EGU2020-7014
https://doi.org/10.5194/egusphere-egu2020-7014
EGU General Assembly 2020
© Author(s) 2021. This work is distributed under
the Creative Commons Attribution 4.0 License.

New Heat Flux Model for Antarctica with a Machine Learning Approach

Mareen Lösing, Jörg Ebbing, and Wolfgang Szwillus
Mareen Lösing et al.
  • Institute of Geosciences, Kiel University, Germany (mareen.loesing@ifg.uni-kiel.de)

Improving the understanding of geothermal heat flux in Antarctica is crucial for ice-sheet modelling and glacial isostatic adjustment. It affects the ice rheology and can lead to basal melting, thereby promoting ice flow. Direct measurements are sparse and models inferred from e.g. magnetic or seismological data differ immensely. By Bayesian inversion, we evaluated the uncertainties of some of these models and studied the interdependencies of the thermal parameters. In contrast to previous studies, our method allows the parameters to vary laterally, which leads to a heterogeneous West- and a slightly more homogeneous East Antarctica with overall lower surface heat flux. The Curie isotherm depth and radiogenic heat production have the strongest impact on our results but both parameters have a high uncertainty.

To overcome such shortcomings, we adopt a machine learning approach, more specifically a Gradient Boosted Regression Tree model, in order to find an optimal predictor for locations with sparse measurements. However, this approach largely relies on global data sets, which are notoriously unreliable in Antarctica. Therefore, validity and quality of the data sets is reviewed and discussed. Using regional and more detailed data sets of Antarctica’s Gondwana neighbors might improve the predictions due to their similar tectonic history. The performance of the machine learning algorithm can then be examined by comparing the predictions to the existing measurements. From our study, we expect to get new insights in the geothermal structure of Antarctica, which will help with future studies on the coupling of Solid Earth and Cryosphere.

How to cite: Lösing, M., Ebbing, J., and Szwillus, W.: New Heat Flux Model for Antarctica with a Machine Learning Approach, EGU General Assembly 2020, Online, 4–8 May 2020, EGU2020-7014, https://doi.org/10.5194/egusphere-egu2020-7014, 2020

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