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Porosity and Permeability Estimation by Gradient-Based History Matching Using Time-Lapse Seismic Data

机译:时移地震资料的基于梯度历史拟合的孔隙度和渗透率估算

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A method based on the Gauss-Newton optimization technique for continuous model updating with respect to 4D seismic data is presented. The study uses a commercial finite difference black oil reservoir simulator and a standard rock physics model to predict seismic amplitudes as a function of porosity and permeabilities. The main objective of the study is to test the feasibility of using 4D seismic data as input to reservoir parameter estimation problems. The algorithm written for this study, which was initially developed for the estimation of saturation and pressure changes from time-lapse seismic data, consists of three parts: the reservoir simulator, the rock physics petro-elastic model, and the optimization algorithm. The time-lapse seismic data are used for observation purposes. In our example, a simulation model generated the seismic data, then the model was modified after this the algorithm was used to fit the data generated in the previous step. History matching of reservoir behavior is difficult because of the problem is not unique. More than one solution exists that matches the available data. Therefore, empirical knowledge about rock types from laboratory measurements are used to constraint the inversion process. The Gauss-Newton inversion reduces the misfit between observed and calculated time-lapse seismic amplitudes. With this method, it is possible to estimate porosity and permeability distributions from time-lapse data. Since these parameters are estimated for every single grid cell in the reservoir model, the number of model parameters is high, and therefore the problem will be underdetermined. Therefore, a good fit with the observation data is not necessary for a good estimation of the unknown reservoir properties. The methods for reducing the number of unknown parameters and the associated uncertainties is discussed.
机译:提出了一种基于高斯-牛顿优化技术的4D地震数据连续模型更新方法。该研究使用商业上的有限差分黑油储层模拟器和标准岩石物理模型来预测地震波振幅与孔隙度和渗透率的关系。该研究的主要目的是测试使用4D地震数据作为储层参数估计问题输入的可行性。为这项研究编写的算法最初是根据随时间推移的地震数据估算饱和度和压力变化而开发的,它由三部分组成:储层模拟器,岩石物理岩石弹性模型和优化算法。延时地震数据用于观察目的。在我们的示例中,模拟模型生成了地震数据,然后在使用算法拟合上一步中生成的数据之后对模型进行了修改。由于问题不是唯一的,因此很难对储层行为进行历史匹配。存在多个与可用数据匹配的解决方案。因此,通过实验室测量获得的有关岩石类型的经验知识被用来限制反演过程。高斯-牛顿反演减少了观测到的和计算出的延时地震振幅之间的失配。使用这种方法,可以从时移数据估计孔隙度和渗透率分布。由于针对储层模型中的每个网格单元估计了这些参数,因此模型参数的数量很多,因此该问题将无法确定。因此,对于未知储层特性的良好估计,不需要与观测数据很好地拟合。讨论了减少未知参数数量和相关不确定性的方法。

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