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A Novel Enhanced-Oil-Recovery Screening Approach Based on Bayesian Clustering and Principal-Component Analysis

机译:基于贝叶斯聚类和主成分分析的新型强化采油筛选方法

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摘要

We present and test a new screening methodology to discriminate amongst alternative and competing Enhanced Oil Recovery (EOR) techniques to be considered for a given reservoir. Our work is motivated by the observation that, even if a considerable variety of EOR techniques have been successfully applied to extend oilfield production and lifetime, an EOR project requires extensive laboratory and pilot tests prior to field-wide implementation and preliminary assessment of EOR potential in a reservoir is critical in the decision-making process. Since similar EOR techniques may be successful in fields sharing some global features, as basic discrimination criteria we consider fluid (density and viscosity) and reservoir formation (porosity, permeability, depth and temperature) properties. Our approach is observation-driven and grounded on an exhaustive data-base which we compile upon considering worldwide EOR field experiences. A preliminary reduction of the dimensionality of the parameter space over which EOR projects are classified is accomplished through Principal Component Analysis (PCA). A screening of target analogs is then obtained by classification of documented EOR projects through a Bayesian clustering algorithm. Considering the cluster which comprises the EOR field under evaluation, an inter-cluster refinement is then accomplished by ordering cluster components on the basis of a weighted Euclidean distance from the target field in the (multidimensional) parameter space. Distinctive features of our methodology are that (a) all screening analyses are performed on the database projected onto the space of principal components, and (b) the fraction of variance associated with each principal component is taken as weight of the Euclidean distance we determine. As a test bed, we apply our approach on three fields operated by eni. These include light, medium and heavy-oil reservoirs, where Gas, Chemical and Thermal EOR projects have been respectively proposed. Our results are (a) conducive to the compilation of a broad and extensively usable data-base of EOR settings and (b) consistent with the field observations related to the three tested and already planned/implemented EOR methodologies, thus demonstrating the effectiveness of our approach.
机译:我们提出并测试一种新的筛选方法,以区分给定油藏要考虑的替代和竞争性强化油采收(EOR)技术。我们的工作是出于以下观察的动机:即使已成功应用各种EOR技术来延长油田的生产和使用寿命,EOR项目也需要进行广泛的实验室和中试测试,然后才能在油田范围内实施和初步评估EOR潜力。在决策过程中,储备库至关重要。由于相似的EOR技术在共享某些全球特征的领域中可能是成功的,因此作为基本判别标准,我们考虑流体(密度和粘度)和储层形成(孔隙度,渗透率,深度和温度)属性。我们的方法以观察为导向,并以详尽的数据库为基础,我们在考虑全球EOR现场经验的基础上进行汇编。通过主成分分析(PCA)可以初步减少对EOR项目进行分类的参数空间的维数。然后,通过贝叶斯聚类算法对已记录的EOR项目进行分类,从而获得目标类似物的筛选。考虑包括评估中的EOR字段的集群,然后通过在(多维)参数空间中距目标字段的加权欧几里得距离为基础对集群组件进行排序,从而实现集群间精化。我们方法学的显着特征是:(a)所有筛选分析都是在投影到主成分空间的数据库上进行的;(b)与每个主成分相关的方差分数被视为我们确定的欧几里得距离的权重。作为测试平台,我们将我们的方法应用于eni运营的三个领域。这些包括轻,中和重油储层,分别提出了天然气,化学和热采EOR项目。我们的结果(a)有助于建立广泛而广泛使用的EOR设置数据库,并且(b)与与三种经过测试并已经计划/实施的EOR方法学相关的现场观察相一致,从而证明了我们的有效性方法。

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