当岩石物理学遇到大数据:机器能做什么?

Chicheng Xu, S. Misra, P. Srinivasan, S. Ma
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引用次数: 32

摘要

岩石物理学是一门桥梁工程和地球科学的关键学科,用于油藏表征和开发。新的传感器技术可以将大容量、多尺度、高维的岩石物理数据实时传输到我们的数据库中。岩石物理数据类型非常多样化,包括数值曲线、阵列、波形、图像、地图、三维体和文本。所有数据都可以用深度(连续或离散)或时间进行索引。岩石物理数据具有大数据的所有“7V”特征,即体积、速度、多样性、可变性、准确性、可视化和价值。本文将概述适用于岩石物理大数据分析的机器学习方法的理论和应用。最近的出版物表明,岩石物理数据驱动分析(PDDA)已经成为岩石物理学中一个活跃的分支学科。岩石物理文献中的现场实例将用于说明机器学习在以下技术领域的优势:(1)地质相分类或岩石物理岩石分型;(2)岩石地震性质或岩石物理建模;(3)岩石物理/地球化学/地质力学性质预测;(3)测井工具快速物理建模;(4)井、储层监测;(6)自动化数据质量控制;(7)伪数据生成;(八)测井或取心作业指导。本文还将回顾在实现岩石物理学科机器学习的潜在改变游戏规则的价值之前需要克服的主要挑战。首先,应建立坚实的理论基础,支持机器学习在岩石物理解释中的应用;其次,现有机器学习算法的效用必须在不同的岩石物理任务和不同的数据场景中进行评估和测试;第三,需要实施控制机器学习算法中使用的数据质量的程序,并且需要适当地解决相关的不确定性。本文将展望在第四次工业革命(IR4.0)时代,利用先进的数据分析解决具有挑战性的油田问题的未来机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
When Petrophysics Meets Big Data: What can Machine Do?
Petrophysics is a pivotal discipline that bridges engineering and geosciences for reservoir characterization and development. New sensor technologies have enabled real-time streaming of large-volume, multi-scale, and high-dimensional petrophysical data into our databases. Petrophysical data types are extremely diverse, and include numeric curves, arrays, waveforms, images, maps, 3-D volumes, and texts. All data can be indexed with depth (continuous or discrete) or time. Petrophysical data exhibits all the "7V" characteristics of big data, i.e., volume, velocity, variety, variability, veracity, visualization, and value. This paper will give an overview of both theories and applications of machine learning methods as applicable to petrophysical big data analysis. Recent publications indicate that petrophysical data-driven analytics (PDDA) has been emerging as an active sub-discipline of petrophysics. Field examples from the petrophysics literature will be used to illustrate the advantages of machine learning in the following technical areas: (1) Geological facies classification or petrophysical rock typing; (2) Seismic rock properties or rock physics modeling; (3) Petrophysical/geochemical/geomechanical properties prediction; (3) Fast physical modeling of logging tools; (4) Well and reservoir surveillance; (6) Automated data quality control; (7) Pseudo data generation; and (8) Logging or coring operation guidance. The paper will also review the major challenges that need to be overcome before the potentially game-changing value of machine learning for petrophysics discipline can be realized. First, a robust theoretical foundation to support the application of machine leaning to petrophysical interpretation should be established; second, the utility of existing machine learning algorithms must be evaluated and tested in different petrophysical tasks with different data scenarios; third, procedures to control the quality of data used in machine leaning algorithms need to be implemented and the associated uncertainties need to be appropriately addressed. The paper will outlook the future opportunities of enabling advanced data analytics to solve challenging oilfield problems in the era of the 4th industrial revolution (IR4.0).
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