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FirnLearn: A neural network-based approach to firn density modeling in Antarctica
by
Meyer, Colin R.
, McDowell, Ian
, Baker, Ian
, Ogunmolasuyi, Ayobami
, Thompson-Munson, Megan
in
Accuracy
/ Antarctic ice sheet
/ Climate change
/ Climatic conditions
/ Climatic data
/ Cores
/ Datasets
/ Deep learning
/ Densification
/ Density
/ Density profiles
/ Empirical models
/ Firn
/ firn densification
/ Firn density
/ Glaciation
/ Ice
/ Ice cores
/ Ice sheets
/ Machine learning
/ Mass balance
/ Mass balance of ice sheets
/ Neural networks
/ Physics
/ Sea level changes
/ Sea level rise
/ Spatial variability
/ Spatial variations
2025
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FirnLearn: A neural network-based approach to firn density modeling in Antarctica
by
Meyer, Colin R.
, McDowell, Ian
, Baker, Ian
, Ogunmolasuyi, Ayobami
, Thompson-Munson, Megan
in
Accuracy
/ Antarctic ice sheet
/ Climate change
/ Climatic conditions
/ Climatic data
/ Cores
/ Datasets
/ Deep learning
/ Densification
/ Density
/ Density profiles
/ Empirical models
/ Firn
/ firn densification
/ Firn density
/ Glaciation
/ Ice
/ Ice cores
/ Ice sheets
/ Machine learning
/ Mass balance
/ Mass balance of ice sheets
/ Neural networks
/ Physics
/ Sea level changes
/ Sea level rise
/ Spatial variability
/ Spatial variations
2025
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
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FirnLearn: A neural network-based approach to firn density modeling in Antarctica
by
Meyer, Colin R.
, McDowell, Ian
, Baker, Ian
, Ogunmolasuyi, Ayobami
, Thompson-Munson, Megan
in
Accuracy
/ Antarctic ice sheet
/ Climate change
/ Climatic conditions
/ Climatic data
/ Cores
/ Datasets
/ Deep learning
/ Densification
/ Density
/ Density profiles
/ Empirical models
/ Firn
/ firn densification
/ Firn density
/ Glaciation
/ Ice
/ Ice cores
/ Ice sheets
/ Machine learning
/ Mass balance
/ Mass balance of ice sheets
/ Neural networks
/ Physics
/ Sea level changes
/ Sea level rise
/ Spatial variability
/ Spatial variations
2025
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FirnLearn: A neural network-based approach to firn density modeling in Antarctica
Journal Article
FirnLearn: A neural network-based approach to firn density modeling in Antarctica
2025
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Overview
Understanding firn densification is essential for interpreting ice core records, predicting ice sheet mass balance, elevation changes and future sea-level rise. Current models of firn densification on the Antarctic ice sheet (AIS), such as the Herron and Langway (1980) model are either simple semi-empirical models that rely on sparse climatic data and surface density observations or complex physics-based models that rely on poorly understood physics. In this work, we introduce a deep learning technique to study firn densification on the AIS. Our model, FirnLearn, evaluated on 225 cores, shows an average root-mean-square error of 31 kg m−3 and explained variance of 91%. We use the model to generate surface density and the depths to the
$550\\,\\mathrm{kg\\,m}^{-3}$ and
$830\\,\\mathrm{kg\\,m}^{-3}$ density horizons across the AIS to assess spatial variability. Comparisons with the Herron and Langway (1980) model at ten locations with different climate conditions demonstrate that FirnLearn more accurately predicts density profiles in the second stage of densification and complete density profiles without direct surface density observations. This work establishes deep learning as a promising tool for understanding firn processes and advancing towards a universally applicable firn model.
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