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首页> 外文期刊>Acta Geophysica >Estimation of absolute permeability using artificial neural networks (multilayer perceptrons) based on well logs and laboratory data from Silurian and Ordovician deposits in SE Poland
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Estimation of absolute permeability using artificial neural networks (multilayer perceptrons) based on well logs and laboratory data from Silurian and Ordovician deposits in SE Poland

机译:基于SE Poland中的井日志和实验室数据,使用人工神经网络(多层透射位)估算绝对渗透率的估计

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Permeability is a property of rocks which refers to the ability of fluids to flow through each substance. It depends on several factors as pore shape and diameter. Also the presence and type of clay has a large influence on the permeability value. Permeability can be measured on rock sample in the laboratory by injecting fluid through the rock under known condition, but this provides only point information. Due to the dependence of the parameter on many factors, the deterministic estimation of permeability based on laboratory measurement and well logs is problematic. Many empirical methods for determining permeability are available in the literature and interpretation systems. An interesting approach to the problem is the use of artificial neural networks based on laboratory measurement and modern, high-resolution logging tools. The authors decided to use MLP artificial neural networks, which allow permeability estimation and can be used both in the test well and applied to neighbouring wells. The network was checked in several variants. Obtained results show the legitimacy of using artificial neural networks in the issue of estimating permeability. However, they also show limitations resulting from the lack of accurate data or influence of geological setting and processes.
机译:渗透性是岩石的属性,其是指流体流过各种物质的能力。它取决于孔形和直径的几个因素。此外,粘土的存在和类型对渗透率值具有很大的影响。通过在已知条件下通过岩石注入流体,可以在实验室中的岩石样品测量渗透率,但这仅提供了点信息。由于参数对许多因素的依赖性,基于实验室测量和井日志的渗透率确定性估计是有问题的。在文献和解释系统中提供了用于确定渗透性的许多经验方法。问题的有趣方法是基于实验室测量和现代高分辨率测井工具的人工神经网络使用。作者决定使用MLP人工神经网络,其允许渗透率估计,并且可以在测试中使用并应用于邻近的井。在多个变体中检查网络。获得的结果表明,在估算渗透性问题中使用人工神经网络的合法性。但是,它们还会显示因缺乏准确的数据或地质环境和过程的影响而导致的限制。

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