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Identification of coal seam strata from geophysical logs of borehole using Adaptive Neuro-Fuzzy Inference System

机译:自适应神经模糊推理系统从钻孔地球物理测井资料识别煤层

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摘要

Different parameters obtained through well-logging geophysical sensors such as SP, resistivity, gamma-gamma, neutron, natural gamma and acoustic, help in identification of strata and estimation of the physical, electrical and acoustical properties of the subsurface lithology. Strong and conspicuous changes in some of the log parameters associated with any particular stratigraphy formation, are function of its composition, physical properties and help in classification. However some substrata show moderate values in respective log parameters and make difficult to identify or assess the type of strata, if we go by the standard variability ranges of any log parameters and visual inspection. The complexity increases further with more number of sensors involved. An attempt is made to identify the type of stratigraphy from borehole geophysical log data using a combined approach of neural networks and fuzzy logic, known as Adaptive Neuro-Fuzzy Inference System. A model is built based on a few data sets (geophysical logs) of known stratigraphy of in coal areas of Kothagudem, Godavari basin and further the network model is used as test model to infer the lithology of a borehole from their geophysical logs, not used in simulation. The results are very encouraging and the model is able to decipher even thin cola seams and other strata from borehole geophysical logs. The model can be further modified to assess the physical properties of the strata, if the corresponding ground truth is made available for simulation. (C) 2008 Elsevier B.V. All rights reserved.
机译:通过测井的地球物理传感器获得的不同参数,例如SP,电阻率,伽玛-伽玛,中子,天然伽玛和声学,可帮助识别地层并估算地下岩性的物理,电和声学特性。与任何特定地层形成有关的某些测井参数的强烈而明显的变化是其组成,物理性质的函数,并有助于分类。但是,如果我们遵循任何测井参数和目测的标准可变性范围,则某些层在各自的测井参数中显示中等值,并且难以识别或评估地层类型。随着涉及的传感器数量增加,复杂度进一步增加。尝试使用神经网络和模糊逻辑的组合方法(称为自适应神经模糊推理系统)从井眼地球物理测井数据中识别地层的类型。基于Godavari盆地Kothagudem煤区的已知地层的几个数据集(地球物理测井)建立模型,然后将网络模型用作测试模型,以从其地球物理测井推断井眼的岩性,而不使用在模拟中。结果非常令人鼓舞,该模型甚至可以从钻孔地球物理测井资料中识别出甚至薄的可乐接缝和其他地层。如果相应的地面真相可用于模拟,则可以进一步修改模型以评估地层的物理属性。 (C)2008 Elsevier B.V.保留所有权利。

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