation between supervised image segmentation (R2 0.91 – 0.95). Using game cameras to collect streamflow parameters was more successful on smaller streams and areas with natural sun and rain protection. One major limitation of this method is not collecting images at night, which is generally problematic during winter months. However, this method has additional benefits, such as images capturing qualitative data such as bank inundation and fish timing and presence. ... Master Thesis haida Lingít Tsimshian Tsimshian* Alaska ScholarsArchive@OSU (Oregon State University)
institution Open Polar
collection ScholarsArchive@OSU (Oregon State University)
op_collection_id ftoregonstate
language English
unknown
description Southeast Alaska is located on the traditional territory of the Lingít, Haida, and Tsimshian People. It is comprised of the largest temperate rainforest in the world, with subregions receiving over 500 cm of rain annually. Climate change is predicted to alter the region's timing, type, and magnitude of precipitation and increase temperatures year-round. Potential impacts from these changes include decreased snow accumulation at lower elevations and less precipitation in the summer. These changes could result in an increased frequency of low streamflow occurrence across Southeast Alaska. Low flow conditions could impact fisheries, hydropower generation, and municipal water supply in Southeast Alaska. With much of the region being remote, there are limited streamflow gaging stations, which hampers efforts to monitor changing streamflow conditions. To address this paucity of data, this thesis considers two methods to better understand streamflow response to changing climate conditions in Southeast Alaska. Chapter 2 tests the efficacy of using game cameras to collect streamflow parameters during the summer months, and Chapter 3 leverages currently available data to understand the primary drivers of low flows. Chapter 2 successfully collected streamflow parameters of magnitude, timing, frequency, and duration of low and high streamflow events during the summer of 2022. Stage height data (collected from pressure transducers) and pixel counts (collected from images) found moderate correlation using unsupervised image segmentation (R2 0.52-0.89) and high correlation between supervised image segmentation (R2 0.91 – 0.95). Using game cameras to collect streamflow parameters was more successful on smaller streams and areas with natural sun and rain protection. One major limitation of this method is not collecting images at night, which is generally problematic during winter months. However, this method has additional benefits, such as images capturing qualitative data such as bank inundation and fish timing and presence. ...
author2 Sullivan, Pamela L.
Bellmore, James R.
Harley, John R.
format Master Thesis
author Lanphier, Kari
spellingShingle Lanphier, Kari
Classifying Low Streamflow Parameters in Coastal Southeast Alaska Using Game Cameras and Random Forest Models
author_facet Lanphier, Kari
author_sort Lanphier, Kari
title Classifying Low Streamflow Parameters in Coastal Southeast Alaska Using Game Cameras and Random Forest Models
title_short Classifying Low Streamflow Parameters in Coastal Southeast Alaska Using Game Cameras and Random Forest Models
title_full Classifying Low Streamflow Parameters in Coastal Southeast Alaska Using Game Cameras and Random Forest Models
title_fullStr Classifying Low Streamflow Parameters in Coastal Southeast Alaska Using Game Cameras and Random Forest Models
title_full_unstemmed Classifying Low Streamflow Parameters in Coastal Southeast Alaska Using Game Cameras and Random Forest Models
title_sort classifying low streamflow parameters in coastal southeast alaska using game cameras and random forest models
publisher Oregon State University
url https://ir.library.oregonstate.edu/concern/graduate_thesis_or_dissertations/2227mz05n
genre haida
Lingít
Tsimshian
Tsimshian*
Alaska
genre_facet haida
Lingít
Tsimshian
Tsimshian*
Alaska
op_relation https://ir.library.oregonstate.edu/concern/graduate_thesis_or_dissertations/2227mz05n
op_rights All rights reserved
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