2020
DOI: 10.1007/s13202-020-00982-6
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Integrated reservoir characterization and quality analysis of the carbonate rock types, case study, southern Iraq

Abstract: The reservoir characterization and rock typing is a significant tool in performance and prediction of the reservoirs and understanding reservoir architecture, the present work is reservoir characterization and quality Analysis of Carbonate Rock-Types, Yamama carbonate reservoir within southern Iraq has been chosen. Yamama Formation has been affected by different digenesis processes, which impacted on the reservoir quality, where high positively affected were: dissolution and fractures have been improving poros… Show more

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Cited by 12 publications
(1 citation statement)
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“…Characterizing the reservoir and identifying the type of rock are important tools for forecasting reservoir performance and comprehending reservoir design [9]. Integrated rock characterization can be carried out in detail using the flow zone indicator method to describe the formation in terms of hydraulic flow unit; Winland correlation to classify the pore size; Lucia classification to classify the types of rock depending on fabric rock number, and clustering analysis to recognize rock type with the data of well logs [10].…”
Section: -Introductionmentioning
confidence: 99%
“…Characterizing the reservoir and identifying the type of rock are important tools for forecasting reservoir performance and comprehending reservoir design [9]. Integrated rock characterization can be carried out in detail using the flow zone indicator method to describe the formation in terms of hydraulic flow unit; Winland correlation to classify the pore size; Lucia classification to classify the types of rock depending on fabric rock number, and clustering analysis to recognize rock type with the data of well logs [10].…”
Section: -Introductionmentioning
confidence: 99%