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Prediction of Asphaltene Precipitation in Live and Tank Crude Oil Using Gaussian Process Regression

机译:使用高斯过程回归预测活原油和储罐原油中的沥青质沉淀

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The study of asphaltene precipitation properties has been motivated by their propensity to aggregate, flocculate, precipitate, and adsorb onto interfaces. The tendency of asphaltenes to precipitation has posed great challenges for the petroleum industry. Since the nature of asphaltene solubility is yet unknown and several unmodeled dynamics are hidden in the original systems, the existing models may fail in prediction the asphaltene precipitation in crude oil systems. The authors developed some Gaussian process regression models to predict asphaltene precipitation in crude oil systems based on different subsets of properties and components of crude oil. Using feature selection techniques they found some subsets of properties of crude oil that are more predictive of asphaltene precipitation. Then they developed prediction models based on selected feature sets. Results of this research indicate that the proposed predictive models can successfully predict and model asphaltene precipitation in lank and live crude oils with good accuracy.
机译:对沥青质沉淀性能的研究是由于它们倾向于聚集,絮凝,沉淀和吸附在界面上。沥青质沉淀的趋势对石油工业提出了巨大的挑战。由于沥青质溶解度的性质尚不清楚,并且原始系统中隐藏了一些未建模的动力学,因此现有模型可能无法预测原油系统中的沥青质沉淀。作者开发了一些高斯过程回归模型,根据原油的性质和成分的不同子集来预测原油系统中的沥青质沉淀。他们使用特征选择技术发现了一些原油属性的子集,这些子集更能预测沥青质的沉淀。然后他们根据选定的特征集开发了预测模型。研究结果表明,所提出的预测模型可以成功地预测和模拟原油和活原油中的沥青质沉淀。

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