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7th Middle East Geosciences Conference and Exhibition
Manama, Bahrain
March 27-29, 2006
ADCO
Water saturation (Sw) spatial distribution within a hydrocarbon-bearing zone is a critical factor influencing reservoir management and directly impacts business-critical processes including reservoir economics, production performance and facilities capacity handling. However, derivation of the saturation parameter itself is subject to a large degree of uncertainty in terms of both its calculation and also its distribution within the inter-well spaces. Describing and quantifying the Sw uncertainties prevalent in all reservoir models is an important element of understanding and mitigating risks inherent in reservoir management.
This work documents a case study from a producing carbonate reservoir in Abu Dhabi, UAE. A reservoir model was constructed for hydrocarbon-in-place calculations and the analysis of simulation based reservoir production performance for forward development planning.
The saturation data was interrogated at two scales:
- 1D analysis of the calculation of Sw itself from petrophysical, core analysis and SCAL inputs
- 3D analysis of the spatial population of the reservoir model with Sw data
In 1D, the input petrophysical parameters derived from log and SCAL data such as
porosity, cementation factor, saturation exponent, formation water resistivity, true
formation resistivity and capillary pressure data are subject to different uncertainties
related to data acquisition and analysis (such as different
tools
,
techniques
and
contractors) and/or
interpretation
(e.g. porosity calculation and core analysis data
interpretation
).
In 3D, the static distribution of initial Sw is sensitive to
structural
variations relative to
hydrocarbon contacts, distribution of reservoir rocktype (saturation region) to which the
saturation formula may be tied, the careful selection of data unaffected by production
related fluid displacements and also resolution effects related to the dimensions of the
cellular framework itself.
For the reservoir featured, detailing the sensitivity of the Sw calculation and its subsequent distribution proved crucial in providing a numerical description of the uncertainties, yielding direct input for risk management and contingency planning processes.