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Lithology and fluid prediction from prestack seismic data using a Bayesian model with Markov process prior

机译:使用马尔可夫过程先验的贝叶斯模型根据叠前地震数据进行岩性和流体预测

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We invert prestack seismic amplitude data to find rock properties of a vertical profile of the earth. In particular we focus on lithology, porosity and fluid. Our model includes vertical dependencies of the rock properties. This allows us to compute quantities valid for the full profile such as the probability that the vertical profile contains hydrocarbons and volume distributions of hydrocarbons. In a standard point wise approach, these quantities can not be assessed. We formulate the problem in a Bayesian framework, and model the vertical dependency using spatial statistics. The relation between rock properties and elastic parameters is established through a stochastic rock model, and a convolutional model links the reflectivity to the seismic. A Markov chain Monte Carlo (MCMC) algorithm is used to generate multiple realizations that honours both the seismic data and the prior beliefs and respects the additional constraints imposed by the vertical dependencies. Convergence plots are used to provide quality check of the algorithm and to compare it with a similar method. The implementation has been tested on three different data sets offshore Norway, among these one profile has well control. For all test cases the MCMC algorithm provides reliable estimates with uncertainty quantification within three hours. The inversion result is consistent with the observed well data. In the case example we show that the seismic amplitudes make a significant impact on the inversion result even if the data have a moderate well tie, and that this is due to the vertical dependency imposed on the lithology fluid classes in our model. The vertical correlation in elastic parameters mainly influences the upside potential of the volume distribution. The approach is best suited to evaluate a few selected vertical profiles since the MCMC algorithm is computer demanding.
机译:我们对叠前地震振幅数据进行反演,以找到地球垂直剖面的岩石特性。我们特别关注岩性,孔隙度和流体。我们的模型包括岩石属性的垂直相关性。这使我们能够计算出对整个剖面有效的数量,例如垂直剖面包含碳氢化合物的概率和碳氢化合物的体积分布。在标准的逐点方法中,无法评估这些数量。我们在贝叶斯框架中制定问题,并使用空间统计数据对垂直依赖性进行建模。岩石特性和弹性参数之间的关系是通过随机岩石模型建立的,而卷积模型将反射率与地震联系起来。马尔可夫链蒙特卡罗(MCMC)算法用于生成多个实现,这些实现既符合地震数据又符合先验信念,并尊重垂直依赖性带来的附加约束。收敛图用于提供算法的质量检查,并将其与类似方法进行比较。该实施已在挪威海上的三个不同数据集上进行了测试,其中一个配置文件具有良好的控制力。对于所有测试用例,MCMC算法可在三个小时内提供可靠的估计以及不确定性量化。反演结果与测井数据一致。在本例中,我们表明,即使数据具有适度的井眼,地震波幅也会对反演结果产生重大影响,这是由于对模型中岩性流体类别的垂直依赖性所致。弹性参数的垂直相关性主要影响体积分布的上升潜力。由于MCMC算法对计算机的要求很高,因此该方法最适合评估一些选定的垂直剖面。

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