面向ASP先导设计风险分析的岩心驱油模型优化工作流程

O. Borozdina, M. Mamaghani, R. Barsalou, M. Lantoine, Agnès Pain
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引用次数: 1

摘要

这项工作提出了一种新的工作流程,可以为碱性表面活性剂-聚合物(ASP)注入中试设计获得更好约束的油藏规模模型。本文解释了如何使用基于实验结果的校准岩心尺度模拟来量化与三元复合驱相关的不确定参数的影响,以及如何确定未来油藏尺度模拟的影响参数范围。因此,岩心尺度模型的计算成本要低得多,并且最终的油藏模型具有更好的约束。三元复合驱的可行性需要进行岩心规模的研究,其中化学配方在实验室现场条件下进行验证。为了进行中试设计,建立并校准了一个数值模型,以匹配岩心驱替序列:剩余油饱和度(ROS)、表面活性剂-聚合物(SP)和聚合物-碱性(PA)注入,最后是追逐水段塞。为了量化ASP化学参数对历史匹配的影响,采用响应面建模(RSM)进行了全局敏感性分析(GSA)。为了获得未来水库尺度模拟的可接受影响参数范围,采用贝叶斯优化方法。将该方法应用于实际油藏岩心,可以准确地再现实验室测量结果。然而,一旦匹配了岩心尺度模型,就必须进行向储层尺度模型的过渡。由于大量的参数及其相关的不确定性,这种转换不是直截了当的。因此,我们的工作流中包含了一个额外的步骤。采用一种新的方法,首次量化了与三元复合驱相关的不确定参数(表面活性剂在岩石上的吸附、临界胶束浓度、聚合物对水迁移率的降低等)的影响。为此,使用RSM并确定有影响的参数。在本研究中,表面活性剂吸附系数是影响最大的参数,而其他与SPA相关的参数对实验结果匹配的影响较小。其次,通过贝叶斯优化得到未来水库尺度模拟和可行性研究的影响参数可接受范围;因此,在未来的油藏模型中,可以使用精细的(后验)分布规律,而不是使用宽(先验)范围的不确定参数值。经典方法是通过对实验结果进行匹配,得到某些属性的校准值(然后将其输入到油藏模型中),最终确定油藏尺度上的影响参数,而这里选择确定影响参数并表征其在岩心尺度上的影响。这一步有助于更好地约束储层模型。正在进行的工作是利用该工作流程的结果进行试点设计和风险分析。
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Coreflood Model Optimization Workflow for ASP Pilot Design Risk Analysis
This work presents a new workflow to obtain a better-constrained reservoir-scale model for an Alkaline-Surfactant-Polymer (ASP) injection pilot design. It is explained how the impact of uncertain parameters related to ASP flooding can be quantified, using calibrated core-scale simulation based on experimental results, and how the influential parameters range for future reservoir-scale simulation can be determined. Computational costs of core-scale model are therefore much lower, and the final reservoir model is better constrained. ASP flooding feasibility implies core scale studies, where chemical formulations are validated in the laboratory under field conditions. In the objective of the pilot designing, a numerical model is constructed and calibrated to history-match the core flood sequences: Remaining Oil Saturation (ROS), surfactant-polymer (SP) and polymer-alkaline (PA) injection and eventually the chase water slug. In order to quantify the impact of ASP chemical parameters on the history match, the Global Sensitivity Analysis (GSA) was performed using Response Surface Modeling (RSM). To obtain the acceptable range of influential parameters for future reservoir-scale simulation, the Bayesian optimization is used. Applying this methodology on a real reservoir core, the laboratory measurements are accurately reproduced. Nevertheless, once the core-scale model was matched, the transition to reservoir-scale model must be done. Due to a large number of parameters and their associated uncertainties, this transition is not straight-forward. Thus, an additional step in our workflow is included. A new methodology is applied to firstly quantify the impact of uncertain parameters related to ASP flooding (adsorption of surfactant on the rock, critical micellar concentration, water mobility reduction by polymer etc.). To do so, the RSM is used and influential parameters are identified. In this study, the surfactant adsorption coefficients are the most influential parameters while others related to SPA have a poor impact on experiment results matching. Secondly, the acceptable range of influential parameters for future reservoir-scale simulation and feasibility study is obtained during Bayesian optimization. Thus, instead of using a wide (prior) range of uncertain parameters values, refined (posterior) distribution laws can be used for future reservoir model. While the classical approach consists in matching experimental results to obtain calibrated values of certain properties (that are then entered in the reservoir model) and finally determine the influential parameters at the reservoir scale, here the choice was made to determine influential parameters and characterize their impacts at the core scale. This step helps to better constrain the reservoir model. Ongoing work is using the results of this workflow for pilot design and risk analysis.
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