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Hydraulic flow units' estimation from seismic data using artificial intelligence systems, an example from a gas reservoir in the Persian Gulf

机译:利用人工智能系统的液压流量单位从地震数据的估计,来自波斯湾的煤气藏的示例

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摘要

In recent years, considering the reservoir pressure drop in productive wells, designing the optimal well trajectory for production and injection in enhanced oil recovery (EOR) plans requires to determine hydraulic flow unit (HFU) in the reservoir. HFUs can also be used for petrophysical zonation of reservoirs as well as permeability predictions in uncored intervals or zones with low quality core data of wells. In the present study we have tried to integrate 3D seismic data with well data in order to find a quantitative relationship between flow zone index (FZI) and seismic attributes through employing linear regression and artificial intelligence models. Using this approach, FZI can be predicted using the information which is propagated in the whole field and achievable in the early stage of field development and consequently a suitable HFUs model may be represented. To this end, the suitable attributes for FZI estimation were selected by stepwise linear regression from extracted acoustic impedance (AI) and sample based attributes. Afterward, three optimal intelligent systems including probabilistic neural network (PNN), multi-layer feed forward network (MLFN), and radial basis function networks (RBFN) were employed. The obtained results reveal that PNN is the most accurate estimator compared to MLFN, RBFN, and multi-attribute regression methods. In the final stage, PNN was applied to develop 3D hydraulic flow unit model for the reservoir section of the investigated carbonate gas field located in Persian Gulf.
机译:近年来,考虑到生产井的水库压降,设计用于生产和注射的最佳井轨迹,在增强的储存(EOR)计划中需要确定储层中的液压流量单元(HFU)。 HFUS还可用于储层的岩石物理区划,以及井中未能间隔或区域的渗透性预测。在本研究中,我们尝试通过井数据集成3D地震数据,以便通过采用线性回归和人工智能模型来找到流量区指数(FZI)和地震属性之间的定量关系。使用这种方法,可以使用在整个领域中传播的信息来预测FZI,并且在现场开发的早期阶段可以实现,因此可以表示合适的HFU模型。为此,通过从提取的声阻抗(AI)和基于样本的属性的逐步线性回归选择FZI估计的合适属性。之后,采用了包括概率神经网络(PNN),多层馈送前网(MLFN)和径向基函数网络(RBFN)的三种最佳智能系统。所获得的结果表明,与MLFN,RBFN和多属性回归方法相比,PNN是最精确的估计器。在最终阶段,PNN被应用于开发用于位于波斯湾的研究碳酸盐气田的储层3D液压流动单元模型。

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