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Analyzing reservoir and overburden impacts on seismic and electromagnetic responses and the applicability of seismic and EM methods in deep water reservoir characterization through forward and inverse modeling.

机译:通过正向和反向建模分析储层和覆盖层对地震和电磁响应的影响,以及地震和EM方法在深水储层表征中的适用性。

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摘要

Seismic techniques have been widely used for hydrocarbon exploration. Recently, electromagnetic (EM) methods have drawn great attention in the area of reservoir characterization. However, few efforts have been made to explore the reservoir overburden impacts that affect the reliability of seismic, EM or joint methods for exploration. It is essential for successful reservoir hydrocarbon estimation to identify favorable overburden and reservoir conditions where reservoir fluid saturation can be reliably inferred from seismic data, EM data, or integrated geophysical information. This study evaluates the sensitivity of seismic and electromagnetic (EM) responses to hydrocarbon reservoir and overburden attributes through forward and inverse modeling. First I generated baseline truth models from well log data, then varied the overburden and reservoir parameters (e.g., target layer thickness, porosity, saturations, etc.) within their physical ranges, producing multiple realistic subsurface models. Next, geophysical (seismic and EM) responses were computed for each model using seismic/EM forward modeling algorithms, and the differences in seismic and EM data between these realistic and baseline models were analyzed. Forward modeling results suggest that EM calculations are sensitive to several factors both in the reservoir and the overburden. Outside the reservoir, EM responses are most sensitive to seawater electrical conductivity, seawater depth and overburden sediment thickness. While among the parameters/properties in the reservoir, EM responses are most sensitive to gas saturations. Seismic data show strong responses to reservoir parameters, most notably to reservoir porosity. After identifying the significant parameters, regression analyses using generalized linear models were performed and analyzed. Subsequent to exploring the sensitivity of seismic and EM responses to changes in overburden and reservoir parameters/attributes, the applicability of using these datasets for inverse modeling (parameter estimation) was evaluated using a Minimum Relative Entropy-based Bayesian stochastic inversion. Results suggest that estimations of reservoir parameters using high dimensional models can be rather difficult to do with great confidence. It was found that the more prior information available on the overburden unknowns, the closer the posterior estimation of the reservoir parameters will be to the actual values. Results also show that seismic methods are effective in estimating reservoir porosity, while EM has the potential for estimating reservoir saturations. The integration of both, assuming enough information about the priors are known, has the potential to accurately estimate reservoir parameters presuming enough models are run. Informative prior knowledge about the field site, efficient sampling techniques, reduction of the parameter space, and computing capability are all necessary components for successful geophysical characterization of a petroleum reservoir, given the high dimensionality and non-uniqueness of the inverse problem.
机译:地震技术已被广泛用于油气勘探。近来,电磁(EM)方法在储层表征领域引起了极大的关注。但是,很少有人努力探索影响地震,EM或联合勘探方法可靠性的储层覆盖影响。成功地进行储层碳氢化合物估算至关重要的是,要确定有利的上覆岩层和储层条件,从地震数据,EM数据或综合的地球物理信息可以可靠地推断出储层流体的饱和度。这项研究通过正向和反向建模评估了地震和电磁(EM)对油气藏和覆盖层属性的敏感性。首先,我从测井数据生成了基线真值模型,然后在其物理范围内改变了覆盖层和储层参数(例如目标层厚度,孔隙度,饱和度等),从而生成了多个真实的地下模型。接下来,使用地震/电磁正演模型算法为每个模型计算地球物理(地震和电磁)响应,并分析这些现实模型和基准模型之间的地震和电磁数据差异。前向建模结果表明,EM计算对储层和覆盖层中的几个因素都敏感。在水库外部,电磁响应对海水电导率,海水深度和上覆沉积物厚度最敏感。在储层的参数/属性中,EM响应对天然气饱和度最敏感。地震数据显示出对储层参数的强烈响应,尤其是对储层孔隙度的响应。确定重要参数后,使用广义线性模型进行回归分析并进行分析。在探索地震和电磁响应对覆盖层和储层参数/属性变化的敏感性之后,使用基于最小相对熵的贝叶斯随机反演评估了使用这些数据集进行反演(参数估计)的适用性。结果表明,使用高维模型估算储层参数可能很难充满信心。已经发现,关于覆盖层未知数的更多先验信息可利用,储层参数的后验估计将更接近于实际值。结果还表明,地震方法在估算储层孔隙度方面是有效的,而电磁法具有估算储层饱和度的潜力。假设有关先验的足够信息已知,那么两者的集成就有可能在运行足够多的模型的前提下准确估算储层参数。考虑到反演问题的高维性和非唯一性,关于油田现场的信息性先验知识,有效的采样技术,减少参数空间以及计算能力都是成功表征石油储层的必要要素。

著录项

  • 作者

    Kellogg, Anthony Dean.;

  • 作者单位

    State University of New York at Buffalo.;

  • 授予单位 State University of New York at Buffalo.;
  • 学科 Geology.Water Resource Management.Geophysics.
  • 学位 M.S.
  • 年度 2010
  • 页码 87 p.
  • 总页数 87
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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