人工智能(AI) /机器学习(ML)提高了资本效率,最大限度地降低了勘探开发作业中的地质风险

A. Aming
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引用次数: 0

摘要

本文介绍了人工智能(AI) /机器学习(ML)技术如何在勘探、钻井作业、现场评估、开发和多个3D地震量比较中使用无监督遗传算法,以最大限度地降低地质风险和不确定性,从而提高资本效率。我们将对该技术的发明原因及其工作原理进行高层次的概述。我们将向您展示如何使用它来显着减少实现组织目标的时间,同时减少岩土工程风险和不确定性,并优化从Lead到生产的周期时间。产出包括对整个3D地震数据量的综合分析,以确定近期、中期和长期具有高资源潜力的优质线索和前景。该方法可以评估油田地质风险(油藏分布、圈闭、密封、烃源、油气从源到储层的运移路径),并在不中断当前工作流程的情况下进行初步的烃含量/类型评估(例如DHI评估)。结果将迅速描绘出可能的构造和地层目标。这也将为生产资产的评估和开发钻井项目提供额外的支持。提高采收率/提高采收率(IOR / EOR)项目中水平井和注水井/采油口的最佳位置是在油藏连续性最高的区域,以优化从概念到生产的周期时间。所提供的案例研究和示例将展示该技术和方法如何提高成功的可能性,从而提高资本效率和盈利能力。
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Artificial Intelligence AI / Machine Learning ML Drives Increased Capital Efficiency and Minimizes Geological Risk in E&P Operations
This paper presents how Artificial Intelligence (AI) / Machine Learning (ML) technology uses unsupervised genetics algorithms in Exploration, Drilling Operations, Field Appraisal, Development and multiple 3D seismic volumes comparisons to minimize geological risk and uncertainty resulting in increased capital efficiency. We will present a high level overview of why this technology was invented and how it works. We will show you how you can use it to significantly reduce the time to achieve your organizational goals while reducing geotechnical risk and uncertainty and optimize the cycle time from Lead to Production. Outputs include a comprehensive analysis of your entire 3D Seismic Data Volume to identify and high grade, quality leads and prospects with high resource potential in the near, medium and long term. This approach will allow an evaluation of the field geological risk (reservoir distribution, trap, seal, source, hydrocarbon migration pathway from source into reservoir) and initial possible hydrocarbon content/type evaluation (e.g. DHI evaluation) without disrupting your current workflow. The results will quickly delineate possible structural and stratigraphic targets. This will also provide the Production Asset with additional support in their appraisal and development drilling programmes. Optimally place horizontal wells and injectors / offtakes in Improved Oil Recovery/Enhanced Oil Recovery (IOR / EOR) projects in areas of the field having the highest reservoir continuity to optimize the cycle time from concept to production. The case studies and examples presented will demonstrate how the technology and approach serve to increase the probability of success leading to increased capital efficiency and profitability.
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