机器学习算法在巴治诺夫组储层物性预测中的应用

A.S Ugryumov, A. Kolomytsev, B. Plotnikov, A. Kasyanenko
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引用次数: 0

摘要

该工作探讨了如何使用不同的机器学习算法来预测Bazhenov地层储层性质,如岩石类型、重烃和干酪根体积分数、总有机碳含量、总孔隙度、有效孔隙度和动态孔隙度以及水饱和度。提出了数据处理和处理的工作流程,并研究了各种机器学习模型的应用。最后,讨论了不同软件之间数据互操作性的实际问题,并给出了在油藏建模中实现所得趋势的技巧。
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Application of Machine Learning Algorithms for Prediction of Reservoir Properties in Bazhenov Formation from Simultaneous Inversion
Summary The work explores how different machine learning algorithms can be used to predict Bazhenov formation reservoir properties such as rock type, heavy hydrocarbons and kerogen volume fraction, total organic carbon content, total, effective and dynamic porosity and water saturation from the results of simultaneous inversion of seismic data. The workflow for data processing and handling is proposed and application of various machine-learning models is investigated. Finally, practical issues of data interoperability between different pieces of software are discussed and tips on implementation of the obtained trends in reservoir modeling are given.
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