Bayesian Joint Inversions for the Exploration of Earth Resources.

IJCAI '13: Proceedings of the Twenty-Third international joint conference on Artificial Intelligence(2013)

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Abstract
We propose a machine learning approach to geophysical inversion problems for the exploration of earth resources. Our approach is based on nonparametric Bayesian methods, specifically, Gaussian processes, and provides a full distribution over the predicted geophysical properties whilst enabling the incorporation of data from different modalities. We assess our method both qualitatively and quantitatively using a real dataset from South Australia containing gravity and drill-hole data and through simulated experiments involving gravity, drill-holes and magnetics, with the goal of characterizing rock densities. The significance of our probabilistic inversion extends to general exploration problems with potential to dramatically benefit the industry.
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Key words
drill-hole data,general exploration problem,geophysical property,inversion problem,probabilistic inversion,South Australia,different modality,earth resource,full distribution,nonparametric Bayesian method,Bayesian joint inversion
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