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International Journal of Mathematical, Engineering and Management Sciences

ISSN: 2455-7749 . Open Access


Seismic Lithofacies Distribution Modeling Using the Single Normal Equation Simulation (SNESIM) Algorithm of Multiple-Point Geostatistics in Upper Assam Basin, India

Seismic Lithofacies Distribution Modeling Using the Single Normal Equation Simulation (SNESIM) Algorithm of Multiple-Point Geostatistics in Upper Assam Basin, India

Nagendra Babu Mahadasu
Computational Petroleum Geomechanics Laboratory, Department of Ocean Engineering, Indian Institute of Technology Madras, Chennai, India.

Venkatesh Ambati
Computational Petroleum Geomechanics Laboratory, Department of Ocean Engineering, Indian Institute of Technology Madras, Chennai, India.

Rajesh R. Nair
Computational Petroleum Geomechanics Laboratory, Department of Ocean Engineering, Indian Institute of Technology Madras, Chennai, India.

DOI https://doi.org/10.33889/IJMEMS.2021.6.3.048

Received on April 19, 2021
  ;
Accepted on May 11, 2021

Abstract

Recently, multiple-point geostatistical simulation gained much attention for its role in spatial reservoir characterization/modeling in geosciences. Accurate lithofacies modeling is a critical step in the characterization of complex geological reservoirs. In this study, multiple-point facies geostatistics based on the SNESIM algorithm integrated with the seismic modeling technique is used as an efficient reservoir modeling approach for lithofacies modeling of the fluvial Tipam formation in the Upper Assam Basin, India. The Tipam formation acts as a potential reservoir rock in the Upper Assam Basin, India. Due to the basin geological complexity and limitation in seismic resolution, many discontinuities in depositional channels in this fluvial depositional environment have been identified using conventional lithofacies mapping. This study combines three techniques to reproduce continuity of the lithofacies for better reservoir modeling. The first is simultaneous prestack inversion for inverting prestack gathers with angle-dependent wavelets into seismic attributes. A cross-plot of P-impedance and VP/VS ratio from well-log data was used to classify the different reservoir lithofacies such as hydrocarbon sand, brine sand, and shale. The second is the Bayesian approach that incorporates probability density functions (PDFs) of non -parametric statistical classification with seismic attributes for converting the seismic attributes into lithofacies volume and the probability volumes of each type lithofacies. The third technique is multiple-point geostatistical simulation (MPS) using the Single Normal equation Simulation (SNESIM) algorithm applied to training images and probability volumes as constraints for a better lithofacies model. These integrated study results proved that MPS could improve reservoir lithofacies characterization.

Keywords- Prestack inversion, Bayesian classification, Multiple-point geostatistics.

Citation

Babu Mahadasu, N., Ambati, V., & Nair, R. R. (2021). Seismic Lithofacies Distribution Modeling Using the Single Normal Equation Simulation (SNESIM) Algorithm of Multiple-Point Geostatistics in Upper Assam Basin, India. International Journal of Mathematical, Engineering and Management Sciences, 6(3), 805-823. https://doi.org/10.33889/IJMEMS.2021.6.3.048.