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Exploring thawing patterns: data-driven modelling of permafrost dynamics using Random Forest and Neural Networks

Aram Moradi, Vadim Kravchinsky

In the proceedings of: GeoManitoba 2025: 78th Canadian Geotechnical Conference & 9th Canadian Permafrost Conference

Session: CPA Poster Session

ABSTRACT: This study examines permafrost thaw dynamics in the Northwest Territories' Mackenzie River Delta (MRD) using machine learning (ML) techniques, specifically Random Forest (RF) and Neural Networks (NNs). Utilizing a 10-year dataset from 79 observation sites, we predicted the spatial distribution of two key permafrost parameters: Mean Annual Ground Temperature (MAGT) and Active Layer Thickness (ALT). Both RF and NNs contributed complementary strengths — while NNs yielded lower RMSE and higher R² values overall, RF showed enhanced performance in areas with sparse data coverage. The strong agreement between both models underlines the robustness of our results. Beyond confirming the expected north-to-south warming gradient, our study reveals its fine-scale spatial variability linked to vegetation, topography, and hydrological conditions.


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Cite this article:
Moradi, Aram, Kravchinsky, Vadim (2025) Exploring thawing patterns: data-driven modelling of permafrost dynamics using Random Forest and Neural Networks in GEO2025. Ottawa, Ontario: Canadian Geotechnical Society.

@inproceedings{Moradi_GEO2025_48, author = {{Moradi, Aram}, {Kravchinsky, Vadim}}
title = {Exploring thawing patterns: data-driven modelling of permafrost dynamics using Random Forest and Neural Networks }
booktitle = {Proceedings of the 78th Canadian Geotechnical Conference & 9th Canadian Permafrost Conference}
year = {2025}
organization = {The Canadian Geotechnical Society},
address = {Ottawa, Canada} }
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