首页> 外文期刊>Open Journal of Geology >Prediction of Shear Wave Velocity Using Artificial Neural Network Technique, Multiple Regression and Petrophysical Data: A Case Study in Asmari Reservoir (SW Iran)
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Prediction of Shear Wave Velocity Using Artificial Neural Network Technique, Multiple Regression and Petrophysical Data: A Case Study in Asmari Reservoir (SW Iran)

机译:利用人工神经网络技术,多元回归和岩石物理数据预测剪切波速度:以阿斯马里水库(伊朗西南)为例

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Shear wave velocity has numerous applications in geomechanical, petrophysical and geophysical studies of hydrocarbon reserves. However, data related to shear wave velocity isn’t available for all wells, especially old wells and it is very important to estimate this parameter using other well logging. Hence, lots of methods have been developed to estimate these data using other available information of reservoir. In this study, after processing and removing inappropriate petrophysical data, we estimated petrophysical properties affecting shear wave velocity of the reservoir and statistical methods were used to establish relationship between effective petrophysical properties and shear wave velocity. To predict (VS), first we used empirical relationships and then multivariate regression methods and neural networks were used. Multiple regression method is a powerful method that uses correlation between available information and desired parameter. Using this method, we can identify parameters affecting estimation of shear wave velocity. Neural networks can also be trained quickly and present a stable model for predicting shear wave velocity. For this reason, this method is known as “dynamic regression” compared with multiple regression. Neural network used in this study is not like a black box because we have used the results of multiple regression that can easily modify prediction of shear wave velocity through appropriate combination of data. The same information that was intended for multiple regression was used as input in neural networks, and shear wave velocity was obtained using compressional wave velocity and well logging data (neutron, density, gamma and deep resistivity) in carbonate rocks. The results show that methods applied in this carbonate reservoir was successful, so that shear wave velocity was predicted with about 92 and 95 percents of correlation coefficient in multiple regression and neural network method, respectively. Therefore, we propose using these methods to estimate shear wave velocity in wells without this parameter.
机译:剪切波速度在油气储量的地球力学,岩石物理和地球物理研究中有许多应用。但是,并非所有井(尤其是旧井)都提供与剪切波速度有关的数据,因此使用其他测井法估算该参数非常重要。因此,已经开发出许多方法来使用储层的其他可用信息来估计这些数据。在这项研究中,在处理和删除了不合适的岩石物理数据之后,我们估计了影响储层剪切波速度的岩石物理性质,并使用统计方法建立了有效岩石物理性质与剪切波速度之间的关系。为了预测(VS),首先我们使用经验关系,然后使用多元回归方法和神经网络。多元回归方法是一种强大的方法,它利用了可用信息和所需参数之间的相关性。使用这种方法,我们可以确定影响剪切波速度估算的参数。神经网络也可以快速训练,并提供用于预测剪切波速度的稳定模型。因此,与多元回归相比,该方法称为“动态回归”。本研究中使用的神经网络不像黑匣子,因为我们使用了多元回归的结果,可以通过适当的数据组合轻松地修改剪切波速度的预测。打算用于多元回归的相同信息被用作神经网络的输入,并且利用碳酸盐岩中的压缩波速度和测井数据(中子,密度,γ和深电阻率)获得了剪切波速度。结果表明,在该碳酸盐岩储层中应用的方法是成功的,因此在多元回归法和神经网络法中,剪切波速度的相关系数分别约为92%和95%。因此,我们建议使用这些方法来估算没有此参数的井中的剪切波速度。

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