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首页> 外文期刊>Journal of Petroleum Exploration and Production Technology >Generalized regression and feed-forward back propagation neural networks in modelling porosity from geophysical well logs
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Generalized regression and feed-forward back propagation neural networks in modelling porosity from geophysical well logs

机译:从地球物理测井曲线建模孔隙度的广义回归和前馈反向传播神经网络

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Geophysical formation evaluation plays a fundamental role in hydrocarbon exploration and production processes. It is a process which describes different reservoir parameters using well field data. Porosity is one of the parameters that determines the amount of oil present in a rock formation and research in this area is mainly carried out by engineers and geoscientists in the petroleum industry. Accurate prediction of porosity is a difficult problem. This is mostly due to the failure in the understanding of spatial porosity parameter distribution. Artificial neural networks have proved to be a powerful tool for mapping complicated and non-linear relationships in petroleum studies. In this study, we analyze and compare generalized regression neural network (GRNN) and feed-forward back propagation neural network (FFBP) in modeling porosity in Zhenjing oilfield data. This study is calibrated on four wells of Zhenjing oilfield data. One well was used to find an empirical relationship between the well logs and porosity, while the other three wells were used to test the model’s predictive ability in the field, respectively. The findings proved that the GRN network can make more accurate and credible porosity parameter estimation than the commonly used FFBP network. Artificial intelligence can be exploited as a powerful instrument for predicting reservoir ?properties in geophysical formation evaluation and reservoir engineering in petroleum industry.
机译:地球物理地层评价在油气勘探和生产过程中起着根本性的作用。这是一个使用井场数据描述不同储层参数的过程。孔隙度是决定岩层中石油含量的参数之一,该领域的研究主要由石油行业的工程师和地球科学家进行。孔隙率的准确预测是一个难题。这主要是由于未能理解空间孔隙度参数分布。事实证明,人工神经网络是用于绘制石油研究中复杂和非线性关系的强大工具。在这项研究中,我们分析和比较了广义回归神经网络(GRNN)和前馈反向传播神经网络(FFBP)在镇静油田数据孔隙度建模中的应用。本研究在镇井油田的四口井上进行了校准。其中一口井用于发现测井曲线与孔隙度之间的经验关系,而另三口井则分别用于测试模型在现场的预测能力。研究结果证明,与常用的FFBP网络相比,GRN网络可以进行更准确,更可信的孔隙度参数估算。人工智能可以用作预测石油工业地球物理地层评估和油藏工程中油藏特性的有力工具。

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