Benchmarking probabilistic machine learning models for arctic sea ice forecasting

By Sahara Ali1, Seraj Mostafa2, Xingyan Li2, Sara Khanjani2, Jianwu Wang2, James Foulds2, Vandana Janeja2

1. University of Maryland Baltimore County 2. University of Maryland, Baltimore County

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Abstract

The Arctic is a region with unique climate features, motivating new AI methodologies to study it. Unfortunately, Arctic sea ice has seen a continuous decline since 1979. This not only poses a significant threat to Arctic wildlife and surrounding coastal communities but is also adversely affecting the global climate patterns. To study the potential of AI in tackling climate change, we analyze the performance of four probabilistic machine learning methods in forecasting sea-ice extent for lead times of up to 6 months, further comparing them with traditional machine learning methods. Our comparative analysis shows that Gaussian Process Regression is a good fit to predict sea-ice extent for longer lead times with lowest RMSE score.

Ali, Sahara, et al. "Benchmarking probabilistic machine learning models for arctic sea ice forecasting." IGARSS 2022-2022 IEEE International Geoscience and Remote Sensing Symposium. IEEE, 2022.

Cite this work

Researchers should cite this work as follows:

  • Sahara Ali; Seraj Mostafa; Xingyan Li; Sara Khanjani; Jianwu Wang; James Foulds; Vandana Janeja (2024), "Benchmarking probabilistic machine learning models for arctic sea ice forecasting," https://theghub.org/resources/5237.

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