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Matias Jari Johannes Uusinoka

My research centers on developing machine learning and statistical physics frameworks for analyzing the dynamics of complex systems—more specifically ice deformation fields. I currently work on methods for learning dynamics from noisy and discontinuous radar imagery and developing graph learning-based approaches for large-scale discrete element models. I also explore concepts from statistical physics present in ice dynamics (multifractality, renormalization group, self-organized criticality) with the goal of linking engineering-scale ice mechanics to geophysical scale statistical behavior and uncovering scale-dependent structures and critical behavior. I am interested other related research topics across diverse application domains.

Full researcher profile
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matias.uusinoka@aalto.fi

Osaamisalueet

Statistical physics, Complex systems, Machine learning, Deep learning, Ice dynamics

Julkaisut

Matias Uusinoka, Jari Haapala, Arttu Polojarvi 2025 Geophysical Research Letters

Matias Uusinoka, Arttu Polojärvi, Jari Haapala 2025 Proceedings of the 28th International Conference on Port and Ocean Engineering under Arctic Conditions

Matias Uusinoka, Antoine Savard, Jan Åström, Jari Haapala, Arttu Polojärvi 2025 Geophysical Research Letters