4.5 Article

Evaluation of sampling methods for fracture network characterization using outcrops

Journal

AAPG BULLETIN
Volume 97, Issue 9, Pages 1545-1566

Publisher

AMER ASSOC PETROLEUM GEOLOGIST
DOI: 10.1306/02131312042

Keywords

-

Funding

  1. Deutsche Wissenschaftliche Gesellschaft fur Erdol
  2. Erdgas und Kohle e.V. (German Society for Petroleum and Coal Science and Technology) [718]
  3. ExxonMobil Production Deutschland GmbH
  4. Gaz de France SUEZ E&P Deutschland GmbH
  5. Rheinisch-Westfalische Elektrizitatswerk Dea AG
  6. Wintershall Holding GmbH

Ask authors/readers for more resources

Outcrops provide valuable information for the characterization of fracture networks. Sampling methods such as scanline sampling, window sampling, and circular scanline and window methods are available to measure fracture network characteristics in outcrops and from well cores. These methods vary in their application, the parameters they provide and, therefore, have advantages and limitations. We provide a critical review on the application of these sampling methods and apply them to evaluate two typical natural examples: (1) a large-scale satellite image from the Oman Mountains, Oman (120,000 m(2) [1,291,669 ft(2)]), and (2) a small-scale outcrop at Craghouse Park, United Kingdom (19 m(2) [205 ft(2)]). The differences in the results emphasize the importance to (1) systematically investigate the required minimum number of measurements for each sampling method and (2) quantify the influence of censored fractures on the estimation of fracture network parameters. Hence, a program was developed to analyze 1300 sampling areas from 9 artificial fracture networks with power-law length distributions. For the given settings, the lowest minimum number of measurements to adequately capture the statistical properties of fracture networks was found to be approximately 110 for the window sampling method, followed by the scanline sampling method with approximately 225. These numbers may serve as a guideline for the analyses of fracture populations with similar distributions. Furthermore, the window sampling-method proved to be the method that is least sensitive to censoring bias. Reevaluating our natural examples with the window sampling method showed that the existing percentage of censored fractures significantly influences the accuracy of inferred fracture network parameters.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.5
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available