Articles | Volume 14, issue 4
https://doi.org/10.5194/gmd-14-2075-2021
https://doi.org/10.5194/gmd-14-2075-2021
Development and technical paper
 | 
22 Apr 2021
Development and technical paper |  | 22 Apr 2021

Porosity and permeability prediction through forward stratigraphic simulations using GPM™ and Petrel™: application in shallow marine depositional settings

Daniel Otoo and David Hodgetts

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Cited articles

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Burges, P. M., Steel, R. J., and Granjeon, D.: Stratigraphic Forward Modeling of Basin-Margin Clinoform Systems: Implications for Controls on Topset and Shelf Width and Timing of Formation of Shelf-Edge deltas. Recent advances in models of siliciclastic shallow-marine stratigraphy, SEPM Spec. P., 90, 35–45, 2008. 
Caers, J. and Zhang, T.: Multiple-point geostatistics: a quantitative vehicle for integrating geologic analogs into multiple reservoir models, in: Integration of outcrop and modern analogs in reservoir modeling, edited by: Grammer, G. M., Harris, P. M., and Eberli, G. P., AAPG Memoir, 384–394, 2004. 
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Short summary
The forward stratigraphic simulation method is used to predict lithofacies, porosity, and permeability in a reservoir model. The objective of using this approach is to enhance subsurface property modelling through geologic realistic 3-D stratigraphic patterns. Results show realistic stratigraphic sequences. Given this, we can derive spatial and geometric data as secondary data to constrain property simulation in a reservoir model. The approach can reduce the uncertainty of property modelling.