Leveraging Game AI to Transform Integrated Brownfield Well Planning

Fakhriya Shuaibi, Mohammed Harthi, S. Large, Jane-Frances Obilaja, Mohammed Senani, Carlos Moreno Gomez, Khalfan Mahrazy, Maheem Hussain, Maryam Al Busaidi, T. Savels, N. Dolle
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Abstract

PDO is in the process of transforming its well and urban planning by adopting digital technologies and Artificial Intelligence (AI) to improve organizational efficiency and maximize business value through faster quality decision. In 2020, PDO collaborated with a third-party contractor to provide a novel solution to an industry-wide problem: "how to effectively plan 100's of wells in a congested brownfield setting?". This paper describes an innovative AI-assisted well planning method that is a game-changer for well planning in mature fields, providing efficiency in urban and well trajectory planning. It was applied in one of PDO's most congested fields with a targeted infill of 43m well spacing. The novel well planning method automatically designs and optimizes well trajectories for 100-200 new wells while considering surface, subsurface and well design constraints. Existing manual workflows in the industry are extremely time consuming and sequential (multiple man-months of work) - particularly for fields with a congested subsurface (350+ existing wells in this case) and surface (limited options for new well pads). These conventional and sequential ways of working are therefore likely to leave value on the table because it is difficult to find 100+ feasible well trajectories, and optimize the development in an efficient manner. The implemented workflow has the potential to enable step change in improvements in time and value for brownfield well and urban planning for all future PDO developments. The innovative AI assisted workflow, an industry first for an infill development of this size, evaluates, generates and optimizes from thousands of drillable trajectories to an optimized set for the field development plan (based on ranked value drivers, in this case, competitive value, cost and UR). The workflow provides a range of drillable trajectories with multi-scenario targets and surface locations, allowing ranking, selection and optimization to be driven by selected metrics (well length, landing point and/or surface locations). The approach leads to a step change reduction in cycle time for well and urban planning in a complex brownfield with 100-200 infill targets, from many months to just a few weeks. It provides potential game-changing digital solutions to the industry, enabling improved performance, much shorter cycle times and robust, unbiased well plans. The real footprint and innovation from this AI-assisted workflow is the use of state-of-the-art AI to enhance team collaboration and integration, supporting much faster and higher quality field development decisions. This paper describes a novel solution to integrated well planning. This is a tangible example of real digital transformation of a complex, integrated and multi-disciplinary problem (geologists, well engineers, geomatics, concept engineers and reservoir engineers), and only one of very few applied use cases in the industry. This application also gives an example of "augmented intelligence", i.e. how AI can be used to truly support integrated project teams, while the teams remain fully in control of the ultimate decisions. The success of this approach leans on the integrated teamwork across multiple technical disciplines, not only involving PDO's resources, but also WhiteSpace Energy as a 3rd party service provider. The enhanced collaboration allowed all parties to highlight their constraints in an integrated way from the start, strengthening the technical discussion between disciplines and learning from each constraint impact and dependencies. (e.g. dog leg severity). In summary, the change in process flow moving from a sequential well planning and urban planning method to an iterative and fast AI solution – including all technical considerations from beginning represented for PDO an added value of over 6 months of direct cycle time HC acceleration.
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利用游戏AI改变综合棕地井规划
PDO正在通过采用数字技术和人工智能(AI)来改变其油井和城市规划,以提高组织效率,并通过更快的质量决策实现商业价值最大化。2020年,PDO与第三方承包商合作,为一个行业问题提供了一种新颖的解决方案:“如何在拥挤的棕地环境中有效地规划100口井?”本文介绍了一种创新的人工智能辅助井规划方法,该方法改变了成熟油田的井规划规则,提高了城市和井眼轨迹规划的效率。该技术应用于PDO最拥挤的油田之一,目标填充井距为43米。这种新型的井规划方法可以在考虑地面、地下和井设计约束的情况下,自动设计和优化100-200口新井的井眼轨迹。行业中现有的人工工作流程非常耗时且连续(多个人工月的工作),特别是对于地下(在这种情况下已有350多口井)和地面(新井台选择有限)拥挤的油田。由于很难找到100多个可行的井眼轨迹,并以有效的方式优化开发,因此这些常规和顺序的工作方式可能会留下价值。实施的工作流程有可能在棕地油井和未来所有PDO开发的城市规划中实现时间和价值的逐步改善。创新的人工智能辅助工作流程是业内首个用于这种规模的填充开发的工作流程,它可以评估、生成并优化数千条可钻轨迹,以优化油田开发计划(基于价值驱动因素,在这种情况下是竞争价值、成本和UR)。该工作流程提供了一系列具有多场景目标和地面位置的可钻轨迹,允许根据选定的指标(井长、着陆点和/或地面位置)进行排序、选择和优化。在具有100-200个填充目标的复杂棕地,该方法可以将井和城市规划的周期时间从几个月缩短到几周。它为行业提供了潜在的改变游戏规则的数字解决方案,实现了更高的性能、更短的周期时间和稳健、公正的井计划。这种人工智能辅助工作流程的真正足迹和创新是使用最先进的人工智能来增强团队协作和集成,支持更快、更高质量的油田开发决策。本文介绍了一种新的综合井规划解决方案。这是一个复杂的、综合的、多学科问题(地质学家、井工程师、地理信息学、概念工程师和油藏工程师)的真正数字化转型的具体例子,也是行业中为数不多的应用案例之一。该应用程序还提供了一个“增强智能”的例子,即如何使用人工智能来真正支持集成项目团队,同时团队仍然完全控制最终决策。这种方法的成功依赖于跨多个技术学科的综合团队合作,不仅涉及PDO的资源,还涉及作为第三方服务提供商的WhiteSpace Energy。增强的协作允许所有各方从一开始就以集成的方式突出他们的约束,加强学科之间的技术讨论,并从每个约束影响和依赖关系中学习。(如狗腿的严重性)。总之,从连续井规划和城市规划方法到迭代和快速人工智能解决方案的流程变化,包括从PDO开始的所有技术考虑,代表了超过6个月直接周期时间HC加速的附加价值。
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