PYTHON-BASED STATISTICAL ANALYSIS OF THE ECOLOGICAL VARIABLES IN THE ITALIAN ALPS

  • Polina LEMENKOVA Alma Mater Studiorum – University of Bologna, Department of Biological, Geological and Environmental Sciences, Bologna, Italy
Keywords: Python, modelling, environmental monitoring, climate, statistics, data analysis

Abstract


The high Alpine region of northern Italy is characterized by unique ecosystems, a complex hydrogeological setting, steep topographic gradients, variety of vegetation types and landscape patches, and varied in climatic and meteorological factors. Alpine ecosystem is even more complex when the vegetation composition is dominated by coniferous trees, since underground flow conditions and directions have unpredictable water quantities. Modelling such ecosystems requires advanced tools of programming and computing approaches, such as Python. This article is focused on the distributed water balance modelling in alpine catchments. The area is dominated by the coniferous forests (spruce, pine) with trees of different age (old >200 years and young, <30 years). Selected trees are covered by epyhytes (lichens). For effective planning and management of the use of water resources, Python-supported estimations and statistical modelling are a necessary approach for environmental forest monitoring.  In particular, the highest suitable spatial resolution that can be achieved in water balance estimations is evaluated in a complicated topographical setting of South Tyrolean Alps with limited knowledge of physiographic factors of forest and meteorological variables (precipitation, temperature, air humidity). 

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Published
2025/06/22
Section
Original Scientific Paper