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A fuzzy logic approach for estimation of permeability and rock type from conventional well log data: an example from the Kangan reservoir in the Iran Offshore Gas Field

机译:常规井日志数据估算渗透性和岩石类型的模糊逻辑方法:伊朗近海气田康山水库示例

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Permeability and rock type are the most important rock properties which can be used as input parameters to build 3D petrophysical models of hydrocarbon reservoirs. These parameters are derived from core samples which may not be available for all boreholes, whereas, almost all boreholes have well log data. In this study, the importance of the fuzzy logic approach for prediction of rock type from well log responses was shown by using an example of the Vp to Vs ratio for lithology determination from crisp and fuzzy logic approaches. A fuzzy c-means clustering technique was used for rock type classification using porosity and permeability data. Then, based on the fuzzy possibility concept, an algorithm was prepared to estimate clustering derived rock types from well log data. Permeability was modelled and predicted using a Takagi-Sugeno fuzzy inference system. Then a back propagation neural network was applied to verify fuzzy results for permeability modelling. For this purpose, three wells of the Iran offshore gas field were chosen for the construction of intelligent models of the reservoir, and a forth well was used as a test well to evaluate the reliability of the models. The results of this study show that fuzzy logic approach was successful for the prediction of permeability and rock types in the Iran offshore gas field.
机译:渗透性和岩石类型是最重要的岩石特性,可用作建立碳氢化合物储层3D岩石物理模型的输入参数。这些参数来自核心样本,这可能不适用于所有钻孔,而几乎所有钻孔都有很好的日志数据。在这项研究中,通过使用VP与VS比率的岩性测定的岩性测定的思维法的示例,显示了从良好的对数响应预测岩石类型的模糊逻辑方法的重要性。使用孔隙率和渗透性数据用于模糊C型聚类技术用于岩型分类。然后,基于模糊可能性概念,准备了一种算法来估计来自井日志数据的聚类衍生岩石类型。使用Takagi-Sugeno模糊推理系统进行建模和预测渗透性。然后应用了反向传播神经网络以验证渗透性建模的模糊结果。为此目的,选择了伊朗海上气体领域的三个井用于建造储层的智能模型,并且使用良好的井作为测试良好,以评估模型的可靠性。该研究的结果表明,模糊逻辑方法是成功的,用于预测伊朗近海气田中的渗透性和岩石类型。

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