Use of Numerical Simulation Enhanced by Machine Learning Techniques to Optimize Chemical EOR Application

G. Suzanne, Amir Soltani, S. Charonnat, E. Delamaide
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Abstract

Leveraging the recent developments in the Machine Learning (ML) technology, the objective of this work was to use Artificial Neural Networks to build proxy models to classical reservoir simulation tools for two distinct chemical EOR applications. Once built and calibrated (trained), these ML-based proxy models were used to efficiently identify optimal scenarios to be further considered in the corresponding EOR developments, therefore demonstrating how these techniques can complement classical tools to enhance the decision-making process. Two numerical simulation models were built and calibrated to reproduce lab-measured data from a real surfactant-polymer coreflood experiment (Application #1) or historical data from a real oilfield (Application #2). Different scenarios were then simulated: Application #1: various sequences of injection were explored (chemical concentrations and slug sizes)Application #2: different surfactant-polymer injection configurations were investigated on a large-scale multi-pattern configuration Simulated outputs were used to train Artificial Neural Network models, which were checked for their predictivity on unseen data. These ML-based proxy models were finally used to rapidly identify other optimal scenarios for each application based on several economic indicators. For the first application, numerical model calibration was obtained using one real coreflood experiment: measured pressure signal was well reproduced by the simulator, as well as oil and surfactant production. Several numerical simulations were then performed to evaluate the oil recovery from different injection sequences. Both surfactant and polymer concentrations were varied as well as the slug's durations. For the second application, a history-matched sector model representing the current status of a real oilfield after several years of waterflooding was used. Several scenarios were simulated to evaluate oil recovery associated with distinct sequences of EOR injection consisting of surfactant and polymer agents of various slug volumes and concentrations. Using a train/test split approach, 80% of the simulations were used to train one Artificial Neural Network for each application. The remaining simulations (20%), used as blind tests, confirmed the predictivity of the trained models on unseen data. The ANN models were finally used to predict outcomes from new scenarios not investigated by numerical simulation. This enabled us to identify optimal scenarios with regards to classical economic indicators. These scenarios were then numerically simulated to confirm the predictions from the ANN models, therefore validating the whole approach. This work illustrates how modern machine learning techniques such as Artificial Neural Networks can be used to enhance the numerical simulation tool while solving specific optimization problems (here related to chemical EOR application). Such techniques, becoming increasingly accessible thanks to open-source programming languages, provide a powerful lever to become more efficient when using reservoir simulators as a tool to guide decision-making processes in the oil industry.
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利用机器学习技术增强的数值模拟优化化学提高采收率应用
利用机器学习(ML)技术的最新发展,这项工作的目标是使用人工神经网络为两种不同的化学提高采收率应用的经典油藏模拟工具建立代理模型。一旦建立和校准(训练),这些基于ml的代理模型就可以用来有效地识别最佳方案,以便在相应的EOR开发中进一步考虑,从而展示这些技术如何补充经典工具,以增强决策过程。建立并校准了两个数值模拟模型,以再现真实表面活性剂-聚合物岩心驱实验(应用#1)的实验室测量数据或真实油田(应用#2)的历史数据。然后模拟了不同的场景:应用#1:探索了不同的注射顺序(化学浓度和段塞尺寸)应用#2:在大规模的多模式配置上研究了不同的表面活性剂-聚合物注射配置模拟输出用于训练人工神经网络模型,并检查了它们对未知数据的预测能力。这些基于ml的代理模型最终用于根据几个经济指标快速确定每个应用程序的其他最佳方案。对于第一次应用,通过一次真实的岩心驱油实验获得了数值模型校准:模拟器很好地再现了测量到的压力信号,以及油和表面活性剂的产量。然后进行了一些数值模拟,以评估不同注入顺序的采收率。表面活性剂和聚合物的浓度以及段塞流的持续时间都是不同的。对于第二个应用,使用了一个历史匹配的扇形模型,该模型代表了经过几年注水后实际油田的现状。模拟了几种情况,以评估由不同体积和浓度的表面活性剂和聚合物剂组成的不同EOR注入顺序的采收率。使用训练/测试分离的方法,80%的模拟用于为每个应用程序训练一个人工神经网络。其余的模拟(20%)用作盲测,证实了训练模型对未知数据的预测性。最后,人工神经网络模型被用于预测未被数值模拟研究的新情景的结果。这使我们能够确定关于经典经济指标的最佳方案。然后对这些场景进行数值模拟,以确认人工神经网络模型的预测,从而验证整个方法。这项工作说明了如何使用现代机器学习技术(如人工神经网络)来增强数值模拟工具,同时解决特定的优化问题(这里与化学提高采收率应用有关)。由于开源编程语言的出现,这些技术变得越来越容易获得,当使用油藏模拟器作为指导石油行业决策过程的工具时,这些技术为提高效率提供了强大的杠杆。
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