Freshwater Processes in the Upper Ocean

Freshwater exchanges between the ocean--ice--atmosphere system play a crucial role in the global climate system. This study provides an analysis of the local impact of freshwater fluxes both off the coast of California and in the Arctic. Studies are carried out using observations and numerical and s...

Full description

Bibliographic Details
Main Author: Hoffman, Lauren
Other Authors: Mazloff, Matthew
Format: Thesis
Language:English
Published: eScholarship, University of California 2023
Subjects:
Online Access:https://escholarship.org/uc/item/4gw8g7n6
id ftcdlib:oai:escholarship.org:ark:/13030/qt4gw8g7n6
record_format openpolar
spelling ftcdlib:oai:escholarship.org:ark:/13030/qt4gw8g7n6 2024-02-04T09:57:51+01:00 Freshwater Processes in the Upper Ocean Hoffman, Lauren Mazloff, Matthew 2023-01-01 application/pdf https://escholarship.org/uc/item/4gw8g7n6 en eng eScholarship, University of California qt4gw8g7n6 https://escholarship.org/uc/item/4gw8g7n6 public Physical oceanography Arctic atmospheric river machine learning salinity sea-ice etd 2023 ftcdlib 2024-01-08T19:06:10Z Freshwater exchanges between the ocean--ice--atmosphere system play a crucial role in the global climate system. This study provides an analysis of the local impact of freshwater fluxes both off the coast of California and in the Arctic. Studies are carried out using observations and numerical and statistical models. We show that freshwater exchanges between the ocean and atmosphere in the form of precipitation from atmospheric rivers (ARs) over the ocean in the California Current System (CCS) have impacts on the surface ocean salinity on event and seasonal timescales. In the upper ocean, precipitation from ARs can produce long-lasting layers of freshwater, the extent of which are dependent on atmospheric forcing from precipitation and wind. We conclude that upper ocean salinity changes due to ARs are within the limits of detectability of ocean instruments. We also examine the extent to which wind acts as a driving force for ice motion in the Arctic. To accomplish this, we build a sequence of machine learning (ML) models that make one-day predictions of present-day zonal and meridional sea-ice velocity components from inputs of present-day wind velocity, previous-day sea-ice velocity, and previous-day sea-ice concentration. We analyze the performance of these models, and implement explainable machine learning (XML) methods to understand how they are making their predictions. One of these methods, layerwise relevance propagation (LRP), was developed for ML models that make classification rather than regression predictions. This study is the first known implementation of a global LRP for a regression problem in geosciences. We therefore provide a comparative study of several different XML methods to bolster trustworthiness in the use of LRP for this particular application. A convolutional neural network (CNN) has improved performance compared conventional persistence (PS) and linear regression (LR) models. Outputs from local LRP studies are shown to be consistent with other XML methods. However global ... Thesis Arctic Sea ice University of California: eScholarship Arctic
institution Open Polar
collection University of California: eScholarship
op_collection_id ftcdlib
language English
topic Physical oceanography
Arctic
atmospheric river
machine learning
salinity
sea-ice
spellingShingle Physical oceanography
Arctic
atmospheric river
machine learning
salinity
sea-ice
Hoffman, Lauren
Freshwater Processes in the Upper Ocean
topic_facet Physical oceanography
Arctic
atmospheric river
machine learning
salinity
sea-ice
description Freshwater exchanges between the ocean--ice--atmosphere system play a crucial role in the global climate system. This study provides an analysis of the local impact of freshwater fluxes both off the coast of California and in the Arctic. Studies are carried out using observations and numerical and statistical models. We show that freshwater exchanges between the ocean and atmosphere in the form of precipitation from atmospheric rivers (ARs) over the ocean in the California Current System (CCS) have impacts on the surface ocean salinity on event and seasonal timescales. In the upper ocean, precipitation from ARs can produce long-lasting layers of freshwater, the extent of which are dependent on atmospheric forcing from precipitation and wind. We conclude that upper ocean salinity changes due to ARs are within the limits of detectability of ocean instruments. We also examine the extent to which wind acts as a driving force for ice motion in the Arctic. To accomplish this, we build a sequence of machine learning (ML) models that make one-day predictions of present-day zonal and meridional sea-ice velocity components from inputs of present-day wind velocity, previous-day sea-ice velocity, and previous-day sea-ice concentration. We analyze the performance of these models, and implement explainable machine learning (XML) methods to understand how they are making their predictions. One of these methods, layerwise relevance propagation (LRP), was developed for ML models that make classification rather than regression predictions. This study is the first known implementation of a global LRP for a regression problem in geosciences. We therefore provide a comparative study of several different XML methods to bolster trustworthiness in the use of LRP for this particular application. A convolutional neural network (CNN) has improved performance compared conventional persistence (PS) and linear regression (LR) models. Outputs from local LRP studies are shown to be consistent with other XML methods. However global ...
author2 Mazloff, Matthew
format Thesis
author Hoffman, Lauren
author_facet Hoffman, Lauren
author_sort Hoffman, Lauren
title Freshwater Processes in the Upper Ocean
title_short Freshwater Processes in the Upper Ocean
title_full Freshwater Processes in the Upper Ocean
title_fullStr Freshwater Processes in the Upper Ocean
title_full_unstemmed Freshwater Processes in the Upper Ocean
title_sort freshwater processes in the upper ocean
publisher eScholarship, University of California
publishDate 2023
url https://escholarship.org/uc/item/4gw8g7n6
geographic Arctic
geographic_facet Arctic
genre Arctic
Sea ice
genre_facet Arctic
Sea ice
op_relation qt4gw8g7n6
https://escholarship.org/uc/item/4gw8g7n6
op_rights public
_version_ 1789962186113679360