References

[HANSEN2021]

Hansen, T. M. (2021). Efficient probabilistic inversion using the rejection sampler—exemplified on airborne EM data. Geophysical Journal International, 224(1), 543-557. [https://doi.org/10.1093/gji/ggaa491]

[HANSENFINLAY2022]

Hansen, T. M., & Finlay, C. C. (2022). Use of machine learning to estimate statistics of the posterior distribution in probabilistic inverse problems—An application to airborne EM data. Journal of Geophysical Research: Solid Earth, 127(11), e2022JB024703. [https://doi.org/10.1029/2022JB024703]

[MADSEN2023]

Madsen, Rasmus Bødker, Anne-Sophie Høyer, Peter BE Sandersen, Ingelise Møller, and Thomas Mejer Hansen. “A method to construct statistical prior models of geology for probabilistic inversion of geophysical data.” Engineering Geology (2023): 107252. [https://doi.org/10.1016/j.enggeo.2023.107252]

[FALK2025]

Falk, Frederik Alexander, Anders Vest Christiansen, and Thomas Mejer Hansen. “Comparison of three one-dimensional time-domain electromagnetic forward algorithms.” Applied Computing and Geosciences (2025): 100243. [https://doi.org/10.1016/j.acags.2025.100243]

[GEOPRIOR1D]

Nørgaard, Jesper, Rasmus Bødker Madsen, Anne-Sophie Høyer, Ingelise Møller, and Thomas Mejer Hansen. “GeoPrior1D: An application for generating 1D geological and geophysical realizations of the subsurface.” In Review [https://github.com/GEUSjesper/geoprior1d]

[SimPEG]

Cockett, Rowan, Seogi Kang, Lindsey J. Heagy, Adam Pidlisecky, and Douglas W. Oldenburg. “SimPEG: An open source framework for simulation and gradient based parameter estimation in geophysical applications.” Computers & Geosciences 85 (2015): 142-154. [https://simpeg.xyz/]

[AarhusInv]

Kirkegaard, Casper, Kristoffer Andersen, Tue Boesen, Anders V. Christiansen, Esben Auken, and Gianluca Fiandaca. “Utilizing massively parallel co-processors in the AarhusInv 1D forward and inverse AEM modelling code.” ASEG Extended Abstracts 2015, no. 1 (2015): 1-3.