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Australian Energy Producers Journal Australian Energy Producers Journal Society
Journal of Australian Energy Producers
 

Geoscience Poster G3: Application of a probability model to detect unrecognised igneous intrusions in sedimentary basins

Simon Holford A *
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A Australian School of Petroleum and Energy Resources, University of Adelaide, SA 5005, Australia.

* Correspondence to: simon.holford@adelaide.edu.au

The APPEA Journal 62 - https://doi.org/10.1071/AJ21399
Published: 3 June 2022

Abstract

Poster G3

Mafic igneous intrusions are a common feature in extensional sedimentary basins, particularly those located at volcanic rifted margins, and are important in both exploration and development contexts due to their range of interactions with the petroleum system and their role as potential drilling hazards. Experience from a range of basins containing mafic igneous intrusions suggests that seismically resolvable intrusions are typically accompanied by a large number of intrusions that are too thin to be confidently identified and interpreted from seismic reflection surveys. The increased vertical resolution of wireline log data affords an opportunity to identify such sub-seismic-scale intrusions, though in many wells with full wireline suites igneous intrusions are often misidentified as sedimentary units, including felsic intrusions whose physical properties are more similar to sedimentary rocks. Here we apply a wireline-log-based probability model to well data from a number of basins. In previous applications, the model has proven highly effective in predicting the occurrence of carbonate cementation zones in sandstones in comparison to neural network approaches. We demonstrate its ability to predict the presence of igneous intrusions that were not previously identified by either seismic interpretation, or through the analysis of well-derived datasets. The broader application of this model to large suites of legacy data could lead to improved knowledge of the occurrence of intrusions in basins with implications for basin modelling and well planning.

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Keywords: drilling, igneous intrusions, machine learning, magmatism, probability, sedimentary basins, seismic reflection, wireline logging.

Professor Simon Holford is South Australian State Chair of Petroleum Geoscience at the Australian School of Petroleum and Energy Resources, University of Adelaide. Simon has published ~100 papers on the prospectivity and tectonics of rifted margins, petroleum geomechanics and magmatism in basins. Simon has successfully supervised ~15 PhD students and ~60 Honours and Masters students. Simon has a PhD from the University of Birmingham and a BSc (Hons) from Keele University. Simon has won multiple awards, including Best Paper prizes at APPEA 2012 and AEGC 2019, Best Extended Abstract at APPEA 2021 and the Geological Society of Australia’s Walter Howchin and ES Hills medals. Simon was President of the SA/NT branch of PESA during 2015–2017.