Notes from the theoretical courses taught during the Machine Learning in Glaciology workshop, at the Finse research station (Norway).
Authors: Jordi Bolibar, Facundo Sapienza
The presentation introduces students to the general concepts of a machine learning pipeline. How to properly design a dataset, how to correctly train models and how validate, test and understand the capabilities and limitation of the model(s).
The following contents are covered:
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Modelling the glacier system
- Glacier evolution models
- Local vs Global glacier modelling
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Physics-based machine learning
- Machine learning pipelines
- Regression for physical processes
- Respecting physics
- Feature selection
- Data driven machine learning
- Physical losses or Physics-Informed Neural Networks
- Neural/Universal Differential Equations
- Trustworthy models
- Testing and validation
- Physical interpretation
- Being mindful about model limitations
- Respecting physics
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Project description
Authors: Benjamin Robson, Konstantin Maslov and Thomas Schellenberger
The three presentations will cover:
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Remote Sensing in Glaciology Remote Sensing in Glaciology – the traditional basics
- Intro Optical and SAR remote sensing and their applications in Glaciology
- Glacier extend mapping
- Glacier zone mapping
- Challenges
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Random Forest and Deep learning image classification for Glacier Mapping
- Intro to ML image classification
- Random Forest
- Deep learning
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Cryospheric Mapping with Remote Sensing - an overview of the problems, data and methods (with a focus on OBIA and debris-covered glaciers
- Object based image analysis
- Mapping debris-covered glaciers
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Project description The students will have the opportunity to work to mapping glaciers in High Mountain Asia using Sentinel-1 and Sentinel-2 data and pre-trained random forest and DL models as well as OBIA. They are encouraged to tune and train additional random forest models with a number of different input features and to compare the performance of the three approaches statistically.
Authors: Facundo Sapienza and Ellianna Abrahams
Author: Ellianna Abrahams