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Seismic inversion in fluvial reservoirs: Building a geologic model-based inversion for the Stratton field three-dimensional survey.

机译:河流储层的地震反演:为斯特拉顿油田三维勘测建立基于地质模型的反演。

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摘要

Seismic surveys, in particular 3D surveys, are an important tool for imaging geologic structure in the subsurface; they are routinely applied to map structural trends and geometry to define the reservoir structure. Many of the world's oil and gas reservoirs are sands deposited by river systems, but the scales of fluvial architectural elements challenge the resolution of the seismic method. One such challenging field is the Stratton field in the FR-4 Gas Play of south Texas. The reservoir is the Frio formation, a thick collection (greater than 3000 feet) of stacked fluvial deposits consisting of thin channels and splays of reservoir sand that are separated by low-permeability floodplain deposits. Of further interest, the Texas Bureau of Economic Geology (BEG) makes available a 3D seismic survey over a portion of this field; this creates a common data base for researchers to test inversion techniques to transform the seismic data into reservoir parameters. This data set has dense well coverage with 19 wells in the two-mile by one-mile seismic survey, an important feature for testing inversion techniques.;Several techniques for mapping reservoir elements using the seismic data have been proposed, they generally correlate a specific sand to a specific seismic time-horizon. The most straightforward processes track a seismic reflector or take a horizontal slice through the seismic volume to create a map of attributes to image subsurface features. In the Frio formation a river is expressed as an amalgamated ribbon of channel sands, typically 30 feet thick. To find this target in the seismic data requires a very accurate time-to-depth correlation. Techniques such as mapping the amplitude of a horizon can produce interesting patterns, but in the BEG survey the correlation to well data is poor. This research challenges the notion that the seismic inversion, as a one-to-one mapping for the BEG survey, can produce a usable geologic model. In other words, seismic attributes at a specific time may represent the convolution of the desired reservoir element with neighboring layers (e.g. tuning, multiples, etc.) and interfering parameters (e.g. gas, thin beds, and tight sands). Conversely, information on a fluvial reservoir element at a specific depth may be spread over time.;To analyze the depth-to-time mapping, a limited section (650 feet) of the upper middle Frio was chosen that has simple post-depositional deformation. The BEG data comes with well-logs for 19 wells that cover the study area. The well-logs are used to construct a detailed stratigraphic column; this strata is dissected by several floodplains that can be correlated for chronostratigraphic control. The well-log stratigraphy is compared to the seismic traces near the well-bores; from the analysis the information on a specific depth target appears spread over a broad time-window (greater than 40 ms).;Given the information spread noted in the seismic data, a technique for tracking the fluvial reservoir elements using a neural network (NN) classifier is designed and tested. Similar to fingerprint tracking, the character of the seismic trace in a broad search window is tracked away from the well-bores. Three different reservoir sand bodies are the tracking targets for the NN classifier, the first and third targets are river channel sands; the target in the second search is a splay that deposited a thin (∼ 15 feet thick) sheet of reservoir sand. The wells are divided into twelve model wells to train the network, and seven testing wells to test the resulting facies maps. The performance of the NN classifier is compared to the simple inversion technique of making an amplitude map at a specific time-slice.;Given a successful neural network design, the seismic features used for training are analyzed by a clustering and sub-setting algorithm. The NN training data are examples of the seismic trace near the well-bores that have been classified; for a 44 ms search window (with 2 ms resolution) the feature vector would be 22 points along the trace (time, amplitude). The subsetting of the features ranks which time segments in the search window contain information on the target class. The most potent features, when viewed as amplitude time-slices, often show plausible shapes for fluvial elements; in particular, we often note a "phantom-thalweg" as a trough in the seismic and high amplitude patterns that correlate to splays. Fusing the images from the "best" time-slices and the NN classifier, a fluvial model is mapped that has good correlation to the well-bore stratigraphy.
机译:地震勘测,尤其是3D勘测,是对地下地质结构进行成像的重要工具。它们通常用于绘制结构趋势和几何图形以定义储层结构。世界上许多油气储层都是河流系统沉积的沙子,但是河流建筑元素的规模对地震方法的分辨率提出了挑战。德克萨斯州南部FR-4天然气田中的斯特拉顿油田就是这样一个具有挑战性的领域。储层为Frio地层,是堆积的堆积沉积物(大于3000英尺),堆积的河流沉积物由薄的通道和由低渗透性洪泛区沉积物分隔开的储集砂沙构成。得益于进一步的发展,得克萨斯州经济地质局(BEG)对该地区的一部分进行了3D地震勘测;这为研究人员创建了一个通用数据库,以测试反演技术以将地震数据转换为储层参数。该数据集覆盖了2英里乘1英里地震勘测中的19口井的密集井,这是测试反演技术的重要特征。到特定的地震时间水平。最直接的过程是跟踪地震反射体或在地震体中截取水平切片,以创建图像地下特征的属性图。在弗里奥地层中,一条河被表示为河床沙带的混合带,通常厚30英尺。为了在地震数据中找到该目标,需要非常精确的时间-深度关联。诸如绘制地平线振幅的技术可能会产生有趣的模式,但是在BEG调查中,与井眼数据的相关性很差。这项研究挑战了这样一种观念,即地震反演作为BEG勘测的一对一映射,可以产生可用的地质模型。换句话说,在特定时间的地震属性可以表示期望的储层元素与相邻层(例如,调谐,倍数等)和干扰参数(例如,气体,薄层和致密砂岩)的卷积。相反,关于特定深度的河流储层元素的信息可能会随时间散布。为了分析深度到时间的映射,选择了上部中部Frio的有限剖面(650英尺),该剖面具有简单的沉积后变形。 BEG数据随附覆盖研究区域的19口井的测井曲线。测井曲线用于构造详细的地层柱。该地层由几个洪泛区分开,这些洪泛区可以进行年代地层控制。将测井地层与井眼附近的地震迹线进行比较。通过分析,关于特定深度目标的信息似乎散布在宽广的时间窗口(大于40 ms)中;鉴于地震数据中记录的信息散布,使用神经网络(NN)跟踪河流储层元素的技术)分类器经过设计和测试。与指纹跟踪类似,在宽的搜索窗口中也跟踪地震道的特征,使其远离井眼。 NN分类器的追踪目标是三种不同的储集砂体,第一个和第三个目标是河道砂。在第二次搜索中,目标是一个八角形,它沉积了薄薄的(约15英尺厚)储层砂。这些井分为十二个模型井以训练网络,还有七个测试井以测试生成的相图。将神经网络分类器的性能与在特定时间片上制作振幅图的简单反演技术进行比较。;鉴于成功的神经网络设计,通过聚类和子集算法分析了用于训练的地震特征。 NN训练数据是已分类井眼附近地震道的示例;对于44毫秒的搜索窗口(分辨率为2毫秒),特征矢量沿着轨迹(时间,幅度)为22个点。功能的子集对搜索窗口中的哪些时间段包含有关目标类的信息进行排名。当将其视为幅度时间切片时,最有力的特征通常显示出河流元素的合理形状。特别是,我们经常注意到“ phantom-thalweg”是与张开相关的地震和高振幅模式中的低谷。将“最佳”时间切片和NN分类器中的图像融合在一起,即可绘制出一个与井眼地层具有良好相关性的河流模型。

著录项

  • 作者

    Odom, Richard Charles.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Geology.;Geophysics.;Petroleum Geology.
  • 学位 M.S.
  • 年度 2009
  • 页码 170 p.
  • 总页数 170
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:37:49

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