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首页> 外文期刊>Journal of geophysics and engineering >Fault zone identification in the eastern part of the Persian Gulf based on combined seismic attributes
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Fault zone identification in the eastern part of the Persian Gulf based on combined seismic attributes

机译:基于组合地震属性的波斯湾东部断层带识别

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Faults, as main pathways for fluids, play a critical role in creating regions of high porosity and permeability, in cutting cap rock and in the migration of hydrocarbons into the reservoir. Therefore, accurate identification of fault zones is very important in maximizing production from petroleum traps. Image processing and modern visualization techniques are provided for better mapping of objects of interest. In this study, the application of fault mapping in the identification of fault zones within the Mishan and Aghajari formations above the Guri base unconformity surface in the eastern part of Persian Gulf is investigated. Seismic single- and multi-trace attribute analyses are employed separately to determine faults in a vertical section, but different kinds of geological objects cannot be identified using individual attributes only. A mapping model is utilized to improve the identification of the faults, giving more accurate results. This method is based on combinations of all individual relevant attributes using a neural network system to create combined attributes, which gives an optimal view of the object of interest. Firstly, a set of relevant attributes were separately calculated on the vertical section. Then, at interpreted positions, some example training locations were manually selected in each fault and non-fault class by an interpreter. A neural network was trained on combinations of the attributes extracted at the example training locations to generate an optimized fault cube. Finally, the results of the fault and nonfault probability cube were estimated, which the neural network applied to the entire data set. The fault probability cube was obtained with higher mapping accuracy and greater contrast, and with fewer disturbances in comparison with individual attributes. The computed results of this study can support better understanding of the data, providing fault zone mapping with reliable results.
机译:断层作为流体的主要通道,在形成高孔隙度和高渗透率的区域,切割盖层岩以及将碳氢化合物运入储层中起着至关重要的作用。因此,准确识别断层带对于最大化石油捕集器的产量非常重要。提供图像处理和现代可视化技术以更好地映射感兴趣的对象。在这项研究中,研究了断层测绘在识别波斯湾东部古里基底不整合面以上的密山和阿加哈里组的断层带中的应用。单独使用地震单迹线和多迹线属性分析来确定垂直剖面中的断层,但是仅使用单个属性就无法识别不同种类的地质对象。利用映射模型可以改进对故障的识别,从而获得更准确的结果。该方法基于使用神经网络系统创建的组合属性的所有单个相关属性的组合,从而提供感兴趣对象的最佳视图。首先,在垂直部分分别计算了一组相关属性。然后,在解释位置上,由解释员在每个故障和非故障类别中手动选择一些示例训练位置。在示例训练位置提取的属性组合上训练了神经网络,以生成优化的故障立方体。最后,估计了故障和非故障概率立方体的结果,然后将神经网络应用于整个数据集。与单个属性相比,获得的故障概率立方体具有更高的映射精度和更大的对比度,并且具有更少的干扰。这项研究的计算结果可以支持更好地理解数据,为断层图提供可靠的结果。

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