基于人工智能的水平井布置优化,利用地质和工程属性,以及基于专家的工作流程

Lichi Deng, A. Salehi, Wassim Benhallam, H. Darabi, D. Castineira
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引用次数: 0

摘要

水平井提供了一种高效的方法,可以最大限度地与储层目标接触,并通过允许更大的排水模式来提高总体采收率。传统上,最佳水平井位置的确定涉及多个学科的专业知识,需要很长时间才能完成。在这项工作中,引入了一个完全简化的基于人工智能(AI)的工作流程,通过结合所有类型储层的地质和工程属性,促进水平机会识别。该工作流程依赖于自动化的地质和工程工作流程来绘制剩余油的位置,并确定具有高成功率(POS)和高生产力潜力的区域。先进的计算算法在各种物理约束条件下实现,以确定最佳的井眼段。统计和机器学习技术相结合,以评估邻近地区的性能和地质风险,以及预测拟议目标的未来生产性能。最后,提出了一个全面的审查和分类框架,以确保最终确定的机会对油田开发计划是可行的。该工作流程结合了水平井布置的多种配置和轨迹约束,如长度/方位角/倾角范围、层间穿越、断层避免等。优化引擎使用拉丁超立方体采样(Latin-Hypercube Sampling, LHS)生成的初始猜测集合进行初始化,以确保均匀考虑模型中POS分布良好的所有区域。离散网格索引与连续空间坐标之间的智能映射大大减少了优化所需的时间和计算资源,从而能够快速确定百万单元模型的目标段。优化算法通过全球3D产层跟踪识别潜在目标位置,并使用干扰分析进一步优化分段,选择最佳的非干扰目标集,以实现产量最大化。该框架已成功应用于中东、北美和南美的多个大型成熟资产,这些资产拥有庞大的数据集和复杂性,并且在静态和动态油藏模型不可用、部分可用或过时的情况下。在本文介绍的具体案例研究中,该工作流程应用于中东的一个大型油田,该油田最初识别并审查了数十个斜井或水平井的机会。提出的方法将传统的劳动密集型水平目标识别工作转变为高精度的智能自动化工作流程。已实现的优化引擎以及其中突出的其他功能,实现了闪电般快速、高度可定制的工作流程,可以在高地质复杂性和跨不同学科的大量数据集下识别初始机会库存。此外,数据驱动的核心算法最大限度地减少了人类的偏见和主观性,并允许重复分析。
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Artificial-Intelligence Based Horizontal Well Placement Optimization Leveraging Geological and Engineering Attributes, and Expert-Based Workflows
Horizontal wells provide a highly efficient way to maximize contact with the reservoir target and to increase overall recovery by allowing a larger drainage pattern. Traditionally, the identification of optimal horizontal well locations involves domain expertise across multiple disciplines and takes a long time to complete. In this work, a fully streamlined artificial intelligence (AI)-based workflow is introduced to facilitate horizontal opportunity identification by combining geological and engineering attributes in all types of reservoirs. This workflow relies on automated geologic and engineering workflows to map the remaining oil in place and identify areas with high probability of success (POS) and high productivity potential. Advanced computational algorithms are implemented under a variety of physical constraints to identify best segments for placing the wellbores. Statistical and machine learning techniques are combined to assess neighborhood performance and geologic risks, along with forecasting the future production performance of the proposed targets. Finally, a comprehensive vetting and sorting framework is presented to ensure the final set of identified opportunities are feasible for the field development plan. The workflow incorporates multiple configuration and trajectory constraints for the horizontal wells’ placement, such as length/azimuth/inclination range, zone-crossing, fault-avoidance, etc. The optimization engine is initialized with an ensemble of initial guesses generated with Latin-Hypercube Sampling (LHS) to ensure all regions of good POS distribution in the model are evenly considered. The intelligent mapping between discrete grid indexing and continuous spatial coordinates greatly reduced the timing and computational resources required for the optimization, thus enabling a fast determination of target segments for multi- million-cell models. The optimization algorithm identifies potential target locations with 3D pay tracking globally, and the segments are further optimized using an interference analysis that selects the best set of non-interfering targets to maximize production. This framework has been successfully applied to multiple giant mature assets in the Middle East, North and South America, with massive dataset and complexity, and in situations where static and dynamic reservoir models are unavailable, partially available, or are out of date. In the specific case study presented here, the workflow is applied to a giant field in the Middle East where tens of deviated or horizontal opportunities are initially identified and vetted. The methodology presented turns the traditional labor-intensive task of horizontal target identification into an intelligently automated workflow with high accuracy. The implemented optimization engine, along with other features highlighted within, has enabled a lightning-fast, highly customizable workflow to identify initial opportunity inventory under high geological complexity and massive dataset across different disciplines. Furthermore, the data-driven core algorithm minimizes human biases and subjectivity and allows for repeatable analysis.
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