失水事件的检测、预测和处理综述

IF 1.827 Q2 Earth and Planetary Sciences Arabian Journal of Geosciences Pub Date : 2024-12-09 DOI:10.1007/s12517-024-12142-9
Mohamed Amish, Mohamed Khodja
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引用次数: 0

摘要

漏失有可能造成地层破坏、井筒不稳定和井喷。目前已经引入了许多方法,但由于现场的一些限制,目前还没有行业通用的解决方案来预测漏失。预测漏失的发生对于减轻其影响、降低作业成本和防止对人员和环境造成风险至关重要。本文综述了各种方法、技术和处理方法,包括环保材料,以减轻循环损失。提出了检测和预测漏失事件的常规方法和智能方法。利用油田数据,如流体参数、钻井参数和地质参数,人工智能可以使用监督机器学习(ML)来预测流体损失。本文综述了几种预测失水的ML模型,并讨论了其他可能的应用。提取样本大小、字段位置、输入和输出特征、性能和ML算法。该论文全面介绍了流体漏失预测的ML工作流程,有望帮助和支持钻井工程从业者和研究人员解决钻井挑战,并为未来的发展提出建议。
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Review of detection, prediction and treatment of fluid loss events

Lost circulation has the potential to cause formation damage, wellbore instability and a blowout. Many methods have been introduced, but there is no industry-wide solution available to predict lost circulation due to some constraints in the field. It is essential to predict the onset of loss of circulation to mitigate its effects, reduce operational costs and prevent the risk to people and the environment. A wide range of methods, techniques and treatments, including environmentally friendly materials, are reviewed to mitigate the loss of circulation. Conventional and intelligent methods are presented for detecting and predicting lost circulation events. Using oil field data such as fluid parameters, drilling parameters and geological parameters, artificial intelligence can predict fluid losses using supervised machine learning (ML). Several ML models for predicting fluid loss are reviewed in this paper, and other possible applications are discussed. The sample size, field location, input and output features, performance and ML algorithms are extracted. The paper provides an inclusive presentation of the ML workflow for fluid loss prediction and is anticipated to help and support both drilling engineering practitioners and researchers in the resolution of drilling challenges, with recommendations for future development.

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来源期刊
Arabian Journal of Geosciences
Arabian Journal of Geosciences GEOSCIENCES, MULTIDISCIPLINARY-
自引率
0.00%
发文量
1587
审稿时长
6.7 months
期刊介绍: The Arabian Journal of Geosciences is the official journal of the Saudi Society for Geosciences and publishes peer-reviewed original and review articles on the entire range of Earth Science themes, focused on, but not limited to, those that have regional significance to the Middle East and the Euro-Mediterranean Zone. Key topics therefore include; geology, hydrogeology, earth system science, petroleum sciences, geophysics, seismology and crustal structures, tectonics, sedimentology, palaeontology, metamorphic and igneous petrology, natural hazards, environmental sciences and sustainable development, geoarchaeology, geomorphology, paleo-environment studies, oceanography, atmospheric sciences, GIS and remote sensing, geodesy, mineralogy, volcanology, geochemistry and metallogenesis.
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