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A General Spatio-Temporal Clustering-Based Non-Local Formulation for Multiscale Modeling of Compartmentalized Reservoirs

机译:基于时空聚类的基于时空聚类的舱室化储层多尺度建模的非局部配方

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Representing the reservoir as a network of discrete compartments with neighbor and non-neighbor connections is a fast, yet accurate method for analyzing oil and gas reservoirs. Automatic and rapid detection of coarse-scale compartments with distinct static and dynamic properties is an integral part of such high- level reservoir analysis. In this work, we present a hybrid framework specific to reservoir analysis for an automatic detection of clusters in space using spatial and temporal field data, coupled with a physics-based multiscale modeling approach. A novel and rigorous non-local formulation for flow in porous media is presented, in which the reservoir is represented by an adjacency matrix describing the connectivities of comprising compartments. We automatically divide the reservoir into a number of distinct compartments, in which the direction-dependent multiphase flow communication is a function of non-local phase potential differences. Our proposed clustering framework begins with a mixed-type raw dataset which can be categorical/numerical, spatial/ temporal, and discrete/continuous. The dataset can contain noisy/missing values of different data types including but not limited to well production/injection history, well location, well type, geological features, PVT measurements, perforation data, etc. Unsupervised clustering techniques suited to the input data types (e.g. k-prototypes, spectral, Gaussian Mixtures, and hierarchical clustering), and appropriate distance measures (such as Euclidean distance, soft dynamic time warping, and mode) are used. The input data is standardized, and upon convergence check, the best clustering representation is obtained. Finally, Support- Vector-Machine technique is utilized in the kernel space to trace a demarcating hyperplane for the clusters. The proposed framework is successfully applied to more than five mature fields in the Middle East, South and North America, each with more than a thousand wells. In a specific case study reported here, the proposed workflow is applied to a major field with a couple of hundreds of wells with more than 40 years of production history. Leveraging the fast forward model, an efficient ensemble-based history matching framework is applied to reduce the uncertainty of the global reservoir parameters such as inter-blocks and aquifer-reservoir communications, fault transmissibilities, and block-based oil in place. The ensemble of history matched models are then used to provide a probabilistic forecast for different field development scenarios. In addition, the clustering framework enables us to treat missing data and use the augmented dataset for improving the clustering accuracy. In summary, in this work a novel hybrid approach is presented in which we couple a physics-based non-local modeling framework with data-driven clustering techniques to provide a fast and accurate multiscale modeling of compartmentalized reservoirs. This research also adds to the literature by presenting a comprehensive work on spatio-temporal clustering for reservoir studies applications that well considers the clustering complexities, the intrinsic sparse and noisy nature of the data, and the interpretability of the outcome.
机译:表示储存器作为具有邻居和非邻居连接的离散隔室网络是分析石油和气体储层的快速且准确的方法。具有不同静态和动态特性的粗尺度隔室的自动快速检测是这种高级储层分析的组成部分。在这项工作中,我们介绍了一种特定于储层分析的混合框架,用于使用空间和时间场数据自动检测空间中的集群,与基于物理的多尺度建模方法耦合。提出了一种用于多孔介质中流动的新颖和严格的非局部制剂,其中贮存器由描述包括隔室的连接性的邻接矩阵来表示。我们自动将储库划分为许多不同的隔间,其中方向依赖的多相流动通信是非局部相位电位差异的函数。我们所提出的聚类框架以混合型原始数据集开始,可以是分类/数字,空间/时间和离散/连续的。 DataSet可以包含不同数据类型的噪声/缺失值,包括但不限于良好的生产/注入历史,井位置,良好类型,地质特征,PVT测量,穿孔数据等令人未用的群集技术适用于输入数据类型(例如,使用k原型,光谱,高斯混合物和分层聚类),以及适当的距离测量(例如欧几里德距离,软动态翘曲和模式)。输入数据标准化,并且在收敛检查时,获得最佳聚类表示。最后,在内核空间中使用支持 - 矢量机技术,以跟踪群集的划分超平面。拟议的框架成功地应用于中东,南部和北美的五个以上的成熟领域,每个井都有超过一千个井。在这里报告的具体情况下,拟议的工作流程应用于具有超过40年的生产历史超过数百个井的主要领域。利用快进模型,应用了一个有效的基于集合的历史匹配框架,以减少全球储层参数的不确定性,例如嵌入间和含水层 - 储层通信,故障传播性和基于块的油。然后,历史匹配模型的集合将用于为不同的现场开发场景提供概率预测。此外,群集框架使我们能够治疗缺失数据并使用增强数据集来提高聚类精度。总之,在这项工作中,提出了一种新的混合方法,其中我们将基于物理的非本地建模框架与数据驱动的聚类技术耦合,以提供舱室化储层的快速和准确的多尺度建模。本研究还通过提出储层研究应用程序的全面工作,为储层复​​杂性,数据的内在稀疏和嘈杂性质以及结果的可解释性提出了全面的储层研究应用程序的全面工作。

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