宋洪庆, 都书一, 周园春, 王宇赫, 王九龙. 油气资源开发的大数据智能平台及应用分析[J]. 工程科学学报, 2021, 43(2): 179-192. DOI: 10.13374/j.issn2095-9389.2020.07.21.001
引用本文: 宋洪庆, 都书一, 周园春, 王宇赫, 王九龙. 油气资源开发的大数据智能平台及应用分析[J]. 工程科学学报, 2021, 43(2): 179-192. DOI: 10.13374/j.issn2095-9389.2020.07.21.001
SONG Hong-qing, DU Shu-yi, ZHOU Yuan-chun, WANG Yu-he, WANG Jiu-long. Big data intelligent platform and application analysis for oil and gas resource development[J]. Chinese Journal of Engineering, 2021, 43(2): 179-192. DOI: 10.13374/j.issn2095-9389.2020.07.21.001
Citation: SONG Hong-qing, DU Shu-yi, ZHOU Yuan-chun, WANG Yu-he, WANG Jiu-long. Big data intelligent platform and application analysis for oil and gas resource development[J]. Chinese Journal of Engineering, 2021, 43(2): 179-192. DOI: 10.13374/j.issn2095-9389.2020.07.21.001

油气资源开发的大数据智能平台及应用分析

Big data intelligent platform and application analysis for oil and gas resource development

  • 摘要: 油气资源大数据智能平台的总体框架应以数据资源为基础、大数据平台算力为支撑、人工智能算法为核心,面向油气行业生产需求,构建集勘探、开发、生产数据于一体的油气数据资源池,通过数据清洗与融合提升数据质量,整合物理模拟与数据挖掘等手段,实现服务功能模块化,并在PC端、管控大屏、手机移动APP等多维平台实现智能监测、预警与展示。通过对深度学习等人工智能方法在油气工业领域的应用案例分析,表明其具有较好的应用前景。未来石油公司应与科研院所通力合作,挖掘石油工业数据的巨大潜能,实现降本增效,建设全新的智能油气工业生态圈,完成产业升级。

     

    Abstract: With the rapid improvement of exploration and monitoring technologies, the oil and gas industry has accumulated a large amount of data in the fields of seismic exploration, logging, production, and development. How to transform the huge “data resources” into “data assets” and fully utilize data and tap their real value to better serve society is a main concern in the oil and gas industry today. Therefore, the oil industry needs to complete the industrial upgrading of “Smart Oilfield” through digital and intelligent transformation. In recent years, the rise of big data technology and artificial intelligence have allowed international oil companies and oil service giants to accelerate the construction of digital and intelligent oil fields. The overall framework of the big data intelligent platform of oil and gas resources should be based on data resources with big data platform computing power as the support and artificial intelligence algorithms as the core. To meet the production needs of the oil and gas industry, it is of great urgency to build an oil and gas data resource pool that integrates exploration, development, and production data. The data quality can be improved via data cleaning and fusion. Physical simulations, data mining, and other approaches should be combined to achieve the modularization of service functions. Additionally, the goals of intelligent monitoring, early warning, and display on multi-dimensional platforms such as PC, control screen, and mobile apps can also be achieved. The analysis of artificial intelligence methods such as deep learning in the context of the oil and gas industry shows that these methods have good application prospects. In the future, oil companies should work together with scientific research institutes to tap the huge potential of oil industry data, achieve cost reduction and efficiency increase, and build a new smart oil and gas industrial ecosystem to complete industrial upgrading.

     

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