Machine learning on Crays to optimise petrophysical workflows in oil and gas exploration
Nick Brown, Anna Roubickova, Ioanna Lampaki, Lucy MacGregor, Michelle, Ellis, Paola Vera de Newton

TL;DR
This paper demonstrates how supervised machine learning on a Cray supercomputer can significantly accelerate petrophysical data interpretation in oil and gas exploration, reducing analysis time from days to minutes.
Contribution
It presents a novel application of machine learning to automate and optimize all stages of petrophysical workflows using HPC resources, a first in the industry.
Findings
Models trained on raw well log data match human interpretations.
Workflow processing time reduced from over 7 days to 7 minutes.
Identified limitations and solutions for using ML frameworks on supercomputers.
Abstract
The oil and gas industry is awash with sub-surface data, which is used to characterize the rock and fluid properties beneath the seabed. This in turn drives commercial decision making and exploration, but the industry currently relies upon highly manual workflows when processing data. A key question is whether this can be improved using machine learning to complement the activities of petrophysicists searching for hydrocarbons. In this paper we present work done, in collaboration with Rock Solid Images (RSI), using supervised machine learning on a Cray XC30 to train models that streamline the manual data interpretation process. With a general aim of decreasing the petrophysical interpretation time down from over 7 days to 7 minutes, in this paper we describe the use of mathematical models that have been trained using raw well log data, for completing each of the four stages of a…
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