Using a Bayesian Network Framework to Predict Permafrost Thaw in the Arctic

Rising global temperatures are a threat to Arctic ecosystems. Thawing permafrost is expected to expose previously frozen carbon to microbial decomposition, an action that will promote further warming and have consequences for both the natural environment and human communities. However, there is a cr...

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Bibliographic Details
Main Author: Beall, Katherine Elizabeth
Other Authors: Loisel, Julie, Medina-Cetina, Zenon, Cairns, David, Frauenfeld, Oliver
Format: Thesis
Language:English
Published: 2022
Subjects:
Ice
Online Access:https://hdl.handle.net/1969.1/195688
id fttexasamuniv:oai:oaktrust.library.tamu.edu:1969.1/195688
record_format openpolar
spelling fttexasamuniv:oai:oaktrust.library.tamu.edu:1969.1/195688 2023-07-16T03:56:17+02:00 Using a Bayesian Network Framework to Predict Permafrost Thaw in the Arctic Beall, Katherine Elizabeth Loisel, Julie Medina-Cetina, Zenon Cairns, David Frauenfeld, Oliver 2022-02-23T18:07:07Z application/pdf application/vnd.openxmlformats-officedocument.spreadsheetml.sheet https://hdl.handle.net/1969.1/195688 en eng https://hdl.handle.net/1969.1/195688 permafrost Arctic Bayesian Bayesian network model Thesis text 2022 fttexasamuniv 2023-06-27T23:01:49Z Rising global temperatures are a threat to Arctic ecosystems. Thawing permafrost is expected to expose previously frozen carbon to microbial decomposition, an action that will promote further warming and have consequences for both the natural environment and human communities. However, there is a critical gap in the ability of current permafrost models to simulate permafrost thaw under future projected climate conditions. A model based on Bayesian methods may help address existing limitations in the representation of physically complex processes and availability of observational data. A particular strength of Bayesian methods over more traditional methods is the ability to integrate various types of evidence (e.g., observations, model outputs, or expert assessments) into a single model through probability and statistics. This ability is particularly helpful in regions such as the Arctic that have sparse or no data. Here, I outline a new modeling framework using a Bayesian network (PermaBN) to simulate permafrost thaw in the continuous permafrost region of the Arctic. The PermaBN model development process involves: (1) identifying variables relevant to permafrost thaw via extensive literature review and collaboration with experts at Texas A&M University, (2) pre-validating and validating the model via expert assessment, and (3) evaluating the model with physical observations from a local case study. Pre-validation and expert assessment validation results show that, as expected, increases in thaw depth are expected to be low under initial conditions favoring lower temperatures, increased soil moisture conditions, and high active layer ice content while changes are expected to be high under initial conditions favoring higher temperatures, decreased soil moisture conditions, and low active layer ice content. Model evaluation shows that performance of PermaBN is enhanced when system conditions are known. Future work includes refining the model probabilities, calibrating the model, and evaluating the model ... Thesis Arctic Ice permafrost Texas A&M University Digital Repository Arctic
institution Open Polar
collection Texas A&M University Digital Repository
op_collection_id fttexasamuniv
language English
topic permafrost
Arctic
Bayesian
Bayesian network
model
spellingShingle permafrost
Arctic
Bayesian
Bayesian network
model
Beall, Katherine Elizabeth
Using a Bayesian Network Framework to Predict Permafrost Thaw in the Arctic
topic_facet permafrost
Arctic
Bayesian
Bayesian network
model
description Rising global temperatures are a threat to Arctic ecosystems. Thawing permafrost is expected to expose previously frozen carbon to microbial decomposition, an action that will promote further warming and have consequences for both the natural environment and human communities. However, there is a critical gap in the ability of current permafrost models to simulate permafrost thaw under future projected climate conditions. A model based on Bayesian methods may help address existing limitations in the representation of physically complex processes and availability of observational data. A particular strength of Bayesian methods over more traditional methods is the ability to integrate various types of evidence (e.g., observations, model outputs, or expert assessments) into a single model through probability and statistics. This ability is particularly helpful in regions such as the Arctic that have sparse or no data. Here, I outline a new modeling framework using a Bayesian network (PermaBN) to simulate permafrost thaw in the continuous permafrost region of the Arctic. The PermaBN model development process involves: (1) identifying variables relevant to permafrost thaw via extensive literature review and collaboration with experts at Texas A&M University, (2) pre-validating and validating the model via expert assessment, and (3) evaluating the model with physical observations from a local case study. Pre-validation and expert assessment validation results show that, as expected, increases in thaw depth are expected to be low under initial conditions favoring lower temperatures, increased soil moisture conditions, and high active layer ice content while changes are expected to be high under initial conditions favoring higher temperatures, decreased soil moisture conditions, and low active layer ice content. Model evaluation shows that performance of PermaBN is enhanced when system conditions are known. Future work includes refining the model probabilities, calibrating the model, and evaluating the model ...
author2 Loisel, Julie
Medina-Cetina, Zenon
Cairns, David
Frauenfeld, Oliver
format Thesis
author Beall, Katherine Elizabeth
author_facet Beall, Katherine Elizabeth
author_sort Beall, Katherine Elizabeth
title Using a Bayesian Network Framework to Predict Permafrost Thaw in the Arctic
title_short Using a Bayesian Network Framework to Predict Permafrost Thaw in the Arctic
title_full Using a Bayesian Network Framework to Predict Permafrost Thaw in the Arctic
title_fullStr Using a Bayesian Network Framework to Predict Permafrost Thaw in the Arctic
title_full_unstemmed Using a Bayesian Network Framework to Predict Permafrost Thaw in the Arctic
title_sort using a bayesian network framework to predict permafrost thaw in the arctic
publishDate 2022
url https://hdl.handle.net/1969.1/195688
geographic Arctic
geographic_facet Arctic
genre Arctic
Ice
permafrost
genre_facet Arctic
Ice
permafrost
op_relation https://hdl.handle.net/1969.1/195688
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