Intelligent prospector v2.0: exploration drill planning under epistemic model uncertainty
John Mern, Anthony Corso, Damian Burch, Kurt House, Jef Caers

TL;DR
This paper presents an AI-based planning method for exploration drilling that accounts for multiple geological hypotheses and detects incorrect prior models early, improving efficiency in mineral exploration.
Contribution
It introduces a partially observable Markov decision process framework that handles multiple hypotheses and early hypothesis falsification detection in exploration planning.
Findings
Successfully applied to a copper deposit case study.
Aided in characterizing a high-grade deposit in Zambia.
Enhanced exploration efficiency by early hypothesis validation.
Abstract
Optimal Bayesian decision making on what geoscientific data to acquire requires stating a prior model of uncertainty. Data acquisition is then optimized by reducing uncertainty on some property of interest maximally, and on average. In the context of exploration, very few, sometimes no data at all, is available prior to data acquisition planning. The prior model therefore needs to include human interpretations on the nature of spatial variability, or on analogue data deemed relevant for the area being explored. In mineral exploration, for example, humans may rely on conceptual models on the genesis of the mineralization to define multiple hypotheses, each representing a specific spatial variability of mineralization. More often than not, after the data is acquired, all of the stated hypotheses may be proven incorrect, i.e. falsified, hence prior hypotheses need to be revised, or…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Geological Modeling and Analysis · AI-based Problem Solving and Planning
