Litcius/Paper detail

Identification of reservoir fractures on FMI image logs using Canny and Sobel edge detection algorithms

Mina Shafiabadi, Abolghasem Kamkar‐Rouhani, Seyed Reza Ghavami Riabi, Amin Roshandel Kahoo, Behzad Tokhmechi

2021Oil & Gas Science and Technology – Revue d’IFP Energies nouvelles40 citationsDOIOpen Access PDF

Abstract

Because of the significant impact of fractures on production in hydrocarbon reservoirs, identification of these phenomena is a very important issue. Image logs are one of the best tools for revealing and studying fractures in reservoir and researcher can get lots of information about geological features in wells, by studying and analyzing these logs. In this research, two approaches have been used to determine the fractures in two wells A and B located in one of the oil fields in southwest of Iran. In the first approach, using Geolog software (version-7), after processing and correction of raw image log data, the number, position, dip, extension, layering, density and expansion of fractures have been identified. In the second approach, considering that the fractures in FMI images have edges, the Canny and Sobel filters as edge detection operators in image processing have been used to detect fractures in these images.

Topics & Concepts

Sobel operatorCanny edge detectorEdge detectionGeologyIdentification (biology)Image (mathematics)AlgorithmComputer scienceSoftwareImage processingEnhanced Data Rates for GSM EvolutionArtificial intelligenceBiologyBotanyProgramming languageMineral Processing and GrindingReservoir Engineering and Simulation MethodsDrilling and Well Engineering