Uncertainty Analysis Using Multi-Scenario Modeling Approach: Kashagan Field Case Study

Ilyas Saurbayev, P. Nurafza, S. Price, C. Tueckmantel, A. Jamankulov, Gadilbek Uxukbayev, Liviu Ionescu, B. Haynes, Dachang Li, R. Saifutdinov
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Abstract

This paper will present a case study of an Uncertainty Analysis recently performed for the Kashagan Field. This is the first full scale uncertainty work performed on the field since it came online in September 2016. The paper will describe unique challenges given Kashagan peculiarities and describe methods and approaches taken to address those. A multi-scenario modeling workflow has been utilized to fully explore subsurface uncertainties in the decision space. First, uncertainties that were believed to have an impact on field performance based on the available data and learnings from previous studies were identified and ranked. Then, so-called categorical parameters were combined by grouping geologically relatable parameters into several scenarios with differentiating behaviors which were checked by performing screening simulation runs. This was followed by Design of Experiment (DoE) runs (Placket-Burman and Latin Hypercube), proxy modeling and Monte-Carlo analysis to aid selection of high, mid, and low models. More than 400 simulation runs were generated resulting in a wide range of outcomes for key performance indicators, enabling the selection of high, mid, and low model realizations to evaluate future field development decisions. The approach of combining categorical parameters into multiple scenarios followed by DoE runs offered several advantages including full sampling of the uncertainty space and clearer link between geologic input and dynamic output. It also allowed to get maximum information using the lowest number of simulation runs. Communication techniques such as plumbing diagrams representing geologic scenarios were effective in discussion of study results amongst experts.
基于多情景建模方法的不确定性分析:卡沙干油田案例研究
本文将介绍最近在卡沙干油田进行的不确定性分析的案例研究。这是自2016年9月投入使用以来首次在该油田进行全面的不确定性研究。本文将描述卡沙干特有的独特挑战,并描述解决这些挑战的方法和途径。利用多场景建模工作流来充分探索决策空间中的地下不确定性。首先,根据现有数据和先前研究的经验,确定并排序了被认为会影响现场性能的不确定性因素。然后,通过将地质上相关的参数分组到几个具有区分行为的场景中,并通过进行筛选模拟运行来检查所谓的分类参数。接下来是实验设计(DoE)运行(Placket-Burman和Latin Hypercube)、代理建模和蒙特卡罗分析,以帮助选择高、中、低模型。超过400次的模拟运行产生了广泛的关键性能指标结果,能够选择高、中、低模型实现,以评估未来的油田开发决策。将分类参数结合到多个场景中,然后进行DoE运行,这种方法有几个优点,包括不确定性空间的充分采样,以及地质输入和动态输出之间更清晰的联系。它还允许使用最少的模拟运行次数获得最大的信息。在专家之间讨论研究结果时,诸如代表地质情景的管道图等交流技术是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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