通过现有油气井预测天然气运移

Q2 Earth and Planetary Sciences
James A. Montague, G. Pinder, T. Watson
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引用次数: 18

摘要

根据已知的井龄和深度等特性,准确预测流体从深度通过现有井运移的概率,这将极大地有助于理解运移途径的发展,并在没有广泛现场测试的情况下识别潜在的运移。流体通道的存在是一个重要的环境问题,因为这种通道允许天然存在的甲烷或封存的二氧化碳气体进入大气。在本文中,我们根据加拿大阿尔伯塔省现有深井的特点,探索了各种预测模型预测现有气井天然气运移的能力。阿尔伯塔省之所以被选为案例研究,是因为该地区有数据,自1995年以来,该地区要求在钻机释放后对油井进行路径开发测试。在废弃油井之前,不需要对未显示路径开发的油井进行进一步测试。我们表明,准确预测流体运移需要有关井结构、产量和流体性质的详细信息,即使如此,本研究中考虑的模型也会对大量井进行错误分类。这表明其他因素可能有助于通路的形成。在调查的模型中,随机森林在该数据集上提供了最好的结果,正确识别了78%的使用井。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting gas migration through existing oil and gas wells
The ability to accurately predict the probability of fluid migration from depth through existing wells based on known well properties, such as age and depth, would be enormously helpful in understanding how migration pathways develop and the identification of potential migration without extensive field tests. The presence of fluid pathways is an important environmental issue because such pathways allow gas, either naturally occurring methane or sequestered CO2, to move into the atmosphere. In this paper, we explore the ability of various predictive models to forecast gas migration at existing wells in Alberta, Canada, based upon the characteristics of existing deep wells. Alberta was selected as a case study because of the availability of data in an area that has required wells to be tested for pathway development after rig release since 1995. Wells that do not demonstrate pathway development require no further testing until the well is abandoned. We show that accurately predicting fluid migration requires detailed information on well construction, production, and fluid properties, and even then, the models considered in this study misclassify a large number of wells. This suggests other factors may contribute to pathway formation. Of the models investigated, random forests provide the best results on this data set, correctly identifying 78% of the wells used.
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来源期刊
Environmental Geosciences
Environmental Geosciences Earth and Planetary Sciences-Earth and Planetary Sciences (all)
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