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Facies and Fracture Network Modeling by a Novel Image Processing Based Method

机译:基于新型图像处理方法的相裂缝网络建模

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A wide range of methods for geological reservoir modeling has been offered from which a few can reproduce complex geological settings, especially different facies and fracture networks. Multi Point Statistic (MPS) algorithms by applying image processing techniques and Artificial Intelligence (AI) concepts proved successful to model high-order relations from a visually and statistically explicit model, a training image. In this approach, the patterns of the final image (geological model) are obtained from a training image that defines a conceptual geological scenario for the reservoir by depicting relevant geological patterns expected to be found in the subsurface. The aim is then to reproduce these training patterns within the final image. This work presents a multiple grid filter based MPS algorithm to facies and fracture network images reconstruction. Processor is trained by training images (TIs) which are representative of a spatial phenomenon (fracture network, facies...). Results shown in this paper give visual appealing results for the reconstruction of complex structures. Computationally, it is fast and parsimonious in memory needs.
机译:已经提供了多种用于地质储层建模的方法,其中一些方法可以再现复杂的地质环境,尤其是不同相和裂缝网络。通过应用图像处理技术和人工智能(AI)概念,多点统计(MPS)算法被证明可以成功地从视觉和统计显式模型(训练图像)中建模高阶关系。在这种方法中,最终图像(地质模型)的图案是从训练图像中获得的,该训练图像通过描述预计在地下发现的相关地质图案来定义储层的概念性地质情况。然后的目的是在最终图像中重现这些训练模式。这项工作提出了一种基于多网格滤波器的MPS算法来进行相和裂缝网络图像重建。处理器通过训练图像(TI)进行训练,这些图像代表空间现象(裂缝网络,相...)。本文显示的结果为复杂结构的重建提供了视觉吸引力的结果。从计算上来说,它在内存需求方面是快速而简约的。

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