地质力学建模计算机视觉软件中的机器学习

A. Noufal, Jaijith Sreekantan, Rachid Belmeskine, M. Amri, A. Benaichouche
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引用次数: 1

摘要

AI-GEM (Artificial Intelligence of Geomechanics Earth Modelling)工具旨在检测地质力学特征,特别是弹性参数和应力。描述井筒不稳定问题是增加钻井成本的因素之一,创建基于人工智能的工具将增强并提供井筒不稳定的实时解决方案。这些特征通常是根据经验手动解释的,并且通常受到由于有偏见或缺乏经验的口译员造成的不一致的影响。因此,需要一种强大的自动或半自动方法来减少时间、人工效率和一致性。地质力学问题的范围很广,并且与许多其他上游学科(例如,岩石物理学,地球物理学,生产地质学,钻井和油藏工程)相关联。安全有效的现场作业建立在对整个油田生命周期的地下地应力状态的理解和实施的基础上;通过深思熟虑的数据收集和表征程序来量化关键的地下不确定性。与适当的地质力学建模和现场监测/监测策略相结合。在任何地质力学项目的设计阶段,都必须解决两个主要问题。第一个也是最重要的是对岩石的预期力学行为及其由于钻探而产生的潜在反应作出现实的估计。二是针对确定的岩石特性,设计经济、安全的井及支护方法。设计过程从可行性研究开始,然后是初步设计、详细设计、投标设计和整个施工过程。随着获得的信息越来越多,设计在每个阶段都会不断更新,这需要地质学家、工程师和主题专家在整个项目阶段的参与。所有地质力学设计的中心问题是井-岩相互作用,这不仅包括最终状态,还包括井过程的瞬态效应,以及相关岩石性质的时间和应力。在机器学习框架的帮助下,实现机械地球模型的端到端工作流程是自动化的、指导的和编排的,机器学习框架包括邻井数据的推荐引擎、测井曲线的预测,以及对现有测试结果的所有校准的优化,使最终用户能够运行灵敏度和场景分析等等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning in Computer Vision Software for Geomechanics Modeling
AI-GEM (Artificial Intelligence of Geomechanics Earth Modelling) tool aims to detect the geomechanical features, especially the elastic parameters and stresses. Characterizing the wellbore instability issues is one of the factors increases cost of drilling and creating an AI-based tool will enhance and present a real-time solution for wellbore instability. These features are usually interpreted manually, depending on the experience and usually impacted by inconsistencies due to biased or unexperienced interpreters. Therefore, there is a need for a robust automatic or semiautomatic approach to reduce time, manual efficiency and consistency. The range of Geomechanics issues is wide and interfaces with many other upstream disciplines (e.g., Petrophysics, Geophysics, Production Geology, Drilling and Reservoir Engineering). Safe and effective field operation is built on the understanding and implementation of the subsurface in-situ stress state throughout the life of the field; the quantification of key subsurface uncertainties through well thought-out data gathering and characterization programs. The integration with appropriate Geomechanics modelling and the field surveillance /monitoring strategy. There are two major aspects that must be addressed during the design phase of any Geomechanics project. The first and most important is developing a realistic estimate of the expected mechanical behaviour of the rocks and its potential response as a result of drilling. The second is to design an economic, safe well and support method for the determined rocks behaviour. The design process begins with the feasibility study followed by preliminary design, the detail design, tender design and throughout the construction. The design is constantly updated during each phase as more information becomes available and this requires the involvement of Geologists, Engineers and Subject Matter Expert throughout the phases of a project. A central concern for all geomechanical designs is the well-rock interaction, which is not only includes the final state but also the transient effects of the well processes as well as time and stress of the dependent rock properties. The end-to-end workflow to achieve the mechanical earth model is automated, guided and orchestrated with the help of machine learning framework such as recommendation engine for offset well data, prediction of well logs, and optimization for all calibration with existing test results, enabling end users to run sensitivity and scenario analysis so on and so forth.
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