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A new technique for lithology and fluid content prediction from prestack data: An application to a carbonate reservoir

机译:从叠前数据预测岩性和流体含量的新技术:在碳酸盐岩储层中的应用

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One of the leading challenges in hydrocarbon recovery is predicting rock types/fluid content distribution throughout the reservoir away from the boreholes because rock property determination is a major source of uncertainty in reservoir modeling studies. Spatial determination of the lateral and vertical heterogeneities has a direct impact on a reservoir model because it will affect the property distributions. An inappropriate determination of the facies distribution will lead to unrealistic reservoir behavior. Because these data can take different forms (lithologs, cuttings, and for seismic, poststack, and prestack attributes) and have different resolutions, the manual integration of all the information can be tedious and is sometimes impractical. We developed a new neural network-based methodology called democratic neural network association (DNNA). The DNNA method was trained using lithology logs from wells simultaneously with prestack seismic data. This technique, using a probabilistic approach, aims to find patterns in seismic that will predict lithology distribution and uncertainty.
机译:油气开采方面的主要挑战之一是预测整个储层中远离井眼的岩石类型/流体含量分布,因为岩石性质的确定是储层建模研究不确定性的主要来源。横向和垂直非均质性的空间确定对储层模型具有直接影响,因为它将影响属性分布。对相分布的不适当确定将导致不切实际的储层行为。因为这些数据可以采用不同的形式(岩性,切屑,以及地震,叠后和叠前属性)并且具有不同的分辨率,所以手动整合所有信息可能是乏味的,有时是不切实际的。我们开发了一种新的基于神经网络的方法,称为民主神经网络协会(DNNA)。使用来自井的岩性测井资料和叠前地震资料同时训练DNNA方法。该技术采用概率方法,旨在在地震中寻找可预测岩性分布和不确定性的模式。

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