Abstract
The identification of fractures and discontinuities has great importance on the fluid flow estimation in hydrocarbon reservoirs since they influence the properties of porosity and permeability. Due to the inaccessibility and sparsity of reservoir data, the fracture characterization is generally assessed through the study of outcrop analogues using remote sensing or in <i>situ</i> observations by a specialist. Considering the remote sensing methods, the unmanned Aerial Vehicle (UAV) acquisition combined with Structure from Motion (SfM) photogrammetry is a low-cost way to generate products like orthorectified images, allowing manual and automated methods of fracture trace detection. Automatic approaches, commonly used to address this problem, present some known limitations and disadvantages due to the nature of the outcrops and weather conditions during UAV acquisitions. In this work, we focus on fracture detection over karstic regions that are highly fractured. For this, we evaluated a series of adaptive segmentation methods based on thresholding. The Sauvola local adaptive segmentation presented the best result when compared to a manually annotated ground truth. The segmentation results were further improved by the use of the binary denoising method Non-Local means. We also carried an evaluation of the influence of the sun position in the fracture detection, and to reduce this inherent bias we combined three UAV acquisitions done over the karstic carbonate outcrop, namely Rosário pavement in the Jandaíra formation northeast Brazil. With the proposed methodology we acquired more accurate fracture data over the study area, which follows the directional statistics of previous works carried out in the region.
Highlights
C ARBONATE reservoirs concentrate important hydrocarbon reserves located at great depths, as in the case of pre-salt in the Brazilian offshore
P(x|λ) = λ exp−λx where λ is estimated by λ = 1/x, with x ∈ X, and X is the set of attributes measured
Fracture segmentation in images is still a challenging task in geology applied computing, which can be observed by the different number of methods developed over the years
Summary
C ARBONATE reservoirs concentrate important hydrocarbon reserves located at great depths, as in the case of pre-salt in the Brazilian offshore. These reservoirs are mainly affected by diagenesis and post-deposition dissolution caused by karstification [1], which leads to highly fractured rocks contributing to the heterogeneity of the carbonate reservoirs [2]. The karstification process cause fragility and fracturing of the reservoir rocks changing the inherent properties of porosity and permeability, increasing the importance of the characterization of fracture (and overall discontinuities) in reservoirs to estimate fluid flow [3].
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.