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Stochastic nonlinear inversion of seismic data for the estimation of petroelastic properties using the ensemble smoother and data reparameterization

机译:使用集合光滑和数据重物化估计岩体弹性性能的地震数据的随机非线性反演

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摘要

We have developed a new stochastic nonlinear inversion method for seismic reservoir characterization studies to jointly estimate elastic and petrophysical properties and to quantify their uncertainty. Our method aims to estimate multiple reservoir realizations of the entire set of reservoir properties, including seismic velocities, density, porosity, mineralogy, and saturation, by iteratively updating the initial ensemble of models based on the mismatch between their seismic response and the measured seismic data. The initial models are generated using geostatistical methods and the geophysical forward operators include rock-physics relations and a seismic forward model. The optimization is achieved using an iterative ensemble-based algorithm, namely, the ensemble smoother with multiple data assimilation, in which each iteration is based on a Bayesian updating step. The advantages of the proposed method are that it can be applied to nonlinear inverse problems and it can provide an ensemble of solutions from which we can quantify the uncertainty of the model properties of interest. To reduce the computational cost of the inversion, we perform the optimization in a lower dimensional data space reparameterized by singular value decomposition. The proposed methodology is validated on a synthetic case in which the set of petroelastic properties is recovered with satisfactory accuracy. Then, we applied the inversion method to a real seismic data set from the Norne field in the Norwegian Sea.
机译:我们开发了一种新的随机储层表征研究的随机非线性反转方法,共同估计弹性和岩石物理性质,并量化其不确定性。我们的方法旨在通过基于其地震响应与测量的地震数据之间的错配更新模型的初始集合,估计整个储层性质的多种储层性质,包括地震速度,密度,孔隙度,矿物学和饱和度。使用地统计方法生成初始模型,地球物理前进运营商包括岩石物理关系和地震前向模型。使用基于迭代的集合的算法实现优化,即具有多个数据同化的集合光滑,其中每次迭代基于贝叶斯更新步骤。所提出的方法的优点是它可以应用于非线性逆问题,并且它可以提供一种解决方案的集合,我们可以量化利益的模型性质的不确定性。为了降低反转的计算成本,我们通过奇异值分解来执行较低维度数据空间中的优化。所提出的方法在合成案例上验证,其中储质了岩罗弹性特性以满意的精度恢复。然后,我们将反转方法应用于从挪威海的Norne场中的真实地震数据。

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