Click to
view article in PDF format.
Oil Sands Reservoir Characterization: A Case Study at Nexen/Opti Long Lake*
By
Laurie Weston Bellman1
Search and Discovery Article #40276 (2008)
Posted March 10, 2008
*Adapted from extended abstract prepared for AAPG Hedberg Conference, “Heavy Oil and Bitumen in Foreland Basins – From Processes to Products,” September 30 - October 3, 2007 – Banff, Alberta, Canada
1Bellman Consulting Ltd., Calgary, Alberta (contracted to Nexen Inc.) ([email protected])
The Athabasca oil sands contain more than a trillion barrels of oil within the Cretaceous McMurray Formation of northeastern Alberta. The McMurray Formation is generally considered to be a compound estuarine valley system characterized by multiple cuts and fills. It is bounded below by Devonian rocks at the pre-Cretaceous unconformity and above by the widespread transgressive marine shales and sands of the Wabiscaw Formation. In the Long Lake area (Figure 1), it is 60 to 100 m thick, with net pays of greater than 40m. Still, its complexity is legendary. Stacked channel deposition exhibits a high degree of reservoir variability both vertically and laterally making lithological predictability difficult.
Traditionally, at least 8 and often many more vertical wells per square mile are
drilled and cored to obtain enough data to be confident in defining a Steam
Assisted Gravity Drainage (SAGD) project area. For more details, visit
http://www.nexeninc.com. Even then, significant variations occur between
wells. 3D
seismic
data has been used successfully in the past mainly to define
the base of the zone of interest (there is a strong reflector at the
Cretaceous-Devonian boundary), and the gross thickness of the interval. Various
attempts have been made to decipher the internal composition of the channeled
interval with limited success.
|
|
In this article, I describe the method, application, and results of
a technique of quantitatively extracting and classifying elastic
rock properties from
Wireline logs directly (or indirectly) measure P-wave velocity,
S-wave velocity and density. Integrating this data with core and log
analysis, the lambda and mu properties are calculated and assigned
lithologies and fluid properties. Detailed quality assessment and
cross-plot analysis is carried out to assign empirical limits and
guidelines for lithology and fluid discrimination based on the
measured rock physics properties (Figure 2).
The determined relationships are then used to calibrate and classify
the seismically-derived properties. The result is a
Applying this technique over a project area allows more confident
The cores shown represent
Barson, D., Bachu, S., Esslinger, P., 2001, Flow systems in the Mannville Group in the east-central Athabasca area and implications for steam-assisted gravity drainage (SAGD) operations for in situ bitumen production: Bulletin of Canadian Petroleum Geology, v. 49, p. 376-392. Dumitrescu, C., Weston Bellman, L., and Williams, A., 2005, Delineating productive reservoir in the Canadian oil sands using neural networks approach: CSEG Technical Abstracts. Goodway, W., Chen, T., and Downton, J., 1997, Improved AVO fluid detection and lithology discrimination using Lame petrophysical parameters: “Lambda*rho”, “mu*rho” and “lambda/mu fluid stack”, from P and S inversions: 67th Annual International Meeting., SEG Expanded Abstracts, p183-186.
|
