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An Integrated Approach to Optimizing a Large Asset-Static Modeling

By

 Samir Youssef1, Adel R. Moustafa2, Ismail Fahmy3, Ahmed El-Banbi4, Ahmed Aly4, Maher Emara5, Amr Alhomosany5

(1) Schlumberger-EEG, Cairo, Egypt (2) Ain Shams University, Cairo, Egypt (3) Sclumberger, Cairo, (4) Schlumberger, Cairo, (5) General Petroleum Company (GPC), Cairo,

 The paper explains a new methodology to construct 3D static models of old fields. Massive amount of seismic and borehole data (167 wells), few core data, and engineering data were used to construct a 3D static Previous HitmodelNext Hit for Bakr-Amer field in the Gulf of Suez. This 14-km long field represents the central segment of a large NE tilted fault block. It produces oil from eight reservoirs made up of reefal limestone, fractured limestone and quartzose sandstone. Several problems were encountered while applying the well-known static Previous HitmodelNext Hit construction process (poor resolution of seismic data, old and missing well logs, and inadequate core data). After constructing the framework of the Previous HitmodelNext Hit, geostatistical approaches (Sequential Guassian Simulation and CoSimulation) were used to populate the property Previous HitmodelNext Hit with petrophysical data (porosity, permeability, and water saturation) for each reservoir. This integrated approach led to the construction of the first reliable static Previous HitmodelNext Hit of the field. Drilling results of new wells confirmed the static Previous HitmodelNext Hit accuracy and validated the approach. The static Previous HitmodelNext Hit was also used to calculate the OOIP and to construct the dynamic Previous HitmodelTop of the field. The flow simulation coupled with economical evaluation (described in a separate paper) was successfully used to optimize the field performance and increase the production rate.

This integrated approach can be used to construct reliable static models for fields with poor seismic data. The paper also suggests ways to overcome poor and/or missing data problems.