Seismic characterization of a Triassic-Jurassic deep geothermal sandstone reservoir, onshore Denmark, using unsupervised machine learning techniques

Author:

Chopra Satinder1ORCID,Sharma Ritesh Kumar1,Bredesen Kenneth2ORCID,Ha Thang3,Marfurt Kurt J.3ORCID

Affiliation:

1. SamiGeo, Calgary, Alberta T3L 1W3, Canada.(corresponding author); .

2. Geological Survey of Denmark and Greenland (GEUS), Copenhagen 1350, Denmark..

3. The University of Oklahoma, Norman, Oklahoma 73109-1009, USA..

Abstract

The Triassic-Jurassic deep sandstone reservoirs in onshore Denmark are known geothermal targets that can be exploited for sustainable and green energy for the next several decades. The economic development of such resources requires accurate characterization of the sandstone reservoir properties, namely, volume of clay, porosity, and permeability. The classic approach to achieving such objectives has been to integrate well-log and prestack seismic data with geologic information to obtain facies and reservoir property predictions in a Bayesian framework. Using this prestack inversion approach, we can obtain superior spatial and temporal variations within the target formation. We then examined whether unsupervised facies classification in the target units can provide additional information. We evaluated several machine learning techniques and found that generative topographic mapping further subdivided intervals mapped by the Bayesian framework into additional subunits.

Publisher

Society of Exploration Geophysicists

Subject

Geology,Geophysics

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