Sea Ice Characterization from Earth Observation Data by Explainable Artificial Intelligence

Acronym

FMI-TUNI

Description of the granted funding

The project will concentrate on estimation of the most essential sea ice (SI) parameters and SI classification from space-borne microwave earth-observation (EO) instruments and ice models by deep machine learning (ML). There exist notable deficiencies in the current ML SI algorithms. Typically, ML appears as a black box: no or only little information on the relationship between the ML inputs, structure of the ML, representations encoded by the ML, and the outputs are available. Also, no local uncertainties of the ML estimates are provided. These deficiencies will be addressed by developing an integrated set of optimized sea ice classification and parameter estimation algorithms with involved local uncertainties. Explainable AI (XAI), including sensitivity analysis, will be applied for analyzing and developing the ML. ML hyper-parameter (structure) optimization will also be applied to optimize the algorithms. The proposed work will be performed using existing Baltic Sea and Arctic data.
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Starting year

2025

End year

2029

Granted funding


Juha Karvonen Orcid -palvelun logo
336 790 €

Funder

Research Council of Finland

Funding instrument

Academy projects

Decision maker

Scientific Council for Natural Sciences and Engineering
12.06.2025

Other information

Funding decision number

370271

Fields of science

Geosciences

Research fields

Geotieteet

Identified topics

arctic region