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An adaptive neuro-fuzzy inference system for prediction of hydraulic flow units in uncored wells: a carbonate reservoir

机译:自适应神经模糊推理系统,用于预测无芯井中的水力单元:碳酸盐岩储层

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Geoscientists have always sought various approaches to improve reservoir characterisation by compartmentalising the depth interval into subsections with the highest consistency in pore throat size and distribution. Hydraulic flow units have demonstrated success in segmenting the depth interval of interest into subsections with distinguishable rock and fluid properties. At the primary stage, flow zone indicator values are calculated from core data within the reservoir of interest. A flow zone indicator is an acceptably unique measurement of the flow character of a reservoir interval, giving the relationship between petrophysical properties at the pore scale, like tortuosity and surface area, and the formation scale, say porosity and permeability. The next step segments the reservoir into more accurately delineated depth intervals, or hydraulic flow units. Several statistical approaches have been used successfully to group data into subsections of high similarity and consistency, herein referred to as hydraulic flow units. In this paper, a robust method was proposed for the prediction of flow zone indicators in uncored wells, which may lead to advances in reservoir management, saving a considerable amount of revenue merely by accurately predicting depth interval flow properties without the need for expensive coring operations. The results of this study show that adaptive neuro-fuzzy inference systems can be used with higher levels of confidence to model the unknown, but invaluable, data in uncored but logged wells. The results of this study proved the success of machine-learning approaches in identifying underlying trends and relationships within the data, as well as predicting unknown properties based on training data validated by blind test data. This study shows that soft computing and machine-learning approaches can be used to prognosticate the underlying hydraulic flow units based on well log responses in carbonate reservoirs.
机译:地球科学家一直在寻求各种方法,通过将深度间隔划分为孔喉尺寸和分布具有最高一致性的分段来改善储层特征。在将感兴趣的深度区间分割成具有明显岩石和流体特性的小节中,液压流量单元已证明是成功的。在初级阶段,根据目标油藏内的岩心数据计算出流区指标值。流动区指示剂是对一个储集层段的流动特征的可接受的唯一度量,它给出了孔隙尺度的岩石物理特性(如曲折度和表面积)与地层尺度(如孔隙度和渗透率)之间的关系。下一步将储层划分为更准确地描绘出的深度区间或液压流量单位。几种统计方法已成功地用于将数据分组为高度相似和一致的子部分,此处称为液压流量单元。在本文中,提出了一种鲁棒的方法来预测无芯井中的流区指标,这可能会导致储层管理的进步,仅通过准确地预测深度层间的流动特性而无需昂贵的取芯操作,就可以节省大量的收入。 。这项研究的结果表明,可以以更高的置信度使用自适应神经模糊推理系统来模拟无核但已测井中未知但无价的数据。这项研究的结果证明了机器学习方法在识别数据中潜在趋势和关系以及基于盲测数据验证的训练数据预测未知属性方面的成功。这项研究表明,基于碳酸盐岩储层的测井响应,软计算和机器学习方法可用于预测潜在的水力流动单元。

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