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Erschienen in: Neural Computing and Applications 14/2024

21.02.2024 | Original Article

GeoTrans: a transfer learning approach for estimating petrophysical properties from geophysical sensors data

verfasst von: Pallabi Saikia, Rashmi Dutta Baruah

Erschienen in: Neural Computing and Applications | Ausgabe 14/2024

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Abstract

Petrophysical properties estimation is vital in reservoir characterisation domain to identify the prospect locations of presence of petroleum. Geophysical sensing with seismic survey and well logging provide such information of subsurface without completely digging over the reservoir. Machine learning models are popular in this domain to estimate the petrophysical properties from seismic signals and well logging. However, the performance is affected when the available labelled data are limited to model a reservoir. Transfer learning has a significant contribution in handling the limited labelled data issue in many application domains. But its applicability is almost unexplored in this domain as it is necessary to first identify the relevant model to transfer. In this paper, we propose a novel transfer learning approach for the estimation of petrophysical properties in a real-world reservoir dataset having inadequate labelled data samples. The proposed solution transfers the contextual knowledge of reservoir facies classes to the predictive model of petrophysical properties. Both the tasks share the common domain information and provided the improved generalisation performance considering the out-of-fold prediction in blind wells. Moreover, the analysis of results depicts better convergence and accuracy compared to its considered baselines.

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Metadaten
Titel
GeoTrans: a transfer learning approach for estimating petrophysical properties from geophysical sensors data
verfasst von
Pallabi Saikia
Rashmi Dutta Baruah
Publikationsdatum
21.02.2024
Verlag
Springer London
Erschienen in
Neural Computing and Applications / Ausgabe 14/2024
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-024-09489-1

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