Field Development Optimization with Stochastic Gradient Method: Application to a Multi-Reservoir Carbonate Field in the Middle East

E. Barros, S. Szklarz, N. Khoshnevis Gargar, J. Hopman, G. Zirotti, G. Bascialla, T. Ramsay, R. Fonseca
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Abstract

Field development planning activities involve decisions that entail multi-billion-dollar investments. Making right design choices is crucial to the techno-economic success of the project. In this paper we demonstrate how state-of-the-art numerical model-based optimization techniques can support asset teams in this complex decision-making process. Optimization of real-life field development cases can be computationally very demanding due to the cost of running large amounts of large-scale reservoir simulations, the large number of variables to be optimized and the necessity of accounting for uncertainties, among other reasons. In this work we employ TNO’s EVEReST optimization technology leveraging the StoSAG stochastic gradient-based method to achieve optimized solutions in computationally efficient manner. Besides its computational attractiveness, the StoSAG method also renders the optimization framework flexible to be customized to any specific optimization problem, e.g., optimization of any type of field development decisions, coupling to any industry-standard reservoir simulators and handling any type of objective and constraint functions. The optimization framework has been used to optimize the expansion of the development plan of a large field in the Middle East, in particular to support decisions concerning the drilling of (up to) 38 new wells and the upgrading of surface facilities to accommodate incremental production. The challenge is posed by the field being comprised of multiple carbonate reservoirs for which multiple types of decisions need to be optimized, often simultaneously i.e. well target locations, trajectory design features, number and type of wells and their distribution across the different reservoirs as well as the drilling sequence. An economic objective function was used with the operational constraints per reservoir accounted for within the framework. Optimization found non-trivial optimal solutions resulting in significant improvements in the economic objective. The optimal strategy revealed improved distribution of wells (and types) among the reservoirs, more suitable drilling order and superior well locations and trajectories compared to the initial strategy. Optimization found well locations and trajectories taking into account complex local well interaction in already densely populated reservoirs with wells. The optimized solutions were benchmarked against the development plan designed by the asset team, and the comparison of strategies confirmed the added value of numerical optimization as a tool to expedite the search of improved development strategies. The nature of the employed optimization method allowed optimized solutions to be achieved with a reduced number of reservoir simulations, which was crucial for the success of this study due to the time-consuming reservoir simulations involved. This showcases the computational advantage of the optimization method and highlights EVEReST as an enabler technology for optimization under uncertainty, where an ensemble of large-scale models is to be considered and the number of required reservoir simulations tends to be even larger.
随机梯度法在中东某多储层碳酸盐岩油田开发中的应用
现场开发规划活动涉及需要数十亿美元投资的决策。做出正确的设计选择对项目的技术经济成功至关重要。在本文中,我们展示了最先进的基于数值模型的优化技术如何在这个复杂的决策过程中支持资产团队。由于运行大量大规模油藏模拟的成本、需要优化的大量变量以及需要考虑不确定性等原因,实际油田开发案例的优化在计算上的要求非常高。在这项工作中,我们采用TNO的EVEReST优化技术,利用基于StoSAG随机梯度的方法,以高效的计算方式获得优化解。除了在计算上具有吸引力外,StoSAG方法还使优化框架具有灵活性,可以针对任何特定的优化问题进行定制,例如,任何类型的油田开发决策的优化,与任何行业标准油藏模拟器的耦合以及处理任何类型的目标和约束函数。该优化框架已用于优化中东某大型油田开发计划的扩展,特别是支持有关钻井(最多)38口新井和地面设施升级以适应增产的决策。该油田由多个碳酸盐岩储层组成,需要同时优化多种类型的决策,即井的目标位置、轨迹设计特征、井的数量和类型、井在不同储层中的分布以及钻井顺序。使用了一个经济目标函数,并在框架内考虑了每个油藏的操作约束。优化找到了非平凡的最优解,从而显著提高了经济目标。与初始策略相比,优化策略改善了储层间的井分布(和类型),更适合钻井顺序,更优越的井位和井眼轨迹。优化找到的井位和轨迹考虑到复杂的局部井相互作用,在已经密集的油井中。将优化后的解决方案与资产团队设计的开发方案进行对比,通过对策略的比较,证实了数值优化作为加速寻找改进开发策略的工具的附加价值。所采用的优化方法的性质允许通过减少油藏模拟次数来获得优化解决方案,这对于本研究的成功至关重要,因为所涉及的油藏模拟非常耗时。这展示了优化方法的计算优势,并突出了EVEReST作为不确定条件下优化的使能技术,在不确定条件下,需要考虑大规模模型的集合,并且所需的油藏模拟数量往往更大。
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