闭环油田开发优化中对不确定未来开发计划的对冲

Atefeh Jahandideh, B. Jafarpour
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引用次数: 2

摘要

在油田开发研究中,优化是一个非常重要的问题。一个主要的困难与处理可能从不同来源引入的不确定性有关。传统上,地质不确定性被认为是风险的一个重要来源,并且已经发展了随机方法来将相关的不确定性纳入优化问题。油田开发优化中需要考虑的一个重要方面是未来开发的可能性(例如,填充钻井)。在优化当前决策时忽视未来的开发活动,可能会导致现场性能预测和优化结果远未达到最佳。最近的研究集中于优化未来的开发活动,将其作为优化框架中的决策变量。这种方法的一个主要问题是,由于各种原因,包括模型的不确定性、钻井和地质方面的考虑,以及直接影响油藏管理和未来开发决策的不可预测环境,优化结果很少能在未来的开发中得到完全相同的应用。因此,将未来的开发计划视为不确定事件,在优化过程中应进行对冲,这是更为实际的做法。在本文中,我们展示了在闭环油田开发优化中考虑未来开发计划及其相关不确定性的重要性。我们提出了一个随机闭环油田开发优化公式,以考虑地质不确定性和未来填充钻井的不确定性,其中基于模型的优化和数据集成循环在油藏生命周期中重复进行。在新的随机公式中,未来的开发事件被建模为导致多种可能的开发情景的不确定参数。随机优化公式为当前决策变量(例如井位和操作设置)寻找最佳解决方案,同时考虑到地质描述的不确定性和油藏剩余寿命的未来开发计划。然后,根据最优解对油藏进行一段时间的运行,同时收集油藏响应数据,用于标定油藏模型,降低地质不确定性。在每个模型校准步骤之后,重复当前决策的优化过程,以将新信息纳入决策和油藏运行中。一旦做出钻井决策,就会使用最新更新的储层模型进行优化,同时将未来的开发场景作为不确定参数进行考虑。代表未来开发计划的不确定参数包括未来填充井的数量。采用随机过程来描述油藏开发阶段参数的不确定性,从而形成具有多个开发场景的决策树表示。通过考虑合理的地质模型实现和可能的未来开发场景,开发了一个鲁棒的闭环优化工作流程,以优化当前的决策变量,以对冲它们所代表的不确定性。通过实例分析,说明了在闭环油田开发优化中考虑未来开发计划的重要性。在优化过程中,与没有考虑未来油田开发计划的现有方法相比,对所开发的随机框架的性能进行了评估和讨论。结果表明,考虑到未来的油田开发规划,生产性能有了显著改善。我们观察到,将不确定性纳入未来开发提供了灵活性和稳健性,以适应替代开发方案,并避免了当油藏在未来进行意外开发(钻井)活动时,解决方案的表现明显不佳。该研究首次尝试在闭环油田开发优化中考虑未来开发计划的不确定性。所开发的方法为制定和解决地质和未来开发不确定性下的生产优化问题提供了新的视角和框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hedging against Uncertain Future Development Plans in Closed-loop Field Development Optimization
Optimization has received considerable attention in oilfield development studies. A major difficulty is related to handling the uncertainty that can be introduced from different sources. Traditionally, geologic uncertainty has been considered as an important source of risk and stochastic approaches have been developed to incorporate the related uncertainties in optimization problems. An important aspect to consider in field development optimization is the possibility of future developments (e.g. infill drillings). Disregarding future development activities in optimization of current decisions can lead to field performance predictions and optimization results that may be far from optimal. Recent studies have focused on optimizing future development activities by including them as decision variables in optimization frameworks. A main issue with this approach is that the optimization results are rarely implemented in future developments exactly as obtained, for various reasons including uncertainty in models, drilling and geological considerations, and unpredictable circumstances that directly affect reservoir management and future development decisions. Therefore, it is more practical to consider future development plans as uncertain events that should be hedged against during optimization. In this paper, we show the importance of considering future development plans with their associate uncertainty in closed-loop oilfield development optimization. We present a stochastic closed-loop field development optimization formulation to account for geologic uncertainty and the uncertainty in future infill drilling, where model-based optimization and data integration loops are repeated through reservoir’s life cycle. In the new stochastic formulation, future development events are modelled as uncertain parameters that lead to multiple possible development scenarios. Stochastic optimization formulation finds optimal solutions for current decision variables (e.g. well locations and operational settings) while accounting for the uncertainty in geologic description and future development plans for the remainder of the reservoir life. Thereafter, the reservoir is operated based on optimal solutions for a period of time while reservoir response data is collected and used to calibrate the reservoir models and reduce the geologic uncertainty. The optimization process for current decisions is repeated after each model calibration step to include the new information in decision making and reservoir operation. Once a drilling decision is made, the optimization process is performed with the most recently updated reservoir models, while considering further future development scenarios as uncertain parameters. The uncertain parameters representing the future development plans include the number of future infill wells. A stochastic process is used to describe the uncertainty in the parameters over reservoir development stages, resulting in a decision tree representation with multiple development scenarios. A robust closed-loop optimization workflow is developed to optimize current decision variables by considering plausible geologic model realizations and possible future development scenarios to hedge against the uncertainty they represent. Case studies are presented to illustrate the importance of considering future development plans in closed-loop oilfield development optimization. The performance of the developed stochastic framework is evaluated and discussed relative to existing approaches that do not account for future field development plans in the optimization procedure. The results show significant improvements in the production performance when future field development planning is considered. We observe that incorporating the uncertainty in future development offers flexibility and robustness to accommodate alternative development options, and avoids solutions that significantly underperform when reservoirs undergo unanticipated development (drilling) activities in the future. This study presents the first attempt to consider the uncertainty in future development plans in closed-loop field development optimization. The developed method offers a novel perspective and framework for formulating and solving production optimization problems under geologic and future development uncertainty.
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