How’s it growing? Tools for observing snow and sea ice in a changing Arctic Ocean

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Název: How’s it growing? Tools for observing snow and sea ice in a changing Arctic Ocean
Autoři: Raphael, Ian Alexander
Zdroj: Dartmouth College Ph.D Dissertations
Informace o vydavateli: Dartmouth Digital Commons
Rok vydání: 2025
Sbírka: Dartmouth Digital Commons (Dartmouth College)
Témata: Sea ice, snow, Arctic, instrumentation, sensors, spatial sampling, sampling, Applied Statistics, Atmospheric Sciences, Climate, Design of Experiments and Sample Surveys, Digital Circuits, Digital Communications and Networking, Electrical and Electronics, Glaciology, Hardware Systems, Heat Transfer, Combustion, Natural Resources and Conservation, Numerical Analysis and Scientific Computing, Ocean Engineering, Oceanography, Other Earth Sciences, Other Statistics and Probability, Software Engineering, Systems and Communications, Systems Architecture, Systems Engineering
Popis: September Arctic sea ice extent has diminished by roughly 50% in the 45 years since satellite observations began. The Arctic Ocean may experience ice-free summers within the next decade, with implications for habitat, resource extraction, geopolitics, and local and global climate change. To predict how Arctic sea ice will change in the future, we need to understand its behavior in the present. In situ sea ice mass balance measurements (snow accumulation, ice growth, snow and ice surface melt, and bottom melt) are essential for studying the processes driving rapid changes in the ice pack, and for validating remote sensing measurements and climate models. Here, we evaluate sea ice mass balance observations from the 2019-2020 MOSAiC expedition in the central Arctic, highlighting significant changes in sea ice growth and melt processes over the past several decades. Our results indicate that snow depth and its heterogeneity are powerful controls on winter ice growth in the younger, thinner ice pack of the modern Arctic. Yet we lack the precise, spatially dense snow depth measurements needed to fully understand and model the role of snow in the sea ice system. We developed a distributed, autonomous snow depth observation system that is ~95% less expensive than existing systems to fill this gap. Finally, while this system is a leap forward in low-cost snow observation, budget and resource constraints continue to limit the scope of autonomous snow depth sampling efforts. We conducted a study to investigate how sample size and arrangement influence parameter estimation errors in order to determine efficient snow sampling strategies. We found that the current practice of using a single autonomous station to estimate mean snow depth produces estimation error on the order of ±0.10 m. Increasing the sample size to just 16 stations decreases estimation uncertainty for the mean to roughly ±0.02 m and enables standard deviation estimation to the same uncertainty. This uncertainty metric represents a ~50% improvement over using ...
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Relation: https://digitalcommons.dartmouth.edu/dissertations/383; https://digitalcommons.dartmouth.edu/context/dissertations/article/1385/viewcontent/RaphaelIan_PhDThesis_unsigned.pdf
Dostupnost: https://digitalcommons.dartmouth.edu/dissertations/383
https://digitalcommons.dartmouth.edu/context/dissertations/article/1385/viewcontent/RaphaelIan_PhDThesis_unsigned.pdf
Přístupové číslo: edsbas.73F8C4BA
Databáze: BASE
Popis
Abstrakt:September Arctic sea ice extent has diminished by roughly 50% in the 45 years since satellite observations began. The Arctic Ocean may experience ice-free summers within the next decade, with implications for habitat, resource extraction, geopolitics, and local and global climate change. To predict how Arctic sea ice will change in the future, we need to understand its behavior in the present. In situ sea ice mass balance measurements (snow accumulation, ice growth, snow and ice surface melt, and bottom melt) are essential for studying the processes driving rapid changes in the ice pack, and for validating remote sensing measurements and climate models. Here, we evaluate sea ice mass balance observations from the 2019-2020 MOSAiC expedition in the central Arctic, highlighting significant changes in sea ice growth and melt processes over the past several decades. Our results indicate that snow depth and its heterogeneity are powerful controls on winter ice growth in the younger, thinner ice pack of the modern Arctic. Yet we lack the precise, spatially dense snow depth measurements needed to fully understand and model the role of snow in the sea ice system. We developed a distributed, autonomous snow depth observation system that is ~95% less expensive than existing systems to fill this gap. Finally, while this system is a leap forward in low-cost snow observation, budget and resource constraints continue to limit the scope of autonomous snow depth sampling efforts. We conducted a study to investigate how sample size and arrangement influence parameter estimation errors in order to determine efficient snow sampling strategies. We found that the current practice of using a single autonomous station to estimate mean snow depth produces estimation error on the order of ±0.10 m. Increasing the sample size to just 16 stations decreases estimation uncertainty for the mean to roughly ±0.02 m and enables standard deviation estimation to the same uncertainty. This uncertainty metric represents a ~50% improvement over using ...