Integrated Field Development Plan for Reliable Production Forecast Using Data Analytics and Artificial Intelligence

Yanfidra Djanuar, Qingfeng Huang, J. Thatcher, M. Eldred
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Abstract

Having a robust field development plan (FDP) for mid-size mature oil fields generally poses considerable challenges in the context of the integrational elements of production forecast, operational environment, projects and surface facilities. An integrated FDP combined with data analytics and artificial intelligence (AI) has been introduced and deployed in a heavily compartmentalized offshore field of Turkmenistan. An integrated approach through data-centric analytics and AI has been proposed for an optimal FDP. It consists of four aspects: model integration, time-series forecast (TSF) of production, AI-assisted operation-schedule generation, and evaluation and selection of scenarios. Firstly, model integration is performed as bringing together both multi-discipline raw data from field measurement and their interpretations that change non-linearly. Secondly, model integration aids in the application of AI for production forecast. A unique AI technique was built to allow raw data and interpretation. Illustratively, the model is capable of forecasting decline curves matching the history production. Meanwhile, engineers’ production forecast inheriting from simulation, machine learning or type curves is also constructed by understanding how/why human-driven forecasts differ from the measured decline and incorporating those insights. In addition, AI-assisted scheduler efficiently allocates resources for operational activities, considering the well planning nature, intrinsic operation properties, project planning process, surface facilities and expenditures. Resources are thus utilized for optimal schedules. Finally, evaluation and selection of FDP scenarios take place by considering the multidimensional matrix of factors. Multiple scenarios are generated and scored, reacting to the change of factors. AI-powered optimization is availed to recommend the most efficient tradeoffs between production and carbon generation. The implementation of the integrated FDP approach has been successfully applied for the generation of production profiles and operation schedules, which reduces the time by 80% and increasing accuracy by 55%. Production forecast for existing wells and future wells proved to be reliable. It achieved the production targets with proper allocation of schedules, by considering multi-discipline constraints. Through AI-assisted scheduler, different types of rigs were properly assigned to the planned wells, which requires additional rigs based on the outcome. The model was agile to the change and sensitivities of wells requirement, projects uncertainties and cost changes. The optimum FDP scenario was recommended for the business decision, operation guide and execution. This approach represents a novel and innovative means of integrating and optimizing FDP considering complex factors using AI methods. It is efficient in merging raw data and interpretations for model integration. It accommodates changes and uncertainties from multiple aspects and efficiently generates optimum FDP in a few days rather than months for giant fields. It is the first robust tool that unites subsurface properties, reservoir engineering, production, drilling, projects, engineering and finance for the corporate FDP.
利用数据分析和人工智能进行可靠产量预测的综合油田开发计划
在生产预测、作业环境、项目和地面设施等综合因素的背景下,为中型成熟油田制定稳健的油田开发计划(FDP)通常会带来相当大的挑战。结合数据分析和人工智能(AI)的集成FDP已被引入并部署在土库曼斯坦一个严重划分的海上油田。提出了一种通过以数据为中心的分析和人工智能的综合方法来实现最佳FDP。它包括四个方面:模型集成、生产时间序列预测(TSF)、人工智能辅助作业计划生成、场景评估和选择。首先,将多学科野外测量的原始数据及其非线性变化的解释结合起来,进行模型集成。其次,模型集成有助于人工智能在生产预测中的应用。一种独特的人工智能技术允许原始数据和解释。说明该模型能够预测与历史产量相匹配的下降曲线。同时,工程师的生产预测继承了模拟、机器学习或类型曲线,也通过理解人为驱动的预测与测量的下降有何不同,并结合这些见解来构建。此外,人工智能辅助调度器可以有效地为作业活动分配资源,考虑到井的规划性质、固有的作业特性、项目规划过程、地面设施和支出。因此,资源被用于最优调度。最后,通过考虑因素的多维矩阵来评估和选择FDP方案。根据因素的变化,生成多个场景并进行评分。人工智能驱动的优化可以在生产和碳排放之间推荐最有效的权衡。集成FDP方法的实施已成功应用于生产剖面和作业计划的生成,减少了80%的时间,提高了55%的精度。对现有井和未来井的产量预测证明是可靠的。通过考虑多学科约束,合理分配生产进度,实现生产目标。通过人工智能辅助调度器,不同类型的钻机被正确分配到计划的井中,根据结果需要额外的钻机。该模型对油井需求的变化和敏感性、项目的不确定性以及成本的变化具有灵活性。为业务决策、操作指导和执行提供了最佳的FDP方案。这种方法代表了一种利用人工智能方法综合和优化FDP的新颖创新手段,考虑了复杂的因素。它在合并原始数据和模型集成的解释方面是有效的。它可以适应来自多个方面的变化和不确定性,并在几天内有效地生成最佳FDP,而不是大型油田的几个月。它是第一个将地下属性、油藏工程、生产、钻井、项目、工程和财务结合在一起的强大工具。
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