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Integration of well data into geostatistical seismic amplitude variation with angle inversion for facies estimation

机译:通过角度反演将井数据集成到地统计地震振幅变化中,以进行岩相估计

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We have developed a new iterative geostatistical seismic amplitude variation with angle (AVA) inversion algorithm that inverts prestack seismic data, sorted by angle gathers, directly for high-resolution density, P-wave velocity, S-wave velocity, and facies models. This novel iterative geostatistical inverse procedure is based on two key main principles: the use of stochastic sequential simulation and cosimulation as the perturbation technique of the model parameter space and a global optimizer based on a crossover genetic algorithm to converge the simulated earth models toward an objective function, in this case, the mismatch between the recorded and synthetic prestack seismic data. As a geostatistical approach, all the elastic models simulated during the iterative procedure honors the well-log data at its own locations, the marginal prior distributions of P-wave velocity and S-wave velocity, and density estimated from the available well-log data, and the corresponding joint distributions between density versus P-wave velocity and P-wave versus S-wave velocity. We successfully tested and implemented this new algorithm on a synthetic prestack data set that mimicked the main properties of a real reservoir, and on a real seismic data set acquired over a deepwater turbidite oil reservoir. In both cases, the results showed a good convergence between the recorded and synthetic seismic. The synthetic example showed high-resolution inverted petroelastic models that reproduced the true petroelastic models. The inverted petroelastic models retrieved from the real case study found high resolution and do agree with previous seismic reservoir characterization studies.
机译:我们已经开发了一种新的带角度(AVA)反演的迭代地统计地震振幅变化算法,该算法可对叠前地震数据进行反演,并按角度道集进行排序,直接用于高分辨率密度,P波速度,S波速度和相模型。这种新颖的迭代地统计逆过程基于两个主要原理:使用随机序贯仿真和协同仿真作为模型参数空间的摄动技术,以及基于交叉遗传算法的全局优化器以将模拟地球模型收敛到目标在这种情况下,其作用是记录的和合成的叠前地震数据之间的不匹配。作为一种地统计学方法,在迭代过程中模拟的所有弹性模型都将在其自身位置处的测井数据,P波速度和S波速度的边际先验分布以及根据可用的测井数据估算出的密度作为参数,以及密度与P波速度和P波与S波速度之间的对应联合分布。我们在模拟真实储层主要属性的合成叠前数据集以及在深水浊积油储层中获取的真实地震数据集上成功测试并实现了该新算法。在这两种情况下,结果均表明已记录地震与合成地震之间具有良好的收敛性。合成示例显示了高分辨率的反向石油弹性模型,该模型再现了真实的石油弹性模型。从真实案例研究中获得的反演岩石弹性模型具有高分辨率,并且与以前的地震储层表征研究相吻合。

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