Application of Machine Learning for Shale Reservoir Permeability Prediction

Due to ultra-low permeability, the characterization of shale reservoir is always being a challenge. The traditional models are insufficient to estimate the ultra-low permeability of shale reservoirs. Based on Machine Learning, we proposed a simple mathematical approach to predict the permeability of...

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Veröffentlicht in:IOP conference series. Earth and environmental science 2022-04, Vol.1003 (1), p.12025
Hauptverfasser: Prajapati, Srichand, Padmanabhan, Eswaran
Format: Artikel
Sprache:eng
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Zusammenfassung:Due to ultra-low permeability, the characterization of shale reservoir is always being a challenge. The traditional models are insufficient to estimate the ultra-low permeability of shale reservoirs. Based on Machine Learning, we proposed a simple mathematical approach to predict the permeability of shale reservoirs. Machine-learning techniques are good options for generating a rapid, robust, and cost-effective permeability prediction because of their strengths to deliver the variables. Additionally, used the Kozeny’s equation with power mean approach to constraint the estimated permeability for more reliable. To do this, we used a pure shale well-log downloaded from open source. The results show that the predicted permeability is well correlated with the neutron log and significantly match with the other well-logs.
ISSN:1755-1307
1755-1315
DOI:10.1088/1755-1315/1003/1/012025