globalchange  > 气候变化与战略
DOI: 10.1016/j.petrol.2019.106598
论文题名:
A comparative analysis of bubble point pressure prediction using advanced machine learning algorithms and classical correlations
作者: Yang X.; Dindoruk B.; Lu L.
刊名: Journal of Petroleum Science and Engineering
ISSN: 9204105
出版年: 2020
卷: 185
语种: 英语
英文关键词: Bubble point pressure ; Correlations ; Fluid properties ; Machine learning methods (XGBoost, LightGBM, random forest regressor, MLP neural network, and super learner) ; PVT
Scopus关键词: Bottom hole pressure ; Decision trees ; Forecasting ; Gases ; Life cycle ; Machine learning ; Multilayer neural networks ; Oil wells ; Petroleum prospecting ; Porous materials ; Bubble point pressure ; Correlations ; Empirical correlations ; Exploration and productions ; Fluid property ; Machine learning models ; Pressure-volume-temperatures ; Random forests ; Learning algorithms ; algorithm ; comparative study ; correlation ; enhanced oil recovery ; hydrocarbon reservoir ; machine learning ; pressure gradient ; temperature gradient ; volume
英文摘要: The need for fluid properties or PVT (Pressure-Volume-Temperature) properties, is part of the entire Exploration and Production (E&P) lifecycle from exploration to mature asset management to the typical later life events such as, Improved Oil Recovery (IOR). As the projects mature, the need for such data and its integration for various discipline-specific workflows and its interpretation in the light of reservoir performance varies. Among all the key PVT properties, bubble point pressure is probably the most important parameter. Bubble point pressure is important because it is the point at which constant composition and variable composition portions of the depletion paths merge. Geometrically, bubble point pressure appears to be a discontinuity. In addition, it dictates the existence (or not) of the incipient phase (i.e., gas phase) leading to the changes in the flow characteristics both in porous media and as well as within the wellbore and the facilities. Furthermore, it is also a good indicative of a possible gas cap when the reservoir is at saturation (reservoir pressure is equal to the bubble point pressure) or near-saturated. Among the highlighted uses, there are many more used such as the determination of the elements of miscibility, gas lift design, etc. Therefore, it is very important to estimate the bubble point pressure accurately. In this study, tree-based advanced machine learning algorithm including XGBoost, LightGBM, and random forest regressor, and multi-layer perceptron (neural network) regressor are implemented to predict bubble point pressure (Pbp). A novel super learner model which is also known as stacking ensemble is used to enhance base machine learning model performance on predicting bubble point pressure. Three datasets with different predictors are prepared to study machine learning algorithms' performance for three situations: only compositional data are available; only bulk properties (Gas-Oil-Ratio, gas gravity, API gravity and reservoir Temperature) are available; both compositional data and bulk properties are available. Through literature review, there is no research on using only compositional data and temperature to predict bubble point pressure. Our super learner model offers an accurate solution for oil bubble point pressure when only compositional data and temperature are available. Machine learning models perform better than empirical correlations with limited input data (i.e., bulk properties). When compositional data and bulk properties are all used as predictors, super learner reaches about 5.146% mean absolute relative error on predicting the bubble point pressure from global samples with bubble point pressures in the range of 100 to 10,000 psi, which is a wider range compared to most ANN models published in literature. © 2019 Elsevier B.V.
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/159974
Appears in Collections:气候变化与战略

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作者单位: Shell International E&P Inc., Data Science, United States; Shell International E&P Inc. & University of Houston, Petroleum Engineering, Mathematics and Data Science, United States

Recommended Citation:
Yang X.,Dindoruk B.,Lu L.. A comparative analysis of bubble point pressure prediction using advanced machine learning algorithms and classical correlations[J]. Journal of Petroleum Science and Engineering,2020-01-01,185
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