机器学习预测甲烷、乙烷和丙烷在纯水和电解质溶液中的溶解度:杂散气体迁移模型的意义

IF 1.4 4区 地球科学 Q3 GEOCHEMISTRY & GEOPHYSICS
Ghazal Kooti, Reza Taherdangkoo, Chaofan Chen, Nikita Sergeev, Faramarz Doulati Ardejani, Tao Meng, Christoph Butscher
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引用次数: 0

摘要

水力压裂是从非常规页岩和致密气藏中提取碳氢化合物的有效技术。水力压裂法的一个潜在风险是杂散气体从深层地下向上迁移到浅层含水层。杂散气体会溶解在地下水中,导致化学和生物反应,从而对地下水质量产生负面影响,并造成大气排放。了解轻烃在水环境中的溶解度对于地下流动和传输的数值建模至关重要。在此,我们编制了一个数据库,其中包含 2129 个甲烷、乙烷和丙烷在纯水和各种电解质溶液中的溶解度实验数据,工作温度和压力范围很广。采用了两种机器学习算法,即回归树(RT)和用贝叶斯优化算法(BO)调整的提升回归树(BRT),来确定气体的溶解度。预测结果与实验数据以及四个成熟的热力学模型进行了比较。我们的分析表明,BRT-BO 具有足够的准确性,预测值与热力学模型得出的值非常吻合。实验值和预测值之间的判定系数(R2)为 0.99,平均平方误差(MSE)为 9.97 × 10-8。杠杆统计方法进一步证实了所开发模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning prediction of methane, ethane, and propane solubility in pure water and electrolyte solutions: Implications for stray gas migration modeling

Hydraulic fracturing is an effective technology for hydrocarbon extraction from unconventional shale and tight gas reservoirs. A potential risk of hydraulic fracturing is the upward migration of stray gas from the deep subsurface to shallow aquifers. The stray gas can dissolve in groundwater leading to chemical and biological reactions, which could negatively affect groundwater quality and contribute to atmospheric emissions. The knowledge of light hydrocarbon solubility in the aqueous environment is essential for the numerical modelling of flow and transport in the subsurface. Herein, we compiled a database containing 2129 experimental data of methane, ethane, and propane solubility in pure water and various electrolyte solutions over wide ranges of operating temperature and pressure. Two machine learning algorithms, namely regression tree (RT) and boosted regression tree (BRT) tuned with a Bayesian optimization algorithm (BO) were employed to determine the solubility of gases. The predictions were compared with the experimental data as well as four well-established thermodynamic models. Our analysis shows that the BRT-BO is sufficiently accurate, and the predicted values agree well with those obtained from the thermodynamic models. The coefficient of determination (R2) between experimental and predicted values is 0.99 and the mean squared error (MSE) is 9.97 × 10−8. The leverage statistical approach further confirmed the validity of the model developed.

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来源期刊
Acta Geochimica
Acta Geochimica GEOCHEMISTRY & GEOPHYSICS-
CiteScore
2.80
自引率
6.20%
发文量
1134
期刊介绍: Acta Geochimica serves as the international forum for essential research on geochemistry, the science that uses the tools and principles of chemistry to explain the mechanisms behind major geological systems such as the Earth‘s crust, its oceans and the entire Solar System, as well as a number of processes including mantle convection, the formation of planets and the origins of granite and basalt. The journal focuses on, but is not limited to the following aspects: • Cosmochemistry • Mantle Geochemistry • Ore-deposit Geochemistry • Organic Geochemistry • Environmental Geochemistry • Computational Geochemistry • Isotope Geochemistry • NanoGeochemistry All research articles published in this journal have undergone rigorous peer review. In addition to original research articles, Acta Geochimica publishes reviews and short communications, aiming to rapidly disseminate the research results of timely interest, and comprehensive reviews of emerging topics in all the areas of geochemistry.
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