Improving Subsurface Characterisation with Big Data Mining and Machine Learning

Title

Improving Subsurface Characterisation with Big Data Mining and Machine Learning

Subject

Hydrocarbons
Petroleum prospecting
Large dataset
Supervised learning
Multivariant analysis
Data mining

Description

Large databases of legacy hydrocarbon reservoir and well data provide an opportunity to use modern data mining techniques to improve our understanding of the subsurface in the presence of uncertainty and improve predictability of reservoir properties. A data mining approach provides a way to screen dependencies in reservoir and fluid data and enable subsurface specialists to estimate absent properties in partial or incomplete datasets. This allows for uncertainty to be managed and reduced. An improvement in reservoir characterisation using machine learning results from the capacity of machine learning methods to detect and model hidden dependencies in large multivariate datasets with noisy and missing data. This study presents a workflow applied to a large basinscale reservoir characterization database. The study aims to understand the dependencies between reservoir attributes in order to allow for predictions to be made to improve the data coverage. The machine learning workflow comprises the following steps: (i) exploratory data analysis
(ii) detection of outliers and data partitioning into groups showing similar trends using clustering
(iii) identification of dependencies within reservoir data in multivariate feature space with selforganising maps
and (iv) feature selection using supervised learning to identify relevant properties to use for predictions where data are absent. This workflow provides an opportunity to reduce the cost and increase accuracy of hydrocarbon exploration and production in mature basins. 2022 by the authors. Licensee MDPI, Basel, Switzerland.
3
15

Creator

Brackenridge, Rachel E.
Demyanov, Vasily
Vashutin, Oleg
Nigmatullin, Ruslan

Publisher

Energies

Date

2022

Type

journalArticle

Identifier

19961073
10.3390/en15031070

Citation

Brackenridge, Rachel E. et al., “Improving Subsurface Characterisation with Big Data Mining and Machine Learning,” Lamar University Midstream Center Research, accessed May 4, 2024, https://lumc.omeka.net/items/show/29405.

Output Formats