Student Mixture and Its Machine Learning Applications to PVT Properties of Reservoir Fluids

N. Volkov, Elizaveta Yuryevna Dakhova, S. Budennyy, A. Andrianova
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Abstract

Distribution mixture models are widely used in cluster analysis. Particularly, a mixture of Student t-distributions is mostly applied for robust data clustering. In this paper, we introduce EM algorithm for a mixture of Student distributions, where at the E-step, we apply variational Bayesian inference for parameters estimation. Based on a mixture of Student distributions, a machine learning method is constructed that allows solving regression problems for any set of features, clustering, and anomaly detection within one model. Each of these problems can be solved by the model even if there are missing values in the data. The proposed method was tested on real data describing the PVT properties of reservoir fluids. The results obtained by the model do not contradict the basic physical properties. In majority of conducted experiments our model gives more accurate results than well-known machine learning methods in terms of MAPE and RMSPE metrics.
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学生混合及其机器学习在储层流体PVT特性中的应用
分布混合模型在聚类分析中得到了广泛的应用。特别地,Student t-分布的混合主要应用于稳健的数据聚类。在本文中,我们介绍了一种混合Student分布的EM算法,其中在E步骤,我们将变分贝叶斯推理应用于参数估计。基于Student分布的混合,构建了一种机器学习方法,该方法允许在一个模型内解决任何一组特征、聚类和异常检测的回归问题。即使数据中缺少值,模型也可以解决这些问题中的每一个。在描述储层流体PVT特性的真实数据上对所提出的方法进行了测试。该模型得到的结果与基本物理性质并不矛盾。在大多数进行的实验中,我们的模型在MAPE和RMSPE指标方面比众所周知的机器学习方法给出了更准确的结果。
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来源期刊
Advances in Systems Science and Applications
Advances in Systems Science and Applications Engineering-Engineering (all)
CiteScore
1.20
自引率
0.00%
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0
期刊介绍: Advances in Systems Science and Applications (ASSA) is an international peer-reviewed open-source online academic journal. Its scope covers all major aspects of systems (and processes) analysis, modeling, simulation, and control, ranging from theoretical and methodological developments to a large variety of application areas. Survey articles and innovative results are also welcome. ASSA is aimed at the audience of scientists, engineers and researchers working in the framework of these problems. ASSA should be a platform on which researchers will be able to communicate and discuss both their specialized issues and interdisciplinary problems of systems analysis and its applications in science and industry, including data science, artificial intelligence, material science, manufacturing, transportation, power and energy, ecology, corporate management, public governance, finance, and many others.
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