Geomechanics and Geophysics for Geo-Energy and Geo-Resources (Jan 2024)

Parameter evaluation method of tight carbonate reservoir using electrical imaging pores diameter spectrum

  • Shixiang Jiao,
  • Jun Zhao,
  • Xiaofeng Ren,
  • Xiaofeng Wen,
  • Anpei Liu,
  • Fang Cai,
  • Baocai Yu,
  • Qiang Lai

DOI
https://doi.org/10.1007/s40948-024-00757-x
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 13

Abstract

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Abstract Currently, high-yield gas reservoirs have been discovered by exploring Lower Paleozoic tight carbonate oil and gas reservoirs in the Changqing area. These reservoirs, however, are impacted by subsequent karstification and diagenesis processes, leading to the formation of complex pore spaces with varying pore diameters ranging from microns to millimeters. Conventional well curves, with a resolution at the decimeter level, can only provide an overview of the reservoir porosity, making it challenging to evaluate the pore structure. On the other hand, electrical imaging logging data has a sampling interval of 0.1 inches and a resolution as fine as 5 mm, providing valuable information for pore structure evaluation in tight reservoirs. Since formation resistivity is influenced by factors like porosity, mud filtrate resistivity, and cementation, the cementation index serves as a reflection of the pore structure. Therefore, by calibrating the cementation index using data obtained from experiments at different scales, the pore structure parameters of tight carbonate reservoirs can be evaluated. This study conducted a comparison between numerous core experiments at various scales and both conventional and imaging log data. A method was proposed for extracting pore size distribution characteristics and calculating the pore size spectrum based on electrical imaging logging, ultimately leading to the establishment of a quantitative evaluation model for the pore structure of tight carbonate reservoirs. The results demonstrated improved accuracy and consistency in interpretation, as confirmed by well test data.

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