Advancing sandstone reservoir compressibility prediction: A correlation-driven methodology

Q1 Earth and Planetary Sciences Petroleum Research Pub Date : 2024-06-01 DOI:10.1016/j.ptlrs.2024.01.006
Tarek Ganat , Meftah Hrairi , Amr Badawy , Vahid Khosravi , Mohammed Abdalla
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Abstract

This study presents a correlation-based approach for predicting the compressibility of sandstone reservoir rocks. The study proposes a matrix of new empirical equations that significantly improve the precision of measuring the pore volume compressibility, with the most optimal fit of results based on a cubic polynomial model. The accuracy of the calculations was validated through comparison with actual data using root mean square method, and the suggested correlations significantly enhance the precise prediction of rock compressibility in sandstone reservoirs. In this study, the source of data collection is consolidated and unconsolidated sandstone from East Asia offshore oilfields. Accordingly, variations in compressibility with net overburden pressure over the course of the field's lifespan have been examined. The results demonstrate the application of regression analysis in establishing a network of linkages between independent and dependent variables. The proposed correlations for consolidated and unconsolidated sandstones offer a remarkable improvement in the accurate calculation of rock compressibility compared to traditional laboratory procedures, with an average error of 2.5% compared to 5–10% for laboratory measurements. The approach of this study offers a cost-effective and time-efficient alternative to remarkedly enhance the overall performance of sandstone reservoirs in the oil and gas industry.

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推进砂岩储层可压缩性预测:相关性驱动方法
本研究提出了一种基于相关性的方法来预测砂岩储层岩石的可压缩性。研究提出了一个新的经验方程矩阵,可显著提高孔隙体积可压缩性的测量精度,其最佳拟合结果基于三次多项式模型。利用均方根法与实际数据进行比较,验证了计算的准确性,所建议的相关性显著提高了砂岩储层岩石压缩性的精确预测。本研究收集的数据来源于东亚海上油田的固结和非固结砂岩。因此,研究了油田生命周期内可压缩性随覆盖层净压力的变化情况。结果表明,回归分析可用于建立自变量和因变量之间的联系网络。与传统的实验室方法相比,针对固结和非固结砂岩提出的相关方法在精确计算岩石可压缩性方面有显著改进,平均误差为 2.5%,而实验室测量误差为 5-10%。本研究的方法提供了一种成本效益高、时间效率高的替代方法,可显著提高油气行业砂岩储层的整体性能。
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来源期刊
Petroleum Research
Petroleum Research Earth and Planetary Sciences-Geology
CiteScore
7.10
自引率
0.00%
发文量
90
审稿时长
35 weeks
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