2023
DOI: 10.1002/gj.4870
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Integrated geological data, 3D post‐stack seismic inversion, depositional modelling and geostatistical modelling towards a better prediction of reservoir property distribution for near‐field exploration: A case study from the eastern Sirt Basin, Libya

Abdulhadi Elsounousi Khalifa,
Zairi Moncef,
Ahmed E. Radwan

Abstract: De‐risking the hydrocarbon potential in near‐field exploration is one of the most important procedures in the exploration of hydrocarbons, and it requires the integration of various data to predict the reservoir characteristics of the prospect area more accurately. In this work, wells and 3D seismic data from the Libyan producing oil fields were utilized to demonstrate how well this technique worked to improve and describe the hydrocarbon potential of the carbonate geobody that corresponds to the Palaeocene Up… Show more

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Cited by 3 publications
(1 citation statement)
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“…The application of statistical index, frequency ratio and weight of evidence modelling for integrating predictive data generates geothermal favorability maps, demonstrating the efficiency of geological data integration in predictive modelling. Khalifa, Moncef and Radwan (2023) explore the integration of geological data, 3D post-stack seismic inversion, depositional modelling and geostatistical modelling for predicting reservoir property distribution in near-field exploration. Their case study from the eastern Sirt Basin in Libya highlights how well data integration and predictive modelling work to improve and describe the hydrocarbon potential of carbonate geobodies.…”
Section: Predictive Models In Identifying New Geological Resourcesmentioning
confidence: 99%
“…The application of statistical index, frequency ratio and weight of evidence modelling for integrating predictive data generates geothermal favorability maps, demonstrating the efficiency of geological data integration in predictive modelling. Khalifa, Moncef and Radwan (2023) explore the integration of geological data, 3D post-stack seismic inversion, depositional modelling and geostatistical modelling for predicting reservoir property distribution in near-field exploration. Their case study from the eastern Sirt Basin in Libya highlights how well data integration and predictive modelling work to improve and describe the hydrocarbon potential of carbonate geobodies.…”
Section: Predictive Models In Identifying New Geological Resourcesmentioning
confidence: 99%