通过使用AI/ML技术在测井数据质量控制和验收过程中实现自动化,实现生产力和操作效率,并获得高质量数据

B. Akbar, H. Al-Aradi, P. Achmad, Waqar Ullah Khan
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引用次数: 0

摘要

在过去十年中,科威特石油公司(KOC)油田作业产生的测井数据和报告量急剧增加。目前,KOC每周收到大约100到200个测井包。每个包可能包含数百个井日志文件。大多数情况下,接收、管理和将如此数量的数据加载到Corporate Database的过程都是手动的,涉及7到9个资源。如果他们的数据交付被批准或拒绝,伐木公司可能需要等待至少一周才能收到决定。勘探和生产信息管理(E&P IM)团队启动了一项计划,通过开发和实施使用人工智能和机器学习技术的解决方案来加速和自动化这些过程,以提高生产力和运营效率,并获得高质量的数据。主要结果是获得了符合E&P IM测井标准和规范的高质量数据,处理时间缩短了80%,作业效率提高了66%,可以将资源分配到更有价值的活动上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Achieving Productivity and Operational Efficiency, and High-Quality Data Through Automation in Well Log Data Quality Control and Acceptance Process Using AI/ML Techniques
Well log data and reports volume generated by oilfield operations in Kuwait Oil Company (KOC) have increased tremendously over the last decade. Currently, KOC receives around 100 to 200 well log packages every week. Each package may contain hundreds of well log files. Mostly, the processes to receive, manage and load this amount of data into the Corporate Database were manual, involving 7 to 9 resources. Logging companies may have to wait a minimum of a week to receive the decision if their data delivery is approved or rejected. The Exploration and Production Information Management (E&P IM) team started an initiative to accelerate and automate these processes by developing and implementing a solution using Artificial Intelligence and Machine Learning techniques to increase productivity and operational efficiency and achieve high-quality data. The main results are high-quality data that meet E&P IM Well Log Standard and Specification, the processing time is reduced by 80%, and the operational efficiency is improved by 66%, allowing the resources assignment to more valuable activities.
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