Visualization of Ensembles of Oil Reservoir Models Based on Pixelization, Small Multiples and Reservoir Similarities

C. G. Silva, A. A. S. Santos, D. Schiozer
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引用次数: 2

Abstract

Providing an overview of an ensemble of oil reservoir models could help users compare and analyze their characteristics. Approaches that show a single model at a time may hamper analysts’ understanding of the whole model set. In this paper, we propose two visualization approaches that show multiple reservoir models, simultaneously and on a single screen, with the goal of helping users to compare models and improve their understanding of ensemble characteristics. First, we calculate 2D models from the ensemble's 3D models. We then create two visualizations that represent ensembles of these 2D models. The Small Multiples approach lays out heatmaps of 2D models side-by-side on a grid. Pixelization approach shows n 2D models in a single heatmap, where each cell (i, j) contains n subcells that represent values in the coordinate (i, j) of each model. Both approaches display their elements (heatmaps and subcells) clustered by X-means, which may help analysts identify similarities and representative models in the ensemble. We used two types of distance matrices: based on Euclidean distance of models for a given property or, based on Euclidean distance of feature vectors of the 2D models. We tested our approaches within models based on Brazilian benchmark cases corresponding to a turbiditic reservoir (UNISIM-I-D/M/H) and a presalt carbonatic reservoir (UNISIM-II-D). As a result, the Small Multiples approach presented clusters of similar models for some properties of the ensembles we studied, e.g. eight clusters of porosity values in UNISIM-II-D's ensemble. This fact suggests that eight representative models can represent the ensemble, regarding porosity. Also, a Pixelization approach revealed patterns that happen in specific regions of all models of an ensemble, such as an abrupt change of porosity values in the northwest region of UNISIM-I-M's models. Both approaches have the potential to help analysts perceive situations that would be improbable to observe in a graph with only mean values for each cell. Therefore, our proposal can be helpful to users who need to deal with uncertainties and have an overview of ensembles of models for better understanding and decisionmaking, e.g. when they need to choose representative models for a process of decision analysis related to petroleum field development and management.
基于像素化、小倍数和油藏相似度的油藏模型集合可视化
提供油藏模型集合的概述可以帮助用户比较和分析它们的特征。一次显示一个模型的方法可能会妨碍分析人员对整个模型集的理解。在本文中,我们提出了两种可视化方法,可以同时在单个屏幕上显示多个油藏模型,目的是帮助用户比较模型并提高他们对集合特征的理解。首先,我们从整体的3D模型中计算出2D模型。然后,我们创建两个可视化,表示这些2D模型的集合。小倍数方法在网格上并排放置2D模型的热图。像素化方法在单个热图中显示n个2D模型,其中每个单元格(i, j)包含n个子单元格,这些子单元格表示每个模型的坐标(i, j)中的值。这两种方法都显示了它们的元素(热图和子单元)通过x均值聚类,这可以帮助分析人员识别集合中的相似性和代表性模型。我们使用了两种类型的距离矩阵:基于给定属性的模型的欧几里得距离或基于二维模型的特征向量的欧几里得距离。我们在巴西浊积岩储层(UNISIM-I-D/M/H)和盐下碳酸盐岩储层(UNISIM-II-D)的基准案例中测试了我们的方法。结果,小倍数方法为我们研究的系综的一些性质提供了类似的模型簇,例如UNISIM-II-D系综的孔隙度值有8个簇。这一事实表明,在孔隙度方面,八种代表性模型可以代表整体。此外,像素化方法揭示了在一个整体的所有模式的特定区域发生的模式,例如UNISIM-I-M模式的西北地区孔隙度值的突变。这两种方法都有可能帮助分析人员发现在每个单元格只有平均值的图中不可能观察到的情况。因此,我们的建议可以帮助那些需要处理不确定性并对模型集合有一个概述的用户更好地理解和决策,例如当他们需要选择具有代表性的模型进行与油田开发和管理相关的决策分析过程时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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