深海储层地下模拟中地震定量解释的不确定性降低

P. Kuzmenko, R. Valiakhmetov, F. Gerecitano, Viktor Maliar, G. Kashuba, Viktor Buhrii, V. Loktiev, A. Murineddu, M. Zhiyenkulov, A. Romi, Carlo D'Aguanno
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引用次数: 0

摘要

历史上,地震资料一直被用来对地下地质进行构造解释。现代定量解释方法旨在从地震资料中提取有地质价值的信息。这项工作证明了岩石物理学如何能够根据地震衍生属性对储层属性进行最佳预测。将地震驱动的方法与先前的地质知识结合到概率地下模型中,可以捕获不确定性并量化未勘探地区新井的风险。根据获得的地震资料估计的弹性性质受沉积环境、流体含量和当地地质趋势的影响。通过应用岩石物理模型,我们能够预测远离井控点的潜在岩性的弹性特性,无论它是否已被穿透。利用地震振幅随入射角(AVO)和方位角(AVAZ)的变化,结合岩石物理解释进行了随机建模,以捕捉深层Visean地层的储层分布。地震反演是通过现有的测井资料和传统的构造解释进行校准的。描述了DDB中部深下石炭系靶区的地震弹性反演结果。流体对密度和Vp的影响最小。交叉偶极子声学测井与宽方位角地震资料结合使用,并进行幅度控制处理。确定了碳酸盐岩沉积的地震各向异性增大。结果涵盖了一系列岩石类和相关可能性:粘土矿物、致密砂岩、多孔砂岩和碳酸盐。我们分析了最大角度确定对弹性反演的影响,从32.5到38.5度不等。远角的选择对密度的影响最大。人工智能不会发生显著变化。也许38.5度的温度在碳酸盐岩之上提供了更好的响应。它似乎不会损害AVA的整体行为,从而导致良好的密度结果,因为较高的入射角包括在内。对于感兴趣的井段上的高密度层,它可以更好地与井相结合。砂岩概率立方在解释岩性分类时必须始终考虑,在许多情况下可能会产生误导(例如,当砂岩和页岩概率非常接近时,由于弹性参数的微小变化)。作者提供了一种综合的整体方法,用于定量解释、地下建模、不确定性评估,以及利用已有的测井曲线和最近获得的地震数据表征储层分布。本文支持了以前的努力,并鼓励了在这一主题上有待完成的工作。我们将描述如何使用定量解释来描述储层,突出值和不确定性,并指出进一步改进有效地下建模过程的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Seismic Quantitative Interpretation for Uncertainty Reduction of Subsurface Modeling of the Deep Visean Reservoirs
The seismic data have historically been utilized to perform structural interpretation of the geological subsurface. Modern approaches of Quantitative Interpretation are intended to extract geologically valuable information from the seismic data. This work demonstrates how rock physics enables optimal prediction of reservoir properties from seismic derived attributes. Using a seismic-driven approach with incorporated prior geological knowledge into a probabilistic subsurface model allowed capturing uncertainty and quantifying the risk for targeting new wells in the unexplored areas. Elastic properties estimated from the acquired seismic data are influenced by the depositional environment, fluid content, and local geological trends. By applying the rock physics model, we were able to predict the elastic properties of a potential lithology away from the well control points in the subsurface whether or not it has been penetrated. Seismic amplitude variation with incident angle (AVO) and azimuth (AVAZ) jointly with rock-derived petrophysical interpretations were used for stochastical modeling to capture the reservoir distribution over the deep Visean formation. The seismic inversion was calibrated by available well log data and by traditional structural interpretation. Seismic elastic inversion results in a deep Lower Carboniferous target in the central part of the DDB are described. The fluid has minimal effect on the density and Vp. Well logs with cross-dipole acoustics are used together with wide-azimuth seismic data, processed with amplitude control. It is determined that seismic anisotropy increases in carbonate deposits. The result covers a set of lithoclasses and related probabilities: clay minerals, tight sandstones, porous sandstones, and carbonates. We analyzed the influence of maximum angles determination for elastic inversion that varied from 32.5 to 38.5 degrees. The greatest influence of the far angles selection is on the density. AI does not change significantly. Probably the 38,5 degrees provides a superior response above the carbonates. It does not seem to damage the overall AVA behavior, which result in a good density outcome, as higher angles of incidence are included. It gives a better tie to the wells for the high density layers over the interval of interest. Sand probability cube must always considered in the interpretation of the lithological classification that in many cases may be misleading (i.e. when sand and shale probabilities are very close to each other, because of small changes in elastic parameters). The authors provide an integrated holistic approach for quantitative interpretation, subsurface modeling, uncertainty evaluation, and characterization of reservoir distribution using pre-existing well logs and recently acquired seismic data. This paper underpins the previous efforts and encourages the work yet to be fulfilled on this subject. We will describe how quantitative interpretation was used for describing the reservoir, highlight values and uncertainties, and point a way forward for further improvement of the process for effective subsurface modeling.
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