首页> 外文期刊>Journal of Tethys >Estimation of water saturation from petrophysical logs using radial basis function neural network.
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Estimation of water saturation from petrophysical logs using radial basis function neural network.

机译:使用径向基函数神经网络从岩石物理测井中估算含水饱和度。

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Estimation of reservoir water saturation (Sw) is one of the main tasks in well logging. Many empirical equations are available, which are, more or less, based on Archie equation. The present study is an application of Radial Basis Function Neural Network (RBFNN) modeling for estimation of water saturation responses in a carbonate reservoir. Four conventional petrophysical logs (PLs) including DT, LLd, RHOB and NPHI related to four wells of an oil field located in southwest of Iran are taken as inputs and Swmeasured from core analysis as output parameter of the model. To compare performance of the proposed model with empirical equations, the same database was applied. Superiority of the RBFNN model over empirical equations was examined by calculating coefficient of determination and estimated root mean squared error (RMSE) for predicted and measured Sw. For the RBFNN model, R2and RMSE are equal to 0.90 and 0.031, respectively, whereas for the best empirical equation, they are 0.81 and 0.042, respectively.
机译:储层含水饱和度(Sw)的估算是测井的主要任务之一。许多经验方程都是可用的,这些经验方程或多或少地基于Archie方程。本研究是应用径向基函数神经网络(RBFNN)建模估算碳酸盐储层中的水饱和度响应。以与伊朗西南部某油田的四口井相关的DT,LLd,RHOB和NPHI四个常规岩石物理测井(PL)为输入,并从岩心分析中测量Sw作为模型的输出参数。为了将提出的模型的性能与经验方程式进行比较,使用了相同的数据库。通过计算确定的系数和估计的和测量的Sw的估计均方根误差(RMSE),检查了RBFNN模型相对于经验方程式的优越性。对于RBFNN模型,R2和RMSE分别等于0.90和0.031,而对于最佳经验方程式,它们分别为0.81和0.042。

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