Correlation of Pore Volume Compressibility with Porosity in One of the Iranian Southern Carbonate Reservoirs
Publish place: 3rd Iranian Petroleum Engineering Congress
Publish Year: 1390
Type: Conference paper
Language: English
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Document National Code:
IPEC03_159
Index date: 28 June 2014
Correlation of Pore Volume Compressibility with Porosity in One of the Iranian Southern Carbonate Reservoirs abstract
Pore volume compressibility is one of the most important parameters that must be considered in reservoir calculations. Due to the timeconsuming and expensive procedure of laboratory measurements, an accurate estimation of pore volume compressibility is necessary forprecise simulation of the reservoir behavior.In the present study, porevolume compressibility data of one of the Iranian southern carbonate reservoirs has been used. A total of fifteen samples from three wells were selected for laboratory measurements. Petrographical analysis wasconducted for determination of rock type and pore structure of thesamples, then the effects of pressure and porosity on pore compressibility was investigated. The result of this study has shown that pore volume compressibility of the selected samples, which almost were pure limestone, has good correlations with porosity and pressure. Then a new formula for pore volume compressibility versus porosity has presented and has compared with published correlations.
Correlation of Pore Volume Compressibility with Porosity in One of the Iranian Southern Carbonate Reservoirs Keywords:
Correlation of Pore Volume Compressibility with Porosity in One of the Iranian Southern Carbonate Reservoirs authors
Hamid Akhoundzadeh
Petroleum University of Technology (PUT), Abadan, Iran
Jamshid Moghadasi
Petroleum University of Technology (PUT), Abadan, Iran
Bahram Habibnia
Petroleum University of Technology, Abadan, Iran
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