地下不确定性下多层/叠层油藏的人工智能井眼定位与设计优化

Shi Su, R. Schulze-Riegert, Hussein Mustapha, Philipp Lang, Chakib Kada Kloucha
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摘要

有效的井位和设计规划考虑了地下的不确定性,以估计产量和经济效益。油藏建模和模拟工作流程建立在集成方法的基础上,以管理生产预测的不确定性。集成的生成和解释需要更高程度的自动化分析和人工智能,以实现快速的价值提取和决策支持。这项工作为不确定情况下多层/堆叠油藏的稳健填充井布置和设计方案开发了实用的智能工作流程步骤。潜在的井目标通过一个机会指数进行分类,该机会指数由岩石和油气流动特性以及超过最小经济体积的连通体积共同定义。无监督学习技术用于自动搜索备选目标区域,即所谓的热点区域。有监督的机器/学习模型用于根据模拟和/或过去的生产经验预测填充井的性能。随机评估包括所有的集合情况,以捕获不确定性。直井、斜井、水平井和多分支井在技术和经济条件的限制下,可以最优地瞄准单个或连接多个热点区域。将结构化工作流设计应用于多层/堆叠油藏模型。地下的不确定性是由多个模型实现来描述和捕获的,这些模型实现受到历史井区域的限制。在经济约束下,确定了多层/叠层油藏的增产方案。这项工作表明,利用分析和机器学习技术,在高度自动化的情况下,稳健的井位和设计是如何建立在完整的案例集合之上的。计算了产量和经济目标,并与参考案例进行了比较,以进行鲁棒性解决方案验证和成功概率。综上所述,为了高效执行,需要一个全面的油藏驱动型油田开发策略。然而,自动化很好地适用于重复的工作流步骤,其中包括在经过验证的油藏模型集合中进行热点搜索。这项工作提供了一种集成的智能解决方案,可以在知情的情况下制定钻井位置和优化井设计。从案例生成到热点识别,讨论了具有嵌入式智能的更高自动化程度。在生产现场环境中解决了模型校准的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence for Infill Well Placement and Design Optimization in Multi-layered/stacked Reservoirs Under Subsurface Uncertainty
Effective well placement and design planning accounts for subsurface uncertainties to estimate production and economic outcomes. Reservoir modelling and simulation workflows build on ensemble approaches to manage uncertainties for production forecasting. Ensemble generation and interpretation requires a higher degree of automation analytics and artificial intelligence for fast value extraction and decision support. This work develops practical intelligent workflow steps for a robust infill well placement and design scenario in multi-layered/stacked reservoirs under uncertainty. Potential well targets are classified by an opportunity index defined by a combination of rock and hydrocarbon flow properties as well as connected volumes above a minimum economic volume. Unsupervised learning techniques are applied to automate the search for alternative target areas, so-called hotspot regions. Supervised machine/learning models are used to predict infill well performance based on simulated and/or past production experience. A stochastic evaluation including all ensemble cases is used to capture uncertainty. Vertical, deviated, horizontal and multilateral wells are proposed to optimally target single or connect to multiple hotspot regions under technical and economic constraints. A structured workflow design is applied to a multi-layered/stacked reservoir model. Subsurface uncertainties are described and captured by multiple model realizations, which are constrained in areas of historical wells. An infill well program for a multi-layered/stacked reservoir is defined for incremental production increase under economic constraints. This work shows how robust well location and design builds on the full ensemble of cases with a high degree of automation using analytics and machine-learning techniques. Both production and economic targets are calculated and compared to a reference case for robust solution verification and probability of success. In conclusion, an overall reservoir-driven field development strategy is required for efficient execution. However, automation is well applicable to repetitive workflow steps which includes hotspot search in an ensemble of validated reservoir models. This work presents an integrated, intelligent solution for informed decision making on infill drilling locations and refined well design. Higher degree of automation with embedded intelligence are discussed from case generation to hotspot identification. Aspects of model calibration in a producing field environment are addressed.
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