A Data Driven P-V-T Model to Predict the Oil Formation Volume Factor, Solution GOR and Bubble Point Pressure for Characterizing an Oil Reservoir

Saket Kumar, Sandarbh Gautam, Nitu Kumari Thakur, Murtaza Ahmed Khan, Sikandar Kumar
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引用次数: 1

Abstract

Characterizing an oil reservoir requires one to understand the Pressure- Volume-Temperature (PVT) properties of reservoir fluids, especially bubble point pressure, solution gas oil ratio and oil formation volume factor because of its more often utilization in reservoir engineering studies. The current correlations are restricted by the use of sample from a particular field. As the physical properties and the composition of the crude oil varies the results becomes erroneous after a specific range. This correlation will give results only over a specific range of properties like specific gravity, viscosity, composition etc. The challenge is to develop a new approach which overcomes the current shortcomings. In this paper a new machine learning based model has been developed using Interactive Multivariate Linear Regression (I-MLR) method by integrating a large number of datasets to predict above mentioned properties. It overcomes the restriction of the previous correlations as it does not use data from any particular field. As such it is applicable over wide range of physical properties and composition. This model does not require any laboratory studies which makes it more economical. The validation of the model is done after detailed comparative study done with various commercially used empirical correlations.
一种数据驱动的P-V-T模型,用于预测油藏体积系数、溶液GOR和气泡点压力
表征油藏需要了解储层流体的压力-体积-温度(PVT)特性,特别是泡点压力、溶液气油比和地层体积因子,因为它们在油藏工程研究中使用得更多。当前的相关性受到来自特定领域的样本使用的限制。由于原油的物理性质和成分的变化,在一定范围后,结果就会出错。这种相关性只能给出特定范围内的结果,如比重、粘度、成分等。挑战在于开发一种克服目前缺点的新方法。本文利用交互式多元线性回归(I-MLR)方法,通过整合大量数据集,建立了一种新的基于机器学习的模型来预测上述属性。它克服了以前相关性的限制,因为它不使用来自任何特定字段的数据。因此,它适用于广泛的物理性质和组成。这个模型不需要任何实验室研究,这使它更经济。在与各种商业上使用的经验相关性进行了详细的比较研究之后,对模型进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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