水-气交替驱优化的混合神经工作流

Gurpreet Singh, Davud A. Davudov, E. Al-Shalabi, A. Malkov, A. Venkatraman, Ahmed Mansour, Rosemawati Abdul-Rahman, Dr. Bhumika Das
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摘要

水-气交替(WAG)注气技术是一种基于气的提高采收率(EOR)技术,用于克服注气相关的问题,包括重力覆盖、粘性指指和窜流。WAG EOR技术用于控制气相流动,提高了项目的经济性。水交替气(WAG)具有比连续注气和CO2封存更高采收率的双重效益。更高的扫描效率和一致性控制已被证明可以提高生命周期净现值(NPV),从而改进油田开发和部署计划。然而,糟糕的WAG设计往往会导致不利的采收率。本研究使用混合数字-机器学习(ML)模型研究砂岩油田的WAG优化。在这项工作中,我们提出了一种混合神经方法来优化WAG注入过程,该方法可以很容易地与任何现有的油藏模拟器集成为一个工作流,以优化WAG参数,从而最大限度地提高油藏生命周期累积采收率。油藏模拟器被视为一个样本生成器,以WAG参数作为密集神经网络(DNN)的输入,输出/标签作为累积采收率,形成采收率场景的集合。然后,神经网络有两个作用:1)WAG参数和累积恢复之间的现成映射,以减少计算成本,从而更快地按需评估;2)作为压缩重要相关性的存储库,可以添加额外的样本或通过删除冗余样本(模拟运行)来减少相关性。因此,混合神经方法还提供了一个清晰的画面,即哪种模拟运行(或样本)更有利于优化采收率预测,从而有效地对高维WAG参数空间进行采样,并减少计算时间。当我们考虑多口井的现场规模优化方案时,这一点尤为重要,每口井都有单独的注入计划,需要用蛮力集成方法成倍增加样本(在介绍部分或后面添加一个例子,并在这里交叉参考)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Neural Workflow for Optimal Water-Alternating-Gas Flooding
Water-alternating-gas (WAG) injection is a gas-based enhanced oil recovery (EOR) technique used to overcome problems related with gas injection including gravity override, viscous fingering, and channeling. The WAG EOR technique is used to control gas mobility, which boosts project economics. Water alternating gas (WAG) has the dual benefit of higher recovery than continuous gas injection and CO2 sequestration. Higher sweep efficiencies and conformance control have been shown to increase the life cycle net present value (NPV) for improved field development and deployment planning. Nevertheless, a poor WAG design often results in unfavorable oil recovery. This study investigates WAG optimization in a sandstone field using a hybrid numerical-machine learning (ML) model. In this work, we present a hybrid neural approach for optimizing the WAG injection process that can be easily integrated as a workflow with any existing reservoir simulator for optimal WAG parameters to maximize reservoir life cycle cumulative recoveries. The reservoir simulator is treated as a sample generator to form an ensemble of recovery scenarios with the WAG parameters as inputs to a dense neural network (DNN) and outputs/labels as cumulative recoveries. The neural network then serves two roles: 1) a readily available map between WAG parameters and cumulative recoveries for reduced computational cost and hence faster on-demand evaluation, and 2) as a repository condensing important correlations that can be appended with additional samples or reduced by removing redundant samples (simulation runs). Consequently, the hybrid neural approach also provides a clear picture of which simulation runs (or samples) are more conducive to optimal recovery predictions for an effective strategy to sample the high dimensional WAG parameter space and reduced compute times. This becomes especially important when we consider field scale optimization scenarios with multiple wells each with their separate injection schedules requiring exponentially increasing samples with a brute force ensemble approach (add an example in the introduction section or later and cross-refer here).
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