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Estimation of Reservoir Porosity and Water Saturation Based on Seismic Attributes Using Support Vector Regression Approach

机译:支持向量回归法基于地震属性的储层孔隙度和含水饱和度估算

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摘要

Porosity and fluid saturation distributions are crucial properties of hydrocarbon reservoirs and are involved in almost all calculations related to reservoir and production. True measurements of these parameters derived from laboratory measurements, are only available at the isolated localities of a reservoir and also are expensive and time-consuming. Therefore, employing other methodologies which have stiffness, simplicity, and cheapness is needful. Support Vector Regression approach is a moderately novel method for doing functional estimation in regression problems. Contrary to conventional neural networks which minimize the error on the training data by the use of usual Empirical Risk Minimization principle, Support Vector Regression minimizes an upper bound on the anticipated risk by means of the Structural Risk Minimization principle. This difference which is the destination in statistical learning causes greater ability of this approach for generalization tasks. In this study, first, appropriate seismic attributes which have an underlying dependency with reservoir porosity and water saturation are extracted. Subsequently, a non-linear support vector regression algorithm is utilized to obtain quantitative formulation between porosity and water saturation parameters and selected seismic attributes. For an undrilled reservoir, in which there are no sufficient core and log data, it is moderately possible to characterize hydrocarbon bearing formation by means of this method. (C) 2014 Elsevier B.V. All rights reserved.
机译:孔隙度和流体饱和度分布是油气藏的关键属性,几乎涉及与油气藏和生产有关的所有计算。从实验室测量中得出的这些参数的真实测量值只能在储层的孤立位置获得,而且昂贵且耗时。因此,需要采用具有刚性,简单性和便宜性的其他方法。支持向量回归方法是在回归问题中进行功能估计的一种适度新颖的方法。与使用通常的经验风险最小化原理将训练数据的误差最小化的传统神经网络相反,支持向量回归通过结构风险最小化原理将预期风险的上限最小化。这种差异是统计学习的目的,这导致此方法具有更强的泛化任务能力。在这项研究中,首先,提取与储层孔隙度和含水饱和度具有潜在依赖性的适当地震属性。随后,使用非线性支持向量回归算法来获得孔隙度和含水饱和度参数与所选地震属性之间的定量关系。对于没有足够岩心和测井数据的未钻井储层,通过这种方法可以适度地表征含烃地层的特征。 (C)2014 Elsevier B.V.保留所有权利。

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