Oblique-incidence reflectivity difference method combined with deep learning for predicting anisotropy of invisible-bedding shale
Deep learning methodologies have revolutionized prediction in many fields and is potential to do the same in the petroleum industry because of the complex oil-gas reservoir. A limitation remains for dense shale exploration in that the shales with invisible bedding are difficult to characterize measurably because of the considerable complexity of the geological structures. The oblique-incidence reflectivity difference method (OIRD) is sensitive to the surface features and was used to obtain a layered distribution of dielectric properties in shales. In this paper, we report a combination of OIRD and deep learning method to identify the dielectric anisotropy of an invisible-bedding shale. The model performs well and clearly identifies the bedding of the shale based on the output values associated with the probability. Only a single direction was determined to have laminations with widths of 20-. The anisotropy features detected by OIRD also existed in the invisible-bedding shale and were caused by the smaller cracks and denser particles' orientation relative to general shales. As current dense reservoirs include rich invisible-bedding shales, we believe that the OIRD method combined with deep learning method can help improve the exploration efficiency of shale reservoirs.
Year of publication: |
2020
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Authors: | Chen, Ru ; Ren, Zewei ; Meng, Zhaohui ; Zhan, Honglei ; Miao, Xinyang ; Zhao, Kun ; Lu, Huibin ; Jin, Kuijuan ; Yue, Wenzheng ; Yang, Guozhen |
Published in: |
Energy Reports. - Amsterdam : Elsevier, ISSN 2352-4847. - Vol. 6.2020, p. 795-801
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Publisher: |
Amsterdam : Elsevier |
Subject: | Oblique-incidence reflectivity difference method | Deep learning method | Shale | Anisotropy |
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