Digital, Vol. 5, Pages 50: Data-Driven Baseline Analysis of Climate Variability at an Antarctic AWS (2020–2024)


Digital, Vol. 5, Pages 50: Data-Driven Baseline Analysis of Climate Variability at an Antarctic AWS (2020–2024)

Digital doi: 10.3390/digital5040050

Authors:
Arpitha Javali Ashok
Shan Faiz
Raja Hashim Ali
Talha Ali Khan

Climate change in Antarctica has profound global implications, influencing sea level rise, atmospheric circulation, and the Earth’s energy balance. This study presents a data-driven baseline analysis of meteorological observations from a British Antarctic Survey automatic weather station (2020–2024). Temporal and seasonal analyses reveal strong insolation-driven variability in temperature, snow depth, and solar radiation, reflecting the extreme polar day–night cycle. Correlation analysis highlights solar radiation, upwelling longwave flux, and snow depth as the most reliable predictors of near-surface temperature, while humidity, pressure, and wind speed contribute minimally. A linear regression baseline and a Random Forest model are evaluated for temperature prediction, with the ensemble approach demonstrating superior accuracy. Although the short data span limits long-term trend attribution, the findings underscore the potential of lightweight, reproducible pipelines for site-specific climate monitoring. All analysis codes are openly available in github, enabling transparency and future methodological extensions to advanced, non-linear models and multi-site datasets.



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Arpitha Javali Ashok www.mdpi.com