GLAM 

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Glacier Landscape Analysis and Geohazards 

Monitoring with Earth Observation

Vision

Advancing the understanding of glacier dynamics and the drivers of change, along with assessing associated geohazards through innovative Earth Observation.

Roberto S. Azzoni introduced the GLAM research team and the Belvedere research results "Belvedere, 1951–2023: A Glacier Odyssey" at the 28th Alpine Glaciology Meeting, on February 27, 2025, Innsbruck, Austria. 

Lukáš Brodský: announcing the cooperation between the GLAM research team and the TRLSpace using  their Troll hyperspectral satellite for monitoring glacial lakes on TV (Czech TV and Seznam Zpravy).

The "Remote Sensing of the Cryosphere Dynamics under the Influence of Climate Change" proposal approved for funding within SEED4EU+ in 2025. 

The GLAM team published a monographic issue of AUC Geographica (2/2024), focused on the glacier dynamics within the Alpine environment. ~ 

Research

Why?

Rapid environmental and, in particular, cryosphere changes caused by global warming pose a major challenge to societies on a global scale. High mountain regions are exposed to various processes, which occur simultaneously. These include glacier decrease, ice, snow, and rock avalanches and landslides occurrence, new lake formations, and intensification of erosional processes, which potentially induce geohazards. Many communities in mountainous areas face these hazards, and understanding the related risks is the key to being prepared for them.

What?

Studies show that glaciers have been melting and shrinking faster over the last two decades. Global studies identify major trends, while local studies show details to understand physical processes. However, we still don’t fully understand how different types of glaciers change over time, making it hard to predict where they might cause hazards. Key questions include the future of glacierized mountain areas, how these changes will affect geohazards and their implications for societal resilience and adaptation. The main goal of the team is to understand these long-term interactions.

How?

A long-term geo-spatial data archive integrating diverse data sources allows for a more comprehensive examination of cryosphere processes. Furthermore, it is essential to increase the spatial and temporal resolution to gain better insights into the processes and their interactions. The development of novel machine learning models for remote sensing time-series data analysis shall shift the focus from bi-temporal change detection to continuous monitoring. This will provide a deeper understanding of the interactions between the processes and consequently design adaptive strategies to reduce vulnerability and risks of local communities. 

Contacts: