Automated Geosteering While Drilling Using Machine Learning. Case Studies

I. Denisenko, I. Kuvaev, I. Uvarov, Oleg Evgenievich Kushmantzev, Artem Igorevich Toporov
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Abstract

Today's oil & gas industry faces a number of different challenges. Drilling activities are ramping up due to an increase in hydrocarbon demand combined with a reduction of easy-to-recover reserves. Horizontal drilling is growing and has become an integral part of field development. The geology is becoming more and more complex requiring drilling through dense layers targeting thin-layered reservoirs with lateral changes and anisotropy. In recent years, companies have been looking at the ways of optimizing drilling costs by increasing efficiency and process automation. This has been a driver for many companies to stay profitable and efficient in the market. One of the areas of interest for process automation has been a geosteering. Geosteering is the real-time adjustment well trajectory while drilling to maximize effective footage in the target zone. In this paper, innovative new approaches to automation of the geosteering process will be discussed. This approach has been successfully tested and deployed in several leading O&G companies. The main objective of automated geosteering is to optimize horizontal well placement while freeing up time operational geologists had spent doing routine work in order to focus on complex and more intense tasks as well as the reduction of operational errors related to human factors. This paper will provide details on several automated geosteering algorithms. They have been tested successfully on large numbers of wells. The results of automated geosteering were as close as 90% to the manual interpretations done by geologists. When the results diverged, the geologists often "agreed" with the interpretation proposed by the algorithm.
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利用机器学习实现钻井时的自动地质导向。案例研究
当今的油气行业面临着许多不同的挑战。由于油气需求的增加以及易于开采的储量的减少,钻井活动正在增加。水平钻井技术不断发展,已成为油田开发的重要组成部分。地质条件越来越复杂,需要钻透致密层,瞄准具有侧向变化和各向异性的薄层储层。近年来,公司一直在寻找通过提高效率和过程自动化来优化钻井成本的方法。这一直是许多公司在市场上保持盈利和高效的动力。过程自动化感兴趣的领域之一是地质导向。地质导向是在钻井过程中实时调整井眼轨迹,以最大限度地提高目标区域的有效进尺。本文将讨论地质导向过程自动化的创新方法。这种方法已经成功地在几家领先的油气公司进行了测试和应用。自动化地质导向的主要目标是优化水平井布局,同时节省作业地质学家在日常工作中花费的时间,以便专注于复杂和更激烈的任务,并减少与人为因素相关的操作错误。本文将详细介绍几种自动地质导向算法。它们已经在大量井中进行了成功的测试。自动地质导向的结果与地质学家人工解释的结果接近90%。当结果出现分歧时,地质学家往往“同意”算法提出的解释。
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